Publicado

2018-04-01

Risk factors associated with low birth weight in the Americas: literature review

Factores de riesgo de bajo peso al nacer en las Américas: una revisión de literatura

DOI:

https://doi.org/10.15446/revfacmed.v66n2.61577

Palabras clave:

Infant Mortality, Risk Factors, Americas (en)
Mortalidad infantil, Factores de riesgo, Américas (es)

Autores/as

  • Jaima González-Jiménez Fundación Universitaria del Área Andina - Faculty of Health - Master’s Degree in Public Health and Social Development - Bogotá D.C. - Colombia.
  • Anderson Rocha-Buelvas Universidad de Nariño - Centro de Estudios en Salud (CESUN) - Pasto - Colombia.

Introduction: Low birth weight (LBW) is one of the main risk factors that affects infant morbidity and mortality worldwide. Approximately one third of neonatal deaths are attributable to this cause.

Objective: To review the most relevant papers related to low birth weight in the Americas between 2010 and 2016.

Materials and methods: Narrative literature review. The information was obtained from the PubMed, SciELO, LILACS and Portal Regional da BVS databases, using DeCS and MeSH descriptors.

Results: Most of the studies were published between 2012 and 2015. Of 29 articles published, 11 (40.7%) dealt with sociodemographic factors, 9 (33.3%) with environmental risks, 3 (11.1%) with behavioral factors, 2 (7.4%) with prenatal or coverage controls and 2 (7.4%) were interrelated with other risk factors.

Conclusion: Most of the studies agree on the association of sociodemographic, biological and behavioral factors. Those studies that refer to the association of LBW with environmental risk factors are growing in strength.

Introducción. El bajo peso al nacer (BPN) es uno de los principales factores de riesgo que afecta la morbimortalidad infantil en todo el mundo; cerca de 1/3 de las muertes neonatales son atribuibles a este.

Objetivo. Revisar los artículos más relevantes sobre BPN en las Américas en el periodo de 2010-2016.

Materiales y métodos. Revisión narrativa de literatura. La información se obtuvo de las bases de datos PubMed, SciELO, LILACS, Portal Regional da BVS, con el uso de los descriptores DeCS y MeSH.

Resultados. La mayoría de los estudios fueron publicados entre el 2012 y el 2015. De los 27 artículos publicados, 11 (40.7%) fueron atribuidos a factores sociodemográficos, 9 (33.3%) a riesgos ambientales, 3 (11.1%) a factores conductuales, 2 (7.4%) a controles prenatales o por cobertura y 2 (7.4%) se interrelacionaban con otros factores de riesgo.

Conclusión. La mayoría de los estudios coinciden en la asociación de factores sociodemográficos, biológicos y conductuales. Los estudios que refieren la asociación de BPN con factores de riesgo ambientales están tomando fuerza.

61577

review article

DOI: https://doi.org/10.15446/revfacmed.v66n2.61577

Risk factors associated with low birth weight in the Americas: literature review

Factores de riesgo de bajo peso al nacer en las Américas: una revisión de literatura

Received: 14/12/2016. Accepted: 02/05/2017.

Jaima González-Jiménez1 Anderson Rocha-Buelvas2

1 Fundación Universitaria del Área Andina - Faculty of Health - Master’s Degree in Public Health and Social Development
- Bogotá D.C. - Colombia.

2 Universidad de Nariño - Centro de Estudios en Salud (CESUN) - Pasto - Colombia.

Corresponding author: Anderson Rocha-Buelvas. Centro de Estudios en Salud (CESUN), Universidad de Nariño, Sede Torobajo.
Calle 18 No. 50, Telephone number: +57 2 7312283. Pasto. Colombia. Email: rochabuelvas@gmail.com.

| Abstract |

Introduction: Low birth weight (LBW) is one of the main risk factors that affects infant morbidity and mortality worldwide. Approximately one third of neonatal deaths are attributable to this cause.

Objective: To review the most relevant papers related to low birth weight in the Americas between 2010 and 2016.

Materials and methods: Narrative literature review. The information was obtained from the PubMed, SciELO, LILACS and Portal Regional da BVS databases, using DeCS and MeSH descriptors.

Results: Most of the studies were published between 2012 and 2015. Of 29 articles published, 11 (40.7%) dealt with sociodemographic factors, 9 (33.3%) with environmental risks, 3 (11.1%) with behavioral factors, 2 (7.4%) with prenatal or coverage controls and 2 (7.4%) were interrelated with other risk factors.

Conclusion: Most of the studies agree on the association of sociodemographic, biological and behavioral factors. Those studies that refer to the association of LBW with environmental risk factors are growing in strength.

Keywords: Infant Mortality; Risk Factors; Americas (MeSH).

González-Jiménez J, Rocha-Buelvas A. Risk factors associated with low birth weight in the Americas: literature review. Rev. Fac. Med. 2018;66(2):255-60. English. doi: https://doi.org/10.15446/revfacmed.v66n2.61577.

| Resumen |

Introducción. El bajo peso al nacer (BPN) es uno de los principales factores de riesgo que afecta la morbimortalidad infantil en todo el mundo; cerca de 1/3 de las muertes neonatales son atribuibles a este.

Objetivo. Revisar los artículos más relevantes sobre BPN en las Américas en el periodo de 2010-2016.

Materiales y métodos. Revisión narrativa de literatura. La información se obtuvo de las bases de datos PubMed, SciELO, LILACS, Portal Regional da BVS, con el uso de los descriptores DeCS y MeSH.

Resultados. La mayoría de los estudios fueron publicados entre el 2012 y el 2015. De los 27 artículos publicados, 11 (40.7%) fueron atribuidos a factores sociodemográficos, 9 (33.3%) a riesgos ambientales, 3 (11.1%) a factores conductuales, 2 (7.4%) a controles prenatales o por cobertura y 2 (7.4%) se interrelacionaban con otros factores de riesgo.

Conclusión. La mayoría de los estudios coinciden en la asociación de factores sociodemográficos, biológicos y conductuales. Los estudios que refieren la asociación de BPN con factores de riesgo ambientales están tomando fuerza.

Palabras clave: Mortalidad infantil; Factores de riesgo; Américas (DeCS).

González-Jiménez J, Rocha-Buelvas A. [Factores de riesgo de bajo peso al nacer en las Américas: una revisión de literatura]. Rev. Fac. Med. 2018;66(2):255-60. English. doi: https://doi.org/10.15446/revfacmed.v66n2.61577.

Introduction

Research on sexual and reproductive health in Latin America is increasingly numerous in topics such as health interventions for the prevention of maternal and neonatal morbidity and mortality, specifically, those that study the increase and decrease of fertility, the use of different birth control methods, the quality of prenatal care and the prevalence of institutional delivery in rural and urban areas in certain populations and samples. All these investigations show that women are vulnerable according to their socioeconomic or educational level, employment conditions and family configuration. (1)

The World Health Organization (WHO) considers that a newborn has low birth weight (LBW) if weight is below 2 500 grams, regardless of gestational age or any other etiology. (2) Children with LBW have 40 to 200 times greater risk of dying than children with adequate weight at birth. (3,4) In the Americas, a comparison can be made between the Latin American countries that have a LBW index of 8.6% and the United States, whose index is 0.5%. (5) Colombia is not the country with the highest LBW rate in Latin America, but it reached an index close to 8.5% in 2008. (1)

It should be noted that the State of the World’s Children 2008, published by UNICEF, reported that around 20 million children worldwide are born each year with LBW, a figure that corresponds to 14.5% of all live births. (5,6) Furthermore, UNICEF found that LBW is more prevalent in developing countries because they do not measure the weight of more than half of newborns. (7)

In Colombia, the National Survey of Demography and Health (ENDS by its acronym in Spanish), conducted in 2010, reported that vulnerability to LBW is differential according to the place of occurrence of the births. For example, the risk is greater in departments like La Guajira, which do not achieve the national goal of reducing and meeting the Millennium Development Goals (MDGs). However, an improvement in the living conditions of the population and in social development opportunities was achieved (8), as deliveries took place in health facilities with a higher frequency: 88% in 2000, 92% in 2005 and 95% in 2010. (9,10) In consequence, conducting a narrative literature review on LBW in the Americas region during this decade is highly relevant.

Materials and methods

A narrative review of publications in health sciences about risk factors associated with LBW in the Americas was conducted. The research stages were: bibliographic search, data systematization, selection of articles and primary analysis, evaluation and final analysis.

During the first stage, information was collected from metasearch engines and digital databases including PubMed, SciELO, LILACS, VHL Regional Portal using DeCS (Descriptors in Health Sciences), MeSH (Medical Subject Headings) and Tripdatabase descriptors. Connectors “and” and “or”, among others, were used. Likewise, a direct bibliographical search was carried out in multiple chapters of specialized texts as a complementary activity. The search was delimited as follows:

Time frame: 2010-2016.

Languages: English, Spanish and Portuguese.

Type of design: empirical studies without design limitations.

Document type: articles derived from research and review; therefore, gray literature, editorials, papers, communications and opinion articles were excluded.

Upon searching the databases, potentially selected studies were obtained and a total of 82 were retrieved. Titles, abstracts and full texts were independently examined, using the eligibility criteria specified, excluding 44 that did not have any relation to the subject of interest. Also, 11 articles were excluded because they did not deal with risk factors associated with LBW. Finally, 27 article type documents (11) were obtained as shown in Figure 1.

Figure 1. Flow diagram of the study. Selection process of the studies.
Source: Own elaboration based on the data obtained in the study.

Once the search was completed, the second stage of information systematization was carried out, during which matrices that contained objectives, author, country, methodology and results were elaborated. These matrices would facilitate the third phase: bibliometric and methodological extraction and analysis of geographical location, year, language, designs used, service evaluated, selection of the sample and statistical analysis of the information. The fourth stage consisted of defining the articles to be included considering full-text retrieval and their consistency with the objective of the review.

Results

Of the selected studies (Tables 1 and 2), 88% were published between 2012 and 2015 (Table 3). The country with the highest number of publications is the United States with 12 (44.4%), followed by Brazil with eight (29.6%). Regarding language, most articles were published in English with 15 (51.72%), followed by Portuguese with eight (29.6%).

Table 1. Methodology used by the studies found.

Author, year

Design

Instrument

Sample

Source population and country

Statistical analysis

Da Fonseca et al. (12) 2014

Cases and controls

Medical records and live birth certificates

1 720 newborns

Two groups of 860 newborns each in São Paulo, Brazil

Modified Kessner Index

Pinzón et al. (13) 2015

Cross-sectional

Demographic survey

10 692 children

Children born to women (aged 13 to 49) included in the National Demographic and Health Survey in Bogotá, Colombia

Binomial regression

McDermott, et al. (14) 2014

Cohort

Medicaid and newborn's record

9 920 women

Pregnant women and their newborns, low-income families from South Carolina, USA.

Multivariate analysis

Ebisu & Bell (15) 2012

Descriptive

Birth certificates

7 098 417 births in 419 counties

Birth certificate. National Center for Health Statistics in counties with data on PM components in Atlanta, Georgia. USA

Logistic regression

Laurent et al. (16) 2013

Cohort

Obstetric database of the hospital network

70 000 births

Births, hospital obstetric database of Los Angeles and Orange County, Southern California, USA.

Multivariate analysis

Ghosh et al.(17) 2012

Cohort

Digital birth certificates

1 745 754 registered births

Digital birth certificates issued in California to identify women who gave birth between January 1, 1995 and December 31, 2006

Logistic regression

Padula et al. (18) 2012

Cohort

California Department of Health Services in Sacramento

All live births

Live births from the four most populated counties in the San Joaquin Valley of California, USA

Attributable risk

Cândido et al. (19). 2014

Cohort

Information System on Live Births (SINASC by its acronym in Portuguese)

6 147 births

Single full-term live births from the cities of the State of Mato Grosso in the Brazilian Amazon

Logistic regression

Coker et al. (20) 2015

Cohort

Certificates provided by the Department of Health

1 356 304 births

Births in Los Angeles County, USA

Multivariate logistic regressions

Habermann & Gouveia (8) 2014

Cases and controls

11 589 live births

Newborns with LBW and 5 814 controls matched by sex and month of birth in São Paulo. Brazil.

Multiple logistic regression adjusted for birth

Lin & Scott. (21) 2012.

Cohort

Birth certificates, databases of the National Center for Health Statistics. Vital statistics for public use

1 374 875 term births

Term births among the seven states considered, New Jersey and New York, USA

Logistic regression to estimate the association

Guimarães et al. (22) 2013

Cross-sectional

Interview questionnaire

4 746 pairs of mothers and their babies

Mothers and their newborns from a birth cohort in Aracaju, northeastern Brazil

Multiple logistic regression

Ferreira-Veloso et al. (23) 2014

Cohort

SINASC

7 466 births

Newborns: 2 426 included in 1997/98 and 5 040 in 2010. In São Luís, northeastern Brazil.

Multiple logistic regression

Neggers &Crowe. (24) 2013.

Ecological

Medical records and literature

Pregnant women and newborns

Pregnant women and newborns in the USA and Cuba

Multivariate analysis

Pinzón-Villate et al. (1) 2013

Retrospective descriptive

Certificates of live birth available at the DANE database

Newborns in the DANE database

Live births in Colombia in 2005-2009

Logistic regression to determine associated predictors

Britto et al.(25) 2013

Cross-sectional

Structured questionnaire

2 972 children

2 226 mother-child pairs from 23 neighborhoods of Chabolas, Brazil were included

Logistic regression

Bragança et al. (26) 2012

Ecological

SINASC

149 165 live births

Children born in Rio Grande do Sul, Brazil

Multilevel logistic regression

Silva da Oliveira et al. (27) 2010

Ecological

SINASC, IPEA and IBGE

Live births

Live births in the 27 Brazilian States in 2009

Bivariate analysis

Herd et al. (28) 2015

Descriptive

Census data files

Live births

Single live births in 2000 to women residing in 805 zip codes of California. USA

Binomial regression

Wehby et al. (29) 2016

Descriptive

ECLAMC (Latin American Collaborative Study of Congenital Malformations) Website, epidemiological research and surveillance program for birth defects in South America

60 480 single live births

Newborns from 71 cities in eight South American countries: Brazil, Ecuador, Uruguay, Venezuela, Argentina, Bolivia, Chile and Colombia

Logistic regression

Nascimento et al. (30) 2013

Ecological exploratory

Database of the Municipal Health Secretariat of Taubaté. Declaration of live births

1 817 live births with LBW.

18 915 live births in Taubaté, São Paulo, Brazil.

Data were analyzed using the TerraView program (available in https://goo.gl/aqjUMU)

Von Ehrenstein et al. (31) 2014

Cases and controls

U.S. Census Bureau

Newborns

(n=1 498) nested within the birth cohort in 2003 (n=58 316) in the Los Angeles County, USA

Logistic regression analysis of single and multiple variables

Fulda et al. (32) 2014

Cross-sectional

Birth certificates, clinical records of the Texas Department of State Health Services Vital Statistics Bureau

145 054 births

Mothers from 145 054 births recorded in Tarrant County, USA

Simple and multiple logistic regression

Loggins-Clay & Andrade. (33) 2015

Descriptive

Reference surveys, study data: Fragile Family and Child Wellbeing

3 869 births

Mother and children with LBW in black and white women in the USA

Logistic regression

Sanches-Ranzani-da Silva. (34) 2012

Systematic review

PubMed, Lilacs, SciELO, institutional repositories

64 studies

Studies on LBW in Latin America

Qualitative through systematization and analysis

Xaverius et al. (35) 2014

Cohort

Fetal death and birth certificates

160 913 certificates

159 547 records of live births and 1 366 death records in St. Louis, USA.

Multivariate logistic regression

Dennis &.Mollborn. (36) 2013

Cohort

Survey

10 700 live births

Live births in the USA

Bivariate analysis

SINASC: Information System on Live Births; ECLAMC: Latin-American collaborative study of congenital malformations; PM: Particulate Matter; IPEA: Institute of Applied Economic Research; IBGE: Brazilian Institute of Geography and Statistics.
Source: Own elaboration based on the data obtained in the study.

Table 2. Institutions represented and number of authors.

Institution

No. Author

Institution

No. Author

Medical School of São Paulo State University, Botucatu Campus

1

School of Medicine and Health Sciences, Universidad del Rosario, Bogotá, Colombia

1

Department of Epidemiology and Biostatistics, School of Public Health, University of South Carolina, USA.

1

Yale School of Forestry and Environmental Studies, New Haven, Connecticut, USA

1

Public Health Program, University of California, Irvine, California, USA

1

National Institute of Environmental Health Sciences, California, USA

2

National School of Public Health of Brazil.

1

California Department of Public Health, USA

4

Department of Preventive Medicine, Faculty of Medicine, University of São Paulo, São Paulo, Brazil

1

Environmental Public Health Monitoring Program of the Centers for Disease Control and Prevention, Atlanta, USA

1

Department of Public Health of the Federal University of Maranhão, Rua

1

Department of Human Nutrition, Universidad Nacional de Colombia, Bogotá, Colombia

1

Federal University of Alagoas, Maceió, Brazil

2

Federal University of Santa Maria, Santa Maria, Brazil

1

Federal University of Rio Grande do Sul, Porto Alegre, Brazil

2

School of Public Health, University of California, California, USA UU

2

National Institute of Population Medical Genetics (INAGEMP), Rio de Janeiro, Brazil

1

Latin American Collaborative Study of Congenital Malformations (ECLAMC)

2

University of Iowa College of Public Health, USA

1

University of Taubaté (UNITAU), Taubaté, São Paulo, Brazil

3

UCLA Fielding School of Public Health, University of California, Los Angeles, USA

3

Department of Family Medicine, North Texas Primary Care Practice-Based Research Network (NorTex), Texas Prevention Institute, USA

1

Department of Sociology, Institute of Behavioral Sciences, Health and Society Program, University of Colorado Boulder, Colorado, USA

1

UNT Health Sciences Center, University of North Texas, Fort Worth, Texas, USA

3

University do Vale do Rio dos Sinos (UNISINOS), Sao Leopoldo, Brazil

1

Saint Louis University, College for Public Health and Social Justice, San Luis, USA

3

Lindenwood University, St. Charles, USA

1

School of Social Sciences, University of Texas of the Permian Basin, USA

1

Department of Sociology, Institute of Behavioral Sciences, Health and Society Program, University of Colorado Boulder, Colorado, USA

1

Total authors

54

Source: Own elaboration based on the data obtained in the study.

Table 3. Number of studies published per year included in the review.

Year

2010

2011

2012

2013

2014

2015

2016

Total

Articles

1

0

7

6

7

4

2

27

Source: Own elaboration based on the data obtained in the study.

Regarding the results, Table 4 shows that 11 of the 27 published articles (40.7%) dealt with sociodemographic factors, 9 (33.3%) with environmental risks, 3 (11.1%) with behavioral factors, 2 (7.4 %) with prenatal or coverage controls and 2 (7.4%) correlated to other risk factors.

Table 4. Classification of articles by risk factors.

Risk factor

Number of articles

Weight %

Coverage

2

7.4%

Environmental risk

9

33.3%

Behavioral factor

3

11.1%

Sociodemographic

11

40.7%

Mixed

2

7.4%

Source: Own elaboration based on the data obtained in the study.

It is noteworthy that nine articles (33.3%) conducted between 2011 and 2015 study the environmental risk related to LBW (21), for example, the association of water soluble metals such as copper and LBW. (37) An important finding in the United States is found in four counties of Connecticut and Massachusetts that reported the association of LBW with levels higher than 2.5PM of components such as aluminum, coal, nickel, silicon, vanadium and zinc. (38) These findings on risk factors in water reported that the probability of LBW is higher in Afro-descendant infants and mothers compared to white women. (15,20)

The increase of LBW and air pollution are associated, (16,19) as is the case of benzene in contaminated air which, in addition to contributing to LBW, can cause fetal growth restriction and complications during pregnancy. (17) Prenatal exposure to air pollution is related to habitats or workplaces near high traffic congestion areas such as highways, whose traffic increases pollutants. (18,39) Finally, the presence of arsenic in the soil near housing areas is associated with LBW as well (14).

Several studies report relevant information regarding sociodemographic risk factors. An ecological study carried out in the state of Rio Grande do Sul in Brazil established that mothers who have had less than seven prenatal checkups have 3.8 times the risk of LBW. (34) This finding has been reported in the medical literature for decades, where sociodemographic, ethnic, maternal, fetal and environmental conditions were already correlated to LBW. (40)

In this way, sociodemographic aspects and the health system itself are part of the specificities of prenatal care as a prevention strategy against LBW. However, in developing countries, it is often underestimated to such an extent that guidelines and strategies established in industrialized countries are used without hesitation. (13,12) Another sociodemographic risk factor refers to maternal age as a predisposing factor, since LBW as an outcome is higher in mothers older than 35 and under 20 years of age. (34,41) Likewise, mothers with low levels of education have a higher risk of LBW. (26)

Studies that seek statistical significance between ethnic groups in the Americas and LBW (42,28) show an association with LBW prevalence in women of African descent. (29) According to a study in Caucasian and Hispanic couples with African American parents, paternal origin is an important predictor of LBW. (33) Although LBW is etiologically multifactorial, race is taken as a causal variable. (31,32,35)

Similarly, low socioeconomic status and poverty take on greater relevance in research in South American countries. (22,43) Many of them consider health as the most precarious socioeconomic condition. (44) LBW is a condition influenced by many factors: He et al. (45) report that its incidence depends on the pregnant woman’s occupation during pregnancy; Camacho (46) states that medical risks in pregnancy such as cesarean delivery increase its probability; Rodríguez-Dominguez et al. (41) point that congenital anomalies increase the risk of LBW more than three times; Neggers & Crowe (24) express that anemia increases its occurrence, and Britto et al. (25) state that the mother’s gain or loss of weight may also have an influence.

Modifiable lifestyles, such as smoking during pregnancy, have been reported as behavioral risks that trigger a series of complications that lead to LBW. (23) However, abstinence syndrome leads to sudden infant death or fetal growth restriction. (37,47)

Finally, Silva de Oliveira et al. (27) state that regional inequalities in living conditions, especially in access to maternal and child health, contribute to the unequal distribution of neonatal mortality.

Conclusion

The aim of this review was to summarize the most relevant findings on risk factors associated with LBW in the Americas, despite the fact that eight “best-match” publications on LBW since 2012 (48-55) were not developed in this region. Although many of these countries met the goal of reducing the LBW by more than 95%, risk factors continue to be studied. The truth is that in Latin America there are countries that continue to maintain the incidence of LBW within the regional average due to deficient maternal nutrition, low socioeconomic status and associated maternal diseases. (56)

It is worth mentioning that one of the limitations to this study was the restriction to access to all indicators and databases. Therefore, selection and systematization depended on access to the database of the Fundación Universitaria del Area Andina (Andean Region University Foundation).

Regarding the multifactorial etiology of LBW, it has been reported that most of the selected studies have agreed, for years, in the association of sociodemographic, biological and behavioral factors. In addition, the studies that refer association of LBW with environmental risk factors, particularly during maternity, carried out between 2012 and 2016, are increasingly gaining importance. The most intriguing findings in the United States include exposure to microparticles in water and soil near the oil zones of California and Texas, and exposure to air pollutants in cities like New York.

In Latin America, it is striking to see that the Amazon region has been under research, since this area is subject to enormous extractive and polluting activities. This changes the target of public policies to reduce LBW and improve the conditions of pregnant women and children in the Americas region, especially in less developed countries and territories where abandonment, social inequalities and environmental exploitation activities are becoming more frequent.

Conflicts of interest

None stated by the authors.

Funding

None stated by the authors.

Acknowledgements

None stated by the authors.

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20.Coker E, Ghosh J, Jerrett M, Gomez-Rubio V, Beckerman B, Cockburn M, et al. Modeling spatial effects of PM2.5 on term low birth weight in Los Angeles County. Environ. Res. 2015;142:354-64. http://doi.org/f7wvsw.

21.Lin GG, Scott JG. The association of PM2.5 with full term low birth weight at different spatial scales. Environ. Res. 2012;100(2):130-4. http://doi.org/f6t7r6.

22.Guimarães AM, Bettiol H, Souza Ld, Gurgel RQ, Almeida ML, Ribeiro ER, et al. Is adolescent pregnancy a risk factor for low birth weight? Rev. Saude Publica. 2013;47(1):11-9.

23.Ferreira-Veloso HJ, Moura da Silva AA, Bettiol H, Zubarán-Goldani M, Lamy-Filho F, Ferreira-Simões VM, et al. Low birth weight in São Luís, northeastern Brazil: trends and associated factors. BMC Pregnancy Childbirth. 2014;14:155. http://doi.org/gbf4ks.

24.Neggers Y, Crowe K. Low birth weight outcomes: why better in Cuba than Alabama? J. Am. Board Fam. Med. 2013;26(2):187-95. http://doi.org/cftv.

25.Britto RP, Florêncio TM, Benedito-Silva AA, Sesso R, Cavalcante JC, Sawaya AL. Influence of maternal height and weight on low birth weight: a cross-sectional study in poor communities of northeastern Brazil. PLoS One. 2013;8(11):e80159. http://doi.org/cftx.

26.Bragança-de Moraes A, Ruviaro-Zanini R, Riboldi J, Justo-Giugliani ER. Risk factors for low birth weight in Rio Grande do Sul State, Brazil: classical and multilevel analysis. Cad. Saude Publica. 2012;28(12):2293–305.

27.Silva de Oliveira G, Barros de Melo-Lima MC, de Oliveira-Lyra C, da Costa-Oliveira AG, Fernandes-Ferreira MA. Desigualdade espacial da mortalidade neonatal no Brasil: 2006 a 2010. Ciênc. saúde coletiva. 2013;18(8):2431-41. http://doi.org/cj89.

28.Herd D, Gruenewald P, Remer L, Gruendelman S. Community Level Correlates of Low Birthweight Among African American, Hispanic and White Women in California. Matern. Child. Health J. 2015;19(10):2251-60. http://doi.org/f7sqzr.

29.Wehby GL, Gili JA, Pawluk M, Castilla EE, López-Camelo JS. Disparities in birth weight and gestational age by ethnic ancestry in South American countries. Int. J. Public Health. 2015;60(3):343-51. http://doi.org/f64cvm.

30.Nascimento LF, Costa TM, Zöllner MS. Spatial distribution of low birthweight infants in Taubaté, São Paulo, Brazil. Rev. Paul. Pediatr. 2013;31(4):466-72. http://doi.org/cjz3.

31.Von Ehrenstein OS, Wilhelm M, Wang A, Ritz B. Preterm birth and prenatal maternal occupation: the role of Hispanic ethnicity and nativity in a population-based sample in Los Angeles, California. Am. J. Public Health. 2014;104(Suppl 1):S65-72. http://doi.org/f6gzj7.

32.Fulda KG, Kurian AK, Balyakina E, Moerbe MM. Paternal race/ethnicity and very low birth weight. BMC Pregnancy Childbirth. 2014;14:385. http://doi.org/f6r9c6.

33.Loggins-Clay S, Andrade FC. The role of stress in low birthweight disparities between Black women and White women: A population-based study. J. Paediatr. Child Health. 2015;51(4):443-9. http://doi.org/cjz5.

34.Sanches-Ranzani-da Silva TRS. Fatores de risco maternos não biológicos para o baixo peso ao nascer na América Latina: revisão sistemática de literatura com meta-análise. Einstein (São Paulo). 2012;10(3):380-5. http://doi.org/cftr.

35.Xaverius P, Salas J, Kiel D, Woolfolk C. Very low birth weight and perinatal periods of risk: disparities in St. Louis. Biomed. Res. Int. 2014;2014:547234. http://doi.org/gb839v.

36.Dennis JA, Mollborn S. Young maternal age and low birth weight risk: An exploration of racial/ethnic disparities in the birth outcomes of mothers in the United States. Soc. Sci. J. 2013;50(4):625-34. http://doi.org/cjz7.

37.Darrow LA, Klein M, Strickland MJ, Mulholland JA, Tolbert PE. Ambient air pollution and birth weight in full-term infants in Atlanta, 1994–2004. Environ. Health Perspect. 2011;(119):731-7. http://doi.org/dhfjp6.

38.Bell ML, Belanger K, Ebisu K, Gent JF, Lee HJ, Koutrakis P, et al. Prenatal exposure to fine particulate matter and birth weight: variations by particulate constituents and sources. Epidemiology. 2010;21(6):884-891. http://doi.org/ckxm3h.

39.Padula AM, Mortimer KM, Tager IB, Hammond SK, Lurmann FW, Yang W, et al. Traffic-related air pollution and risk of preterm birth in the San Joaquin Valley of California. Ann. Epidemiol. 2014;24(12):888-95e4. http://doi.org/f6q89n.

40.Torres-Arreola LP, Constantino-Casas P, Flores-Hernandez S, Villa-Barragan JP, Rendón- Macías E. Socioeconomic Factors and low birth weight in Mexico. BMC Public Health. 2005;5:20. http://doi.org/bt7z88.

41.Rodríguez-Domínguez PL, Hernández-Cabrera J, García-León LT. Propuesta de acción para reducción de factores maternos en el bajo peso al nacer. Rev. Cubana Obstet. Ginecol. 2010;36(4):532-43.

42.Fulda KG, Kurian AK, Balyakina E, Moerbe MM. Paternal race/ethnicity and very low birth weight. BMC Pregnancy Childbirth. 2014;14:385. http://doi.org/f6r9c6.

43.Delgado-Noguera MF. El bajo peso al nacer: otro ejemplo de inequidad en Colombia. Rev. Colomb. Obstet. Ginecol. 2009;60(2):121-3.

44.Moura-da Silva AA, Muniz-da Silva L, Barbieri MA, Bettiol H, Mendes-de Carvalho L, Sousa-Ribeiro VS, et al. O paradoxo epidemiológico do baixo peso ao nascer no Brasil. Rev. Saude Publica. 2010;44(5):767-75. http://doi.org/fs6nz9.

45.He Q, Johnston J, Zeitlinger J. ChIP-nexus enables improves detection of in vivo transcription factor binding footprints. 2015;33(4):395-401.

46.Camacho-Hubner AV. Perfil de salud sexual y reproductiva de los y las adolescentes y jóvenes de América Latina y el Caribe Revisión bibliográfica, 1988-1998. Serie OPS/FNUAP 1. Estados Unidos: Organización Panamericana de la Salud; 2000 [cited 2018 Jan 30]. Available from: https://goo.gl/r1vZ7v.

47.Pampel FC. Global patterns and determinants of sex differences in smoking. Int. J. Comp. Sociol. 2006;47(6):466-87.

48.Lundgren P, Kistner A, Andersson EM, Hansen Pupp I, Holmström G, Ley D, et al. Low birth weight is a risk factor for severe retinopathy of prematurity depending on gestational age. PLoS One. 2014;9(10):e109460. http://doi.org/f22fzq.

49.Hwang JH, Lee EH, Kim EA. Retinopathy of Prematurity among Very-Low-Birth-Weight Infants in Korea: Incidence, Treatment, and Risk Factors. J. Korean Med. Sci. 2015;30(Suppl 1):S88-94. http://doi.org/cftz.

50.Ponzio C, Palomino Z, Puccini RF, Strufaldi MW, Franco MC. Does low birth weight affect the presence of cardiometabolic risk factors in overweight and obese children? Eur. J. Pediatr. 2013;172(12):1687-92. http://doi.org/f5h5gk.

51.Negandhi PH, Negandhi HN, Zodpey SP, Ughade SN, Biranjan JR. Risk factors for low birth weight in an Indian urban setting: a nested case control study. Asian Pac. J. Public Health. 2014;26(5):461-9. http://doi.org/fzxv38.

52.Demelash H, Motbainor A, Nigatu D, Gashaw K, Melese A. Risk factors for low birth weight in Bale zone hospitals, South-East Ethiopia : a case-control study. BMC Pregnancy Childbirth. 2015;15:264. http://doi.org/gb8x6s.

53.Chakki BA, Ealla KR, Hunsingi P, Kumar A, Manidanappanavar P. Influence of maternal periodontal disease as a risk factor for low birth weight infants in Indian population. J. Contemp. Dent. Pract. 2012;13(5):676-80.

54.Lundgren M, Morgården E, Gustafsson J. Is obesity a risk factor for impaired cognition in young adults with low birth weight? Pediatr. Obes. 2014;9(5):319-26. http://doi.org/f235cq.

55.Xaverius P, Alman C, Holtz L, Yarber L. Risk Factors Associated with Very Low Birth Weight in a Large Urban Area, Stratified by Adequacy of Prenatal Care. Matern. Child Health J. 2016;20(3):623-9. http://doi.org/f8fdf9.

56.Ticona-Rendón M, Huanco-Apaza D, Ticona-Vildoso M. Incidencia y factores de riesgo de bajo peso al nacer en población atendida en hospitales del Ministerio de Salud del Perú. Ginecol. Obstet. Mex. 2012;80(2):51-60.

Recibido: 14 de diciembre de 2016; Aceptado: 2 de mayo de 2017

Abstract

Introduction:

Low birth weight (LBW) is one of the main risk factors that affects infant morbidity and mortality worldwide. Approximately one third of neonatal deaths are attributable to this cause.

Objective:

To review the most relevant papers related to low birth weight in the Americas between 2010 and 2016.

Materials and methods:

Narrative literature review. The information was obtained from the PubMed, SciELO, LILACS and Portal Regional da BVS databases, using DeCS and MeSH descriptors.

Results:

Most ofthe studies were published between 2012 and 2015. Of 29 articles published, 11 (40.7%) dealt with sociodemographic factors, 9 (33.3%) with environmental risks, 3 (11.1%) with behavioral factors, 2 (7.4%) with prenatal or coverage controls and 2 (7.4%) were interrelated with other risk factors.

Conclusion:

Most of the studies agree on the association of sociodemographic, biological and behavioral factors. Those studies that refer to the association of LBW with environmental risk factors are growing in strength.

Keywords:

Infant Mortality, Risk Factors, Americas (MeSH).

Resumen

Introducción.

El bajo peso al nacer (BPN) es uno de los principales factores de riesgo que afecta la morbimortalidad infantil en todo el mundo; cerca de 1/3 de las muertes neonatales son atribuibles a este.

Objetivo.

Revisar los artículos más relevantes sobre BPN en las Américas en el periodo de 2010-2016.

Materiales y métodos.

Revisión narrativa de literatura. La información se obtuvo de las bases de datos PubMed, SciELO, LILACS, Portal Regional da BVS, con el uso de los descriptores DeCS y MeSH.

Resultados.

La mayoría de los estudios fueron publicados entre el 2012 y el 2015. De los 27 artículos publicados, 11 (40.7%) fueron atribuidos a factores sociodemográficos, 9 (33.3%) a riesgos ambientales, 3 (11.1%) a factores conductuales, 2 (7.4%) a controles prenatales o por cobertura y 2 (7.4%) se interrelacionaban con otros factores de riesgo.

Conclusión.

La mayoría de los estudios coinciden en la asociación de factores sociodemográficos, biológicos y conductuales. Los estudios que refieren la asociación de BPN con factores de riesgo ambientales están tomando fuerza.

Palabras clave:

Mortalidad infantil, Factores de riesgo, Américas (DeCS).

Introduction

Research on sexual and reproductive health in Latin America is increasingly numerous in topics such as health interventions for the prevention of maternal and neonatal morbidity and mortality, specifically, those that study the increase and decrease of fertility, the use of different birth control methods, the quality of prenatal care and the prevalence of institutional delivery in rural and urban areas in certain populations and samples. All these investigations show that women are vulnerable according to their socioeconomic or educational level, employment conditions and family configuration. 1

The World Health Organization (WHO) considers that a newborn has low birth weight (LBW) if weight is below 2 500 grams, regardless of gestational age or any other etiology. 2 Children with LBW have 40 to 200 times greater risk of dying than children with adequate weight at birth. 3,4 In the Americas, a comparison can be made between the Latin American countries that have a LBW index of 8.6% and the United States, whose index is 0.5%. 5 Colombia is not the country with the highest LBW rate in Latin America, but it reached an index close to 8.5% in 2008. 1

It should be noted that the State of the World's Children 2008, published by UNICEF, reported that around 20 million children worldwide are born each year with LBW, a figure that corresponds to 14.5% of all live births. 5,6 Furthermore, UNICEF found that LBW is more prevalent in developing countries because they do not measure the weight of more than half of newborns. 7

In Colombia, the National Survey of Demography and Health (ENDS by its acronym in Spanish), conducted in 2010, reported that vulnerability to LBW is differential according to the place of occurrence of the births. For example, the risk is greater in departments like La Guajira, which do not achieve the national goal of reducing and meeting the Millennium Development Goals (MDGs). However, an improvement in the living conditions of the population and in social development opportunities was achieved 8, as deliveries took place in health facilities with a higher frequency: 88% in 2000, 92% in 2005 and 95% in 2010. 9,10 In consequence, conducting a narrative literature review on LBW in the Americas region during this decade is highly relevant.

Materials and methods

A narrative review of publications in health sciences about risk factors associated with LBW in the Americas was conducted. The research stages were: bibliographic search, data systematization, selection of articles and primary analysis, evaluation and final analysis.

During the first stage, information was collected from metasearch engines and digital databases including PubMed, SciELO, LILACS, VHL Regional Portal using DeCS (Descriptors in Health Sciences), MeSH (Medical Subject Headings) and Tripdatabase descriptors. Connectors "and" and "or", among others, were used. Likewise, a direct bibliographical search was carried out in multiple chapters of specialized texts as a complementary activity. The search was delimited as follows:

Time frame: 2010-2016.

Languages: English, Spanish and Portuguese.

Type of design: empirical studies without design limitations.

Document type: articles derived from research and review; therefore, gray literature, editorials, papers, communications and opinion articles were excluded.

Upon searching the databases, potentially selected studies were obtained and a total of 82 were retrieved. Titles, abstracts and full texts were independently examined, using the eligibility criteria specified, excluding 44 that did not have any relation to the subject of interest. Also, 11 articles were excluded because they did not deal with risk factors associated with LBW. Finally, 27 article type documents 11 were obtained as shown in Figure 1.

Flow diagram of the study. Selection process of the studies.

Figure 1: Flow diagram of the study. Selection process of the studies.

Source: Own elaboration based on the data obtained in the study.

Once the search was completed, the second stage of information systematization was carried out, during which matrices that contained objectives, author, country, methodology and results were elaborated. These matrices would facilitate the third phase: bibliometric and methodological extraction and analysis of geographical location, year, language, designs used, service evaluated, selection of the sample and statistical analysis of the information. The fourth stage consisted of defining the articles to be included considering full-text retrieval and their consistency with the objective of the review.

Results

Of the selected studies (Tables 1 and 2), 88% were published between 2012 and 2015 (Table 3). The country with the highest number of publications is the United States with 12 (44.4%), followed by Brazil with eight (29.6%). Regarding language, most articles were published in English with 15 (51.72%), followed by Portuguese with eight (29.6%).

Table 1: Methodology used by the studies found.

SINASC: Information System on Live Births; ECLAMC: Latin-American collaborative study of congenital malformations; PM: Particulate Matter; IPEA: Institute of Applied Economic Research; IBGE: Brazilian Institute of Geography and Statistics.

Source: Own elaboration based on the data obtained in the study.

Table 2: Institutions represented and number of authors.

Source: Own elaboration based on the data obtained in the study.

Table 3: Number of studies published per year included in the review.

Source: Own elaboration based on the data obtained in the study.

Regarding the results, Table 4 shows that 11 of the 27 published articles (40.7%) dealt with sociodemographic factors, 9 (33.3%) with environmental risks, 3 (11.1%) with behavioral factors, 2 (7.4 %) with prenatal or coverage controls and 2 (7.4%) correlated to other risk factors.

Table 4: Classification of articles by risk factors.

Source: Own elaboration based on the data obtained in the study.

It is noteworthy that nine articles (33.3%) conducted between 2011 and 2015 study the environmental risk related to LBW 21, for example, the association of water soluble metals such as copper and LBW. 37 An important finding in the United States is found in four counties of Connecticut and Massachusetts that reported the association of LBW with levels higher than 2.5PM of components such as aluminum, coal, nickel, silicon, vanadium and zinc. 38 These findings on risk factors in water reported that the probability of LBW is higher in Afro-descendant infants and mothers compared to white women. 15,20

The increase of LBW and air pollution are associated, 16,19 as is the case of benzene in contaminated air which, in addition to contributing to LBW, can cause fetal growth restriction and complications during pregnancy. 17 Prenatal exposure to air pollution is related to habitats or workplaces near high traffic congestion areas such as highways, whose traffic increases pollutants. 18,39 Finally, the presence of arsenic in the soil near housing areas is associated with LBW as well 14.

Several studies report relevant information regarding sociodemographic risk factors. An ecological study carried out in the state of Rio Grande do Sul in Brazil established that mothers who have had less than seven prenatal checkups have 3.8 times the risk of LBW. 34 This finding has been reported in the medical literature for decades, where sociodemographic, ethnic, maternal, fetal and environmental conditions were already correlated to LBW. 40

In this way, sociodemographic aspects and the health system itself are part of the specificities of prenatal care as a prevention strategy against LBW. However, in developing countries, it is often underestimated to such an extent that guidelines and strategies established in industrialized countries are used without hesitation. 13,12 Another sociodemographic risk factor refers to maternal age as a predisposing factor, since LBW as an outcome is higher in mothers older than 35 and under 20 years of age. 34,41 Likewise, mothers with low levels of education have a higher risk of LBW. 26

Studies that seek statistical significance between ethnic groups in the Americas and LBW 42,28 show an association with LBW prevalence in women of African descent. 29 According to a study in Caucasian and Hispanic couples with African American parents, paternal origin is an important predictor of LBW. 33 Although LBW is etiologically multifactorial, race is taken as a causal variable. 31,32,35

Similarly, low socioeconomic status and poverty take on greater relevance in research in South American countries. 22,43 Many of them consider health as the most precarious socioeconomic condition. 44 LBW is a condition influenced by many factors: He et al. 45 report that its incidence depends on the pregnant woman's occupation during pregnancy; Camacho 46 states that medical risks in pregnancy such as cesarean delivery increase its probability; Rodríguez-Dominguez et al. 41 point that congenital anomalies increase the risk of LBW more than three times; Neggers & Crowe 24 express that anemia increases its occurrence, and Britto et al.25 state that the mother's gain or loss of weight may also have an influence.

Modifiable lifestyles, such as smoking during pregnancy, have been reported as behavioral risks that trigger a series of complications that lead to LBW. 23 However, abstinence syndrome leads to sudden infant death or fetal growth restriction. 37,47

Finally, Silva de Oliveira et al. 27 state that regional inequalities in living conditions, especially in access to maternal and child health, contribute to the unequal distribution of neonatal mortality.

Conclusion

The aim of this review was to summarize the most relevant findings on risk factors associated with LBW in the Americas, despite the fact that eight "best-match" publications on LBW since 2012 48-55 were not developed in this region. Although many of these countries met the goal of reducing the LBW by more than 95%, risk factors continue to be studied. The truth is that in Latin America there are countries that continue to maintain the incidence of LBW within the regional average due to deficient maternal nutrition, low socioeconomic status and associated maternal diseases. 56

It is worth mentioning that one of the limitations to this study was the restriction to access to all indicators and databases. Therefore, selection and systematization depended on access to the database of the Fundación Universitaria del Area Andina (Andean Region University Foundation).

Regarding the multifactorial etiology of LBW, it has been reported that most of the selected studies have agreed, for years, in the association of sociodemographic, biological and behavioral factors. In addition, the studies that refer association of LBW with environmental risk factors, particularly during maternity, carried out between 2012 and 2016, are increasingly gaining importance. The most intriguing findings in the United States include exposure to microparticles in water and soil near the oil zones of California and Texas, and exposure to air pollutants in cities like New York.

In Latin America, it is striking to see that the Amazon region has been under research, since this area is subject to enormous extractive and polluting activities. This changes the target of public policies to reduce LBW and improve the conditions of pregnant women and children in the Americas region, especially in less developed countries and territories where abandonment, social inequalities and environmental exploitation activities are becoming more frequent.

Acknowledgements

None stated by the authors.

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23. Ferreira-Veloso HJ, Moura da Silva AA, Bettiol H, Zubarán-Goldani M, Lamy-Filho F, Ferreira-Simões VM, et al. Low birth weight in São Luís, northeastern Brazil: trends and associated factors. BMC Pregnancy Childbirth. 2014;14:155. http://doi.org/gbf4ks.[Link]

24. Neggers Y, Crowe K. Low birth weight outcomes: why better in Cuba than Alabama? J. Am. Board Fam. Med. 2013;26(2):187-95. http://doi.org/cftv.[Link]

25. Britto RP, Florêncio TM, Benedito-Silva AA, Sesso R, Cavalcante JC, Sawaya AL. Influence of maternal height and weight on low birth weight: a cross-sectional study in poor communities of northeastern Brazil. PLoS One. 2013;8(11):e80159. http://doi.org/cftx.[Link]

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27. Silva de Oliveira G, Barros de Melo-Lima MC, de Oliveira-Lyra C, da Costa-Oliveira AG, Fernandes-Ferreira MA. Desigualdade espacial da mortalidade neonatal no Brasil: 2006 a 2010. Ciênc. saúde coletiva. 2013;18(8):2431-41. http://doi.org/cj89.[Link]

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29. Wehby GL, Gili JA, Pawluk M, Castilla EE, López-Camelo JS. Disparities in birth weight and gestational age by ethnic ancestry in South American countries. Int. J. Public Health. 2015;60(3):343-51. http://doi.org/f64cvm.[Link]

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31. Von Ehrenstein OS, Wilhelm M, Wang A, Ritz B. Preterm birth and prenatal maternal occupation: the role of Hispanic ethnicity and nativity in a population-based sample in Los Angeles, California. Am. J. Public Health. 2014;104(Suppl 1):S65-72. http://doi.org/f6gzj7.[Link]

32. Fulda KG, Kurian AK, Balyakina E, Moerbe MM. Paternal race/ethnicity and very low birth weight. BMC Pregnancy Childbirth. 2014;14:385. http://doi.org/f6r9c6.[Link]

33. Loggins-Clay S, Andrade FC. The role of stress in low birthweight disparities between Black women and White women: A population-based study. J. Paediatr. Child Health. 2015;51(4):443-9. http://doi.org/cjz5.[Link]

34. Sanches-Ranzanida Silva TRS. Fatores de risco maternos não biológicos para o baixo peso ao nascer na América Latina: revisão sistemática de literatura com meta-análise. Einstein (São Paulo ). 2012;10(3):380-5. http://doi.org/cftr.[Link]

35. Xaverius P, Salas J, Kiel D, Woolfolk C. Very low birth weight and perinatal periods of risk: disparities in St. Louis. Biomed. Res. Int. 2014;2014:547234. http://doi.org/gb839v.[Link]

36. Dennis JA, Mollborn S. Young maternal age and low birth weight risk: An exploration of racial/ethnic disparities in the birth outcomes of mothers in the United States. Soc. Sci. J. 2013;50(4):625-34. http://doi.org/cjz7.[Link]

37. Darrow LA, Klein M, Strickland MJ, Mulholland JA, Tolbert PE. Ambient air pollution and birth weight in full-term infants in Atlanta, 1994- 2004. Environ. Health Perspect. 2011;(119):731-7. http://doi.org/dhfjp6.[Link]

38. Bell ML, Belanger K, Ebisu K, Gent JF, Lee HJ, Koutrakis P, et al. Prenatal exposure to fine particulate matter and birth weight: variations by particulate constituents and sources. Epidemiology. 2010;21(6):884-891. http://doi.org/ckxm3h.[Link]

39. Padula AM, Mortimer KM, Tager IB, Hammond SK, Lurmann FW, Yang W, et al. Traffic-related air pollution and risk of preterm birth in the San Joaquin Valley of California. Ann. Epidemiol. 2014;24(12):888-95e4. http://doi.org/f6q89n.[Link]

40. Torres-Arreola LP, Constantino-Casas P, Flores-Hernandez S, Villa-Barragan JP, Rendón- Macias E. Socioeconomic Factors and low birth weight in Mexico. BMC Public Health. 2005;5:20. http://doi.org/bt7z88.[Link]

41. Rodríguez-Domínguez PL, Hernández-Cabrera J, García-León LT. Propuesta de acción para reducción de factores maternos en el bajo peso al nacer. Rev. Cubana Obstet. Ginecol. 2010;36(4):532-43.

42. Fulda KG, Kurian AK, Balyakina E, Moerbe MM. Paternal race/ethnicity and very low birth weight. BMC Pregnancy Childbirth. 2014;14:385. http://doi.org/f6r9c6.[Link]

43. Delgado-Noguera MF. El bajo peso al nacer: otro ejemplo de inequidad en Colombia. Rev. Colomb. Obstet. Ginecol. 2009;60(2):121-3.

44. Moura-da Silva AA, Munizda Silva L, Barbieri MA, Bettiol H, Mendes-de Carvalho L, Sousa-Ribeiro VS, et al. O paradoxo epidemiológico do baixo peso ao nascer no Brasil. Rev. Saude Publica. 2010;44(5):767-75. http://doi.org/fs6nz9.[Link]

45. He Q, Johnston J, Zeitlinger J. ChIP-nexus enables improves detection of in vivo transcription factor binding footprints. 2015;33(4):395-401.

46. Camacho-Hubner AV. Perfil de salud sexual y reproductiva de los y las adolescentes y jóvenes de América Latina y el Caribe Revisión bibliográfica, 1988-1998. Serie OPS/FNUAP 1. Estados Unidos: Organización Panamericana de la Salud; 2000 [cited 2018 Jan 30]. Available from: Available from: https://goo.gl/r1vZ7v .[Link]

47. Pampel FC. Global patterns and determinants of sex differences in smoking. Int. J. Comp. Sociol. 2006;47(6):466-87.

48. Lundgren P, Kistner A, Andersson EM, Hansen Pupp I, Holmstrom G, Ley D, et al. Low birth weight is a risk factor for severe retinopathy of prematurity depending on gestational age. PLoS One. 2014;9(10):e109460. http://doi.org/f22fzq.[Link]

49. Hwang JH, Lee EH, Kim EA. Retinopathy of Prematurity among Very-Low-Birth-Weight Infants in Korea: Incidence, Treatment, and Risk Factors. J. Korean Med. Sci. 2015;30(Suppl 1):S88-94. http://doi.org/cftz.[Link]

50. Ponzio C, Palomino Z, Puccini RF, Strufaldi MW, Franco MC. Does low birth weight affect the presence of cardiometabolic risk factors in overweight and obese children? Eur. J. Pediatr. 2013;172(12):1687-92. http://doi.org/f5h5gk.[Link]

51. Negandhi PH, Negandhi HN, Zodpey SP, Ughade SN, Biranjan JR. Risk factors for low birth weight in an Indian urban setting: a nested case control study. Asian Pac. J. Public Health. 2014;26(5):461-9. http://doi.org/fzxv38.[Link]

52. Demelash H, Motbainor A, Nigatu D, Gashaw K, Melese A. Risk factors for low birth weight in Bale zone hospitals, South-East Ethiopia : a case-control study. BMC Pregnancy Childbirth. 2015;15:264. http://doi.org/gb8x6s.[Link]

53. Chakki BA, Ealla KR, Hunsingi P, Kumar A, Manidanappanavar P. Influence of maternal periodontal disease as a risk factor for low birth weight infants in Indian population. J. Contemp. Dent. Pract. 2012;13(5):676-80.

54. Lundgren M, Morgárden E, Gustafsson J. Is obesity a risk factor for impaired cognition in young adults with low birth weight? Pediatr. Obes. 2014;9(5):319-26. http://doi.org/f235cq.[Link]

55. Xaverius P, Alman C, Holtz L, Yarber L. Risk Factors Associated with Very Low Birth Weight in a Large Urban Area, Stratified by Adequacy of Prenatal Care. Matern Child Health J. 2016;20(3):623-9. http://doi.org/f8fdf9.[Link]

56. Ticona-Rendón M, Huanco-Apaza D, Ticona-Vildoso M. Incidencia y factores de riesgo de bajo peso al nacer en población atendida en hospitales del Ministerio de Salud del Perú. Ginecol. Obstet. Mex. 2012;80(2):51-60.

Risk factors associated with low birth weight in the Americas: literature review. Rev. Fac. Med. 2018;66(2):255-60. English. doi: http://dx.doi.org/10.15446/revfacmed.v66n2.61577.
[Factores de riesgo de bajo peso al nacer en las Américas: una revisión de literatura]. Rev. Fac. Med. 2018;66(2):255-60. English. doi: http://dx.doi.org/10.15446/revfacmed.v66n2.61577.
None stated by the authors.
None stated by the authors.

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Fulda KG, Kurian AK, Balyakina E, Moerbe MM. Paternal race/ethnicity and very low birth weight. BMC Pregnancy Childbirth. 2014;14:385. http://doi.org/f6r9c6.

Loggins-Clay S, Andrade FC. The role of stress in low birthweight disparities between Black women and White women: A population-based study. J. Paediatr. Child Health. 2015;51(4):443-9. http://doi.org/cjz5.

Sanches-Ranzani-da Silva TRS. Fatores de risco maternos não biológicos para o baixo peso ao nascer na América Latina: revisão sistemática de literatura com meta-análise. Einstein (São Paulo). 2012;10(3):380-5. http://doi.org/cftr.

Xaverius P, Salas J, Kiel D, Woolfolk C. Very low birth weight and perinatal periods of risk: disparities in St. Louis. Biomed. Res. Int. 2014;2014:547234. http://doi.org/gb839v.

Dennis JA, Mollborn S. Young maternal age and low birth weight risk: An exploration of racial/ethnic disparities in the birth outcomes of mothers in the United States. Soc. Sci. J. 2013;50(4):625-34. http://doi.org/cjz7.

Darrow LA, Klein M, Strickland MJ, Mulholland JA, Tolbert PE. Ambient air pollution and birth weight in full-term infants in Atlanta, 1994–2004. Environ. Health Perspect. 2011;(119):731-7. http://doi.org/dhfjp6.

Bell ML, Belanger K, Ebisu K, Gent JF, Lee HJ, Koutrakis P, et al. Prenatal exposure to fine particulate matter and birth weight: variations by particulate constituents and sources. Epidemiology. 2010;21(6):884-891. http://doi.org/ckxm3h.

Padula AM, Mortimer KM, Tager IB, Hammond SK, Lurmann FW, Yang W, et al. Traffic-related air pollution and risk of preterm birth in the San Joaquin Valley of California. Ann. Epidemiol. 2014;24(12):888-95e4. http://doi.org/f6q89n.

Torres-Arreola LP, Constantino-Casas P, Flores-Hernandez S, Villa-Barragan JP, Rendón- Macías E. Socioeconomic Factors and low birth weight in Mexico. BMC Public Health. 2005;5:20. http://doi.org/bt7z88.

Rodríguez-Domínguez PL, Hernández-Cabrera J, García-León LT. Propuesta de acción para reducción de factores maternos en el bajo peso al nacer. Rev. Cubana Obstet. Ginecol. 2010;36(4):532-43.

Fulda KG, Kurian AK, Balyakina E, Moerbe MM. Paternal race/ethnicity and very low birth weight. BMC Pregnancy Childbirth. 2014;14:385. http://doi.org/f6r9c6.

Delgado-Noguera MF. El bajo peso al nacer: otro ejemplo de inequidad en Colombia. Rev. Colomb. Obstet. Ginecol. 2009;60(2):121-3.

Moura-da Silva AA, Muniz-da Silva L, Barbieri MA, Bettiol H, Mendes-de Carvalho L, Sousa-Ribeiro VS, et al. O paradoxo epidemiológico do baixo peso ao nascer no Brasil. Rev. Saude Publica. 2010;44(5):767-75. http://doi.org/fs6nz9.

He Q, Johnston J, Zeitlinger J. ChIP-nexus enables improves detection of in vivo transcription factor binding footprints. 2015;33(4):395-401.

Camacho-Hubner AV. Perfil de salud sexual y reproductiva de los y las adolescentes y jóvenes de América Latina y el Caribe Revisión bibliográfica, 1988-1998. Serie OPS/FNUAP 1. Estados Unidos: Organización Panamericana de la Salud; 2000 [cited 2018 Jan 30]. Available from: https://goo.gl/r1vZ7v.

Pampel FC. Global patterns and determinants of sex differences in smoking. Int. J. Comp. Sociol. 2006;47(6):466-87.

Lundgren P, Kistner A, Andersson EM, Hansen Pupp I, Holmström G, Ley D, et al. Low birth weight is a risk factor for severe retinopathy of prematurity depending on gestational age. PLoS One. 2014;9(10):e109460. http://doi.org/f22fzq.

Hwang JH, Lee EH, Kim EA. Retinopathy of Prematurity among Very-Low-Birth-Weight Infants in Korea: Incidence, Treatment, and Risk Factors. J. Korean Med. Sci. 2015;30(Suppl 1):S88-94. http://doi.org/cftz.

Ponzio C, Palomino Z, Puccini RF, Strufaldi MW, Franco MC. Does low birth weight affect the presence of cardiometabolic risk factors in overweight and obese children? Eur. J. Pediatr. 2013;172(12):1687-92. http://doi.org/f5h5gk.

Negandhi PH, Negandhi HN, Zodpey SP, Ughade SN, Biranjan JR. Risk factors for low birth weight in an Indian urban setting: a nested case control study. Asian Pac. J. Public Health. 2014;26(5):461-9. http://doi.org/fzxv38.

Demelash H, Motbainor A, Nigatu D, Gashaw K, Melese A. Risk factors for low birth weight in Bale zone hospitals, South-East Ethiopia : a case-control study. BMC Pregnancy Childbirth. 2015;15:264. http://doi.org/gb8x6s.

Chakki BA, Ealla KR, Hunsingi P, Kumar A, Manidanappanavar P. Influence of maternal periodontal disease as a risk factor for low birth weight infants in Indian population. J. Contemp. Dent. Pract. 2012;13(5):676-80.

Lundgren M, Morgården E, Gustafsson J. Is obesity a risk factor for impaired cognition in young adults with low birth weight? Pediatr. Obes. 2014;9(5):319-26. http://doi.org/f235cq.

Xaverius P, Alman C, Holtz L, Yarber L. Risk Factors Associated with Very Low Birth Weight in a Large Urban Area, Stratified by Adequacy of Prenatal Care. Matern. Child Health J. 2016;20(3):623-9. http://doi.org/f8fdf9.

Ticona-Rendón M, Huanco-Apaza D, Ticona-Vildoso M. Incidencia y factores de riesgo de bajo peso al nacer en población atendida en hospitales del Ministerio de Salud del Perú. Ginecol. Obstet. Mex. 2012;80(2):51-60.

Cómo citar

APA

González-Jiménez, J. y Rocha-Buelvas, A. (2018). Risk factors associated with low birth weight in the Americas: literature review. Revista de la Facultad de Medicina, 66(2), 255–260. https://doi.org/10.15446/revfacmed.v66n2.61577

ACM

[1]
González-Jiménez, J. y Rocha-Buelvas, A. 2018. Risk factors associated with low birth weight in the Americas: literature review. Revista de la Facultad de Medicina. 66, 2 (abr. 2018), 255–260. DOI:https://doi.org/10.15446/revfacmed.v66n2.61577.

ACS

(1)
González-Jiménez, J.; Rocha-Buelvas, A. Risk factors associated with low birth weight in the Americas: literature review. Rev. Fac. Med. 2018, 66, 255-260.

ABNT

GONZÁLEZ-JIMÉNEZ, J.; ROCHA-BUELVAS, A. Risk factors associated with low birth weight in the Americas: literature review. Revista de la Facultad de Medicina, [S. l.], v. 66, n. 2, p. 255–260, 2018. DOI: 10.15446/revfacmed.v66n2.61577. Disponível em: https://revistas.unal.edu.co/index.php/revfacmed/article/view/61577. Acesso em: 28 mar. 2024.

Chicago

González-Jiménez, Jaima, y Anderson Rocha-Buelvas. 2018. «Risk factors associated with low birth weight in the Americas: literature review». Revista De La Facultad De Medicina 66 (2):255-60. https://doi.org/10.15446/revfacmed.v66n2.61577.

Harvard

González-Jiménez, J. y Rocha-Buelvas, A. (2018) «Risk factors associated with low birth weight in the Americas: literature review», Revista de la Facultad de Medicina, 66(2), pp. 255–260. doi: 10.15446/revfacmed.v66n2.61577.

IEEE

[1]
J. González-Jiménez y A. Rocha-Buelvas, «Risk factors associated with low birth weight in the Americas: literature review», Rev. Fac. Med., vol. 66, n.º 2, pp. 255–260, abr. 2018.

MLA

González-Jiménez, J., y A. Rocha-Buelvas. «Risk factors associated with low birth weight in the Americas: literature review». Revista de la Facultad de Medicina, vol. 66, n.º 2, abril de 2018, pp. 255-60, doi:10.15446/revfacmed.v66n2.61577.

Turabian

González-Jiménez, Jaima, y Anderson Rocha-Buelvas. «Risk factors associated with low birth weight in the Americas: literature review». Revista de la Facultad de Medicina 66, no. 2 (abril 1, 2018): 255–260. Accedido marzo 28, 2024. https://revistas.unal.edu.co/index.php/revfacmed/article/view/61577.

Vancouver

1.
González-Jiménez J, Rocha-Buelvas A. Risk factors associated with low birth weight in the Americas: literature review. Rev. Fac. Med. [Internet]. 1 de abril de 2018 [citado 28 de marzo de 2024];66(2):255-60. Disponible en: https://revistas.unal.edu.co/index.php/revfacmed/article/view/61577

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1. Mehdi Shokri, Parviz Karimi, Hadis Zamanifar, Fatemeh Kazemi, Milad Azami, Gholamreza Badfar. (2020). Epidemiology of low birth weight in Iran: A systematic review and meta-analysis. Heliyon, 6(5), p.e03787. https://doi.org/10.1016/j.heliyon.2020.e03787.

2. Dagnew Getnet Adugna, Misganaw Gebrie Worku. (2022). Maternal and neonatal factors associated with low birth weight among neonates delivered at the University of Gondar comprehensive specialized hospital, Northwest Ethiopia. Frontiers in Pediatrics, 10 https://doi.org/10.3389/fped.2022.899922.

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