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Revista chilena de nutrición

versión On-line ISSN 0717-7518

Rev. chil. nutr. vol.47 no.1 Santiago feb. 2020 

Original Article

Relationship between food consumption of pregnant women and birth weight of newborns

Relación entre el consumo de alimentos de gestantes y el peso al nacer de los recién nacidos

Beatriz Rodrigues*  1 

Vilma Azeredo2 

Alexandra Silva2 

1Programa de Pós-graduação em Saúde Materno-Infantil, Faculdade de Medicina, Universidade Federal Fluminense, Niterói, RJ, Brasil

2Departamento de Nutrição e Dietética, Faculdade de Nutrição Emília de Jesus Ferreiro, Universidade Federal Fluminense, Niterói, RJ, Brasil


The aim of this study was to investigate the relationship between food consumption of 99 pregnant women aged 16-44 years who gave birth at a maternity hospital in Rio de Janeiro and newborn birth weight. Maternal consumption of unprocessed or minimally processed and ultra-processed foods was evaluated through the Food Consumption Markers Form. For ultra-processed foods, most pregnant women regularly consumed sweets (73.7%), soft drinks (71.7%), sausages (65.7%), salted crackers (63.6%) and fried foods (55.6%). Among unprocessed or minimally processed foods, most pregnant women consumed beans (85.9%) and milk or yogurt (60.6%), while less than half consumed fruits (44.4%), raw vegetables (28.3%) and cooked vegetables (27.3%) regularly. Among newborns, 13.5% presented low birth weight. There was a significant relationship between consumption of sausages (p= 0.02) and sweets (p= 0.04) by pregnant women and low birth weight of newborns. Maternal consumption of sausages increased the odds of newborn low birth weight (OR 1.46, 95% CI 1.02-2.10).

Keywords: Food consumption; Low birth weight; Pregnant; Unprocessed foods; Ultra-processed foods


El objetivo fue investigar la relación entre el consumo de alimentos de 99 gestantes de 16 a 44 años, atendidas en una maternidad de Río de Janeiro, y el peso al nacer de los recién nacidos. El consumo materno de alimentos no procesados o mínimamente procesados y ultraprocesados se evaluó a través del Formulario de Marcadores de Consumo de Alimentos. Se observó que entre los recién nacidos, 13,5% tenían bajo peso al nacer. La evaluación del consumo de alimentos maternos mostró que, entre los alimentos ultraprocesados, la mayoría de las gestantes consumieron regularmente dulces (73,7%), gaseosas (71,7%), embutidos (65,7%), galletas saladas (63,6%) y frituras (55,6%). Entre los alimentos no procesados o mínimamente procesados, la mayoría de las gestantes consumieron frijoles (85,9%) y leche o yogur (60,6%), mientras que menos de la mitad utilizaba frutas (44,4%), verduras crudas (28,3%) y verduras cocidas (27,3%) regularmente. Se observó una relación significativa entre el consumo de embutidos (p= 0,02) y dulces (p= 0,04) en gestantes con el bajo peso al nacer. El consumo materno de embutidos aumenta la probabilidad de que los recién nacidos presenten bajo peso al nacer, a medida que aumenta su consumo (OR 1,46, IC 95% 1,02-2,10).

Palabras clave: Alimentos no procesados; Alimentos ultra-procesados; Bajo peso al nacer; Consumo de alimento; Gestante


The diet of the world's population is currently characterized by high consumption of ultra-processed foods and low consumption of unprocessed or minimally processed foods1,2,3. Ultra-processed foods have high caloric density and low nutritional quality and consumption is related to nutritional deficiencies, obesity, diabetes, arterial hypertension and other diseases4,5.

Inadequate diet during pregnancy may imply nutritional risk to newborns, favoring low birth weight (LBW) and negatively affecting growth and development6,7,8,9. Birth weight is an important public health indicator, as it reflects maternal health conditions and the quality of prenatal care10.

According to the United Nations Children's Fund (UNICEF)11, in 2000, the prevalence of LBW in developed countries was around 7.0% and 10.0% in Latin America. LBW contributes to negative outcomes in infant health, such as developmental deficits, behavioral disorders and vulnerability to infectious diseases, favoring morbidity and mortality in the first year of life12,13, and increasing the chances of future chronic diseases8,10.

It is known that unprocessed and minimally processed foods, such as fruits and vegetables have more vitamins, minerals, fibers and compounds with antioxidant and antiinflammatory properties compared to ultra-processed foods. Therefore, diet characterized. by the frequent consumption of unprocessed foods is considered a protective factor for the occurrence of chronic diseases, nutritional deficiencies and other adverse health conditions1.

There are few studies that have evaluated maternal diet from the point of view of the consumption of unprocessed or minimally processed foods and ultra-processed foods and its influence on fetal growth, especially on LBW. Thus, the main aim of this study was to investigate the relationship between food consumption of pregnant women seeking care at the “Herculano Pinheiro” Maternity Hospital and the birth weight of their newborns.


We conducted a cross-sectional analytical study with 99 pregnant women aged 16-44 years who received care at the Herculano Pinheiro Maternity Hospital (HPHM) between July and September 2016. The maternity hospital, located in the northern region of the municipality of Rio de Janeiro, is a reference hospital for the follow-up of low-risk pregnant women. Sampling was conducted for convenience. Women were approached after giving birth and received explanations about the study.

Volunteers accounted for 12% of women receiving care at this maternity hospital. The sample was calculated considering the average number of births in 24 hours at the hospital with a margin of error of 5% and 95% confidence interval (95% CI). The calculated total sample was 83 women and, considering a potential 20% loss, the number stipulated for this study was 99 women.

Women hospitalized at the maternity hospital who gave birth within 24 hours of admission were eligible to participate. After being informed of the research objectives and procedures, and with their agreement to voluntarily participate in the study, they provided signed informed consent. Women who were hospitalized for more than 24 hours were excluded, that way feeding provided at the maternity ward would not interfere with the evaluation of diet. Other exclusion criteria used were: twin pregnancy; abortion; previous diagnosis of diseases such as hypertension and diabetes; presence of obstetric hemorrhagic and infectious complications.

Maternal data were collected through medical record, prenatal care card of pregnant women and a general information questionnaire. Age, marital status, schooling, per capita income, number of pregnancies, pre-gestational weight, final gestational weight, gestational weight gain, gestational age and type of delivery performed in the maternity ward were analyzed.

Pregnant women were classified as adolescents or adults according to World Health Organization14. Pre-gestational weight was the weight recorded by the woman at the first prenatal visit. Final gestational weight was the last weight recorded in prenatal care card of pregnant women. Per capita income was calculated based on the total family income, measured by the sum of the monthly income of all family members divided by the number of residents in the household.

Birth weight of newborns was collected and classified according to UNICEF11: extreme low birth weight (weight less than 1,000 g); very low birth weight (weight less than 1,500 g); low birth weight (weight less than 2,500 g); insufficient weight (weight between 2,500 g and 2,999 g); normal or suitable weight (weight between 3,000 g and 3,999 g); overweight (weight greater than or equal to 4,000 g).

Maternal food consumption was evaluated through the Food Consumption Markers Form of the Food and Nutrition Surveillance System15, validated for children over five years of age, adults, older adults and pregnant women. This form is used to identify the consumption pattern of so-called “food consumption markers”, which are indicative of healthy and unhealthy eating practices.

The form has ten food groups: Group 1) Raw vegetables (lettuce, tomato, carrot, cucumber, cabbage); Group 2) Cooked vegetables (cabbage, squash, chayote, broccoli, spinach, not including potato and cassava); Group 3) Fresh fruit or fruit salad; Group 4) Milk or yogurt; Group 5) Beans; Group 6) French fries, potato chips, and fried snacks such as chicken drumstick, meat ball, pastry, etc.; Group 7) Burgers and sausage (sausage, mortadella, salami, ham, etc.); Group 8) Crackers / Salty crackers or packaged snacks; Group 9) Sweet or stuffed biscuits, sweets, candies and chocolates (in bar or candy); Group 10) Soft drinks (not including diet or light soft drinks). Groups 1 to 5 are considered “markers of healthy food consumption” and Groups 6 to 10 “markers of unhealthy food consumption”. To determine the food consumption frequency in the last seven days, eight answer options were provided: “I have not eaten in the last seven days”; “One day in the last seven days”; “Two days in the last seven days”; “Three days in the last seven days”; “Four days in the last seven days”; “Five days in the last seven days”; “Six days in the last seven days” and “All days in the last seven days”15.

Using the NOVA Food Classification4 as a reference, food groups were classified according to the degree of processing, being divided into: a) unprocessed or minimally processed foods; b) processed culinary ingredients; c) processed foods; d) ultra-processed foods. Groups 1 to 5 were classified as unprocessed or minimally processed foods and Groups 6 to 10 as ultra-processed foods.

The 75th percentile of consumption of each food or food group studied was adopted as a cutoff point for regular consumption of unprocessed or minimally processed foods. For the regular consumption of ultra-processed foods, the 25th percentile of consumption of each food or food group was adopted16.

For statistical analysis, collected data were typed and consolidated using SPSS / PC software, version 17.0. Descriptive statistics were used to present the results by arithmetic mean (x), standard deviation (SD), median (MD), minimum and maximum values and frequencies. The Kolmogorov-Smirnov test was used to verify if maternal variables age, per capita income, pre-gestational weight, final gestational weight, gestational weight gain and food consumption followed the normality pattern. Variables with non-normal distribution were presented as median and interquartile range and non-parametric tests were used for these variables.

The chi-square test was used to verify possible relationship between birth weight and maternal age, number of pregnancies and gestational weight gain. The Mann-Whitney test was used to evaluate the relationship between maternal food intake and maternal age. The Kruskal-Wallis test and the Dunn post-test were applied to assess the relationship between maternal food consumption and birth weight.

Analyses of correlation between maternal food consumption and child data were conducted. Pearson's correlation was used for variables with normal distribution and Spearman's for non-normal variables. Significance level of 5% was adopted in all analyses.

For multivariate analysis, binary logistic regression procedures were used, whose dependent variable was categorized by the classification of low birth weight (1 - low birth weight, 0 - no low birth weight), with the no low birth weight category considered as a reference. Among the set of variables for food consumption, logistic regression was performed adjusted for the following variables: age, per capita income, pre-gestational weight, gestational weight gain, number of pregnancies and type of delivery. Odds Ratio (OR), 95% confidence intervals (95% CI) and p-values for food consumption variables were estimated.

The present study was submitted and approved by the Ethics Research Committee of the Municipal Health Secretariat of Rio de Janeiro under number 47887915.5.0000.5279, in accordance with the ethical principles contained in Resolution 466/12 of the National Health Council.


The majority of participants were single (79.8%), adults (67.7%), multiparous (62.6%) and had incomplete high school (38.8%). The majority of birth were with a normal delivery (76.8%). On average, 38.4% of women gained between 8.0 and 11.5 kg; 44.2% gained more than 11.5 kg by the end of pregnancy. Among newborns, the majority presented normal birth weight (57.3%). However, 27.1% showed insufficient weight and 13.5% LBW. Only 2.1% of newborns were overweight.

Table 1 shows data on pregnant women and birth weight of newborns. It was observed that the mean age of participants was 24.9 ± 6.5 years. Mean gestational age was 39.4 ± 1.2 weeks, indicating that, on average, infants were not premature. Among newborns, mean birth weight was 3082.0 ± 559.0 g.

Table 1 Characteristics of pregnant women and newborn birth weight. 

Variables N X¯1 SD2 MD3 Minimum Maximum
Age (years) 99 24.9 6.5 23.0 16.0 44.0
Pre-gestational weight (kg)* 88 63.2 12.8 60.0 38.0 117.0
Final gestational weight (kg)* 91 74.1 13.4 73.0 47.0 115.4
Gestational weight gain (kg)* 86 11.3 5.9 10.1 -2.0 31.0
Gestational age (weeks) 99 39.4 1.2 40.0 37.0 42.0
Birth weight (g)* 96 3082 559 3108 1500 4400

*It was not possible to collect data of all study participants due to the lack of some information in patient medical records and prenatal care card.

1Arithmetic mean;

2Standard Deviation;


The average per capita income was U$ 87.00 ± 69.60. Around 8% of participants did not know how to report family income. The maximum per capita income observed was U$ 326.20.

Correlation analysis showed a positive association between gestational weight gain and newborn birth weight (r= 0.22, p= 0.04).

The investigation of the possible influence of maternal age, number of pregnancies and weight gain during pregnancy on newborn birth weight is presented in table 2. Statistical analysis showed no relation between maternal variables and birth weight.

Table 2 Associations between birth weight and age, number of pregnancies and maternal weight gain. 

Variables Low birth weight p-value
Yes No
n % N %
16 ├┤ 20 years 06 46.0 24 29.0 0.45
21 ├┤ 29 years 05 38.0 40 48.0
30 ├┤ 44 years 02 15.0 19 23.0
Total 13 100.0% 83 100.0%
Number of pregnancies
01 06 46.0 30 36.0 0.71
02 ├┤ 03 05 38.0 42 51.0
≥ 04 02 15.0 11 13.0
Total 13 100.0% 83 100.0%
Maternal weight gain
<0 0 0.0 0 0.0 0.40
0 ├ 8.0 kg 05 42.0 22 30.0
8.0 ├┤ 11.5 kg 01 8.0 21 28.0
> 11.5 kg 06 50.0 31 42.0
Total 12 100.0% 74 100.0%

Chi-square test.

Regarding maternal food consumption, no correlation with maternal data was observed.

The consumption of unprocessed or minimally processed and ultra-processed foods by pregnant women in the last week of gestation is presented in table 3.

Table 3 Consumption of foods by pregnant women in the last week. 

Food groups n X 1 * SD2 P253 P504 P755
Unprocessed or minimally processed foods
Beans 99 6.33 1.77 7.00 7.00 7.00
Milk or yogurt 99 5.02 2.67 3.00 7.00 7.00
Fruits 99 4.33 2.65 2.00 4.00 7.00
Cooked vegetables 99 2.80 2.66 0.00 2.00 5.00
Raw vegetables 99 2.67 2.42 1.00 2.00 4.00
Ultra-processed foods
Sweets 99 3.30 2.95 0.00 2.00 7.00
Soft drinks 99 3.23 2.99 0.00 2.00 7.00
Salted crackers 99 2.77 2.84 0.00 2.00 6.00
Sausages 99 1.48 1.75 0.00 1.00 2.00
Fried foods 99 1.29 1.73 0.00 1.00 2.00

1Arithmetic mean;

2Standard Deviation;

325th percentile;

450th percentile;

575th percentile.

*Arithmetic mean represents how many times the food group was consumed per week by pregnant women.

In relation to the regular consumption of unprocessed or minimally processed foods, less than half of pregnant women regularly consumed fruits (44.4%), raw vegetables (28.3%) and cooked vegetables (27.3%). About 85.9% of pregnant women regularly consumed beans and 60.6% consumed milk or yogurt. However, among ultra-processed foods, most pregnant women consumed them regularly, notably: sweets (73.7%), soft drinks (71.7%), sausages (65.7%), salted crackers (63.6%) and fried foods (55.6%).

When analyzing the relationship between maternal food consumption and maternal age, statistical analysis showed that the consumption of cooked vegetables was higher among adult pregnant women than among adolescent pregnant women (p= 0.03). The consumption of ultra-processed foods was similar among adult and adolescent pregnant women (p<0.05) (data not shown).

The odds of newborns of presenting LBW related to maternal food consumption are presented in table 4. The maternal consumption of sausages increased the odds of newborns of presenting LBW.

Table 4 Maternal food consumption and the odds of low birth weight. 

Food groups OR1 95% CI2
Sausages 1.46 1.02-2.10
Fried foods 1.38 0.96-1.98
Salted crackers 1.20 0.92-1.57
Fruits 1.16 0.87-1.54
Sweets 1.13 0.88-1.45
Soft drinks 1.13 0.90-1.42
Cooked vegetables 1.08 0.82-1.43
Raw vegetables 1.07 0.79-1.45
Beans 0.96 0.67-1.38
Milk or yogurt 0.87 0.67-1.12

1Odds Ratio;

295% confidence interval.

Table 5 shows the relationship between maternal food consumption in the last week of gestation and birth weight. The average consumption of sausages and sweets was significantly higher (p<0.05) among pregnant women whose newborns presented LBW. In addition, the average consumption of fried foods showed a strong tendency to be higher among pregnant women whose newborns presented LBW (p= 0.05). Among unprocessed or minimally processed foods, consumption was similar among pregnant women.

Table 5 Maternal food consumption in the last week and relationship with newborn birth weight. 

Food groups Low birth weight Insufficient weight Normal weight Overweight* p-value
n x¯ 1 * MD2 SD3 n x¯ MD SD n x¯ MD SD n x¯ MD SD
Unprocessed or minimally processed foods
Raw vegetables 13 2.92 2.00 2.69 26 3.19 3.00 2.61 55 2.47 2.00 2.31 02 3.00 3.00 0.00 0.50
Cooked vegetables 13 3.08 2.00 2.69 26 2.88 2.00 2.63 55 2.76 2.00 2.70 02 5.00 5.00 2.83 0.93
Fruits 13 5.08 7.00 2.22 26 4.42 4.50 2.72 55 4.29 4.00 2.63 02 3.50 3.50 4.95 0.64
Beans 13 6.08 7.00 2.29 26 6.73 7.00 1.37 55 6.27 7.00 1.66 02 7.00 7.00 0.00 0.26
Milk or yogurt 13 4.00 4.00 3.11 26 5.27 7.00 2.78 55 5.18 7.00 2.55 02 5.50 5.50 2.12 0.33
Ultra-processed foods
Fried foods 13 2.38 1.00 2.60 26 1.04 1.00 1.25 55 1.16 1.00 1.66 02 1.00 1.00 1.41 0.05
Sausages 13 2.38a 2.00 1.89 26 1.69ab 1.00 1.74 55 1.20b 1.00 1.68 02 2.50 2.50 2.12 0.02
Salted crackers 13 3.31 3.00 2.90 26 2.31 1.00 2.81 55 2.87 2.00 2.88 02 5.00 5.00 2.83 0.48
Sweets 13 4.92a 7.00 2.87 26 3.73ab 3.00 3.05 55 2.78b 2.00 2.79 02 3.50 3.50 4.95 0.04
Soft drinks 13 4.38 5.00 2.79 26 3.46 2.50 3.05 55 2.65 1.00 2.89 02 7.00 7.00 0.00 0.09

Kruskal-Wallis test, Dunn post-test.

a,bDifferent superscript letters denote significant difference.

*Data regarding dietary consumption of pregnant women who had overweight infants were not used in this statistical analysis (too few newborns in the sample).

1Arithmetic mean;


3Standard deviation.

*Arithmetic mean of Table 5 represents how many times the food group was consumed per week by pregnant women.


The general characteristics of pregnant women in our sample (single adults, with low socioeconomic status and schooling) were similar to those found in other studies performed with pregnant women at different Basic Health Units in the Brazilian Unified Health System17,18,19.

Studies indicate that lower schooling and income levels and higher parity are positively related to the Western pattern diet, characterized by excessive consumption of ultra-processed foods18,20. However, in the present study, no association between these variables and maternal food consumption was observed.

The higher prevalence of normal delivery observed in this study can be explained by the fact that the maternity hospital where the study was developed was linked to the “Hospital Amigo da Criança” Initiative. This initiative, conceived by UNICEF, provides care that reduces invasive procedures, such as episiotomies, acceleration or labor induction and cesarean deliveries21.

Several maternal risk factors are related to LBW, such as the presence of systemic arterial hypertension, anemia, gestational diabetes, urinary tract infection and age less than 20 years and between 35 and 40 years22. In adolescent pregnancy, there is a competition of nutrients between the growing mother and the developing fetus23. Nutrient deficiency promotes intrauterine growth restriction and consequently, LBW. Maternal aging is also related to diabetes, obesity and hypertension, morbidities that increase the risk of restriction of intrauterine growth and premature birth24.

Regarding the number of pregnancies, studies indicate that multiparous women have higher risk of LBW than primiparous. Multiparity predisposes a woman to increased risk of maternal and obstetric complications, which may trigger prematurity and neonatal intercurrences, negatively influencing birth weight25. Although the literature associates maternal age22,23,24 and number of pregnancies17,22 with LBW, this study showed no association between maternal data and newborn birth weight.

The prevalence of LBW (13.5%) observed is higher than that found in Brazil in the same period (7.7%), according to the Information System on Live Births28. Data show that, in Brazil, there was a reduction from 8.4% in 2012 to 7.7% in 2016. Among other Latin America countries, Honduras (15.0%) had the highest rate of LBW in 2012, followed by Puerto Rico (12.4%), Venezuela (10.6%) and Colombia (9.0%). The lowest prevalence of LBW was observed in Cuba (5.3%), Chile (5.8%), Peru (6.9%), Argentina (7.0%) and Uruguay (8.3%)22.

Literature has shown that lower risk of LBW among pregnant women with better eating habits, with predominance of consumption of unprocessed or minimally processed foods and a reduction in the consumption of ultra-processed foods, such as regular bread, pizza, sausage, among others7,9,29,30.

According to the Brazilian Ministry of Health1, ultra- processed foods tend to limit the consumption of unprocessed or minimally processed food, and, therefore, should be avoided. However, this orientation was not adopted by the pregnant women in the present study, since it was observed that, in the last week of gestation, most pregnant women regularly consumed the five ultra-processed food groups and only two groups of unprocessed or minimally processed foods.

Gomes et al.31 evaluated the eating habits of pregnant women in the second trimester of pregnancy receiving prenatal care at Basic Health Units of São Paulo, applying a questionnaire similar to that used in this study. The authors observed that 48.8% of pregnant women did not regularly consume fruits, a result inferior to that found in the present study. In addition, the authors pointed out that 45.7% of pregnant women replace main meals for snacks once or twice a week, showing the search for ultra-processed foods by this public.

The predominance of consumption of ultra-processed foods by pregnant women was also observed by other authors. The review article by Zapata et al.32 showed that pregnant women in Argentina have an excessive intake of saturated fats and sugar. Half of pregnant women also report high consumption of soft drinks. In addition, the authors verified low intake of fruits and vegetables in the maternal diet. In a study by Sandoval, Nieves and Luna33 conducted in Guanajuato, Mexico, observed that a majority of pregnant women frequently consumed sugar (88.7%), beans (58.5%) and milk (54.7%) and less than half of pregnant women (33.9%) consumed vegetables, in agreement with the results presented here.

In our study, the consumption of sausages was significantly higher among pregnant women whose newborns presented LBW. There are few studies that explain the mechanism by which sausages could favor LBW. It is known that sausages are ultra-processed foods high in nitrate and sodium and potassium nitrite, food additives used to preserve, intensify or modify their sensory properties30. It is suggested that, at high serum concentrations, nitrite ion forms an irreversible binding with blood hemoglobin, forming methemoglobin. This process hinders the transport of oxygen through fetal tissues, which may lead to fetal growth restriction, causing LBW34,35.

Grieger, Grzeskowiak and Clifton29 showed an association between consumption of high fat and sugar foods and higher likelihood of preterm birth (adjusted OR 1.54, 95% CI 1.10-2.15, p= 0.011). Maternal diet was evaluated in the 12 months prior to conception. The authors suggest that increased maternal inflammatory status would limit the transfer of nutrients to the fetus through the placenta. Thus, the consumption of ultra-processed foods would be related to negative fetal growth outcomes, confirming the results observed here.

Hydrogenated fats, ingredients commonly used in ultra-processed foods, have been identified as responsible for an increase in the inflammatory state of the body, via stimulating the activity of prostaglandin E2 and inhibiting anti-inflammatory agents, such as prostaglandins E1 and E3. It is known that prostaglandin E2 acts at birth by inducing uterine contraction36,37, which would favor early labor, prematurity and consequently low birth weight in neonates.

Chassaing38 suggests that emulsifiers, food additives often used in the production of ultra-processed foods, stimulate the growth of pathogenic bacteria in the intestinal microbiota. These bacteria express flagellin and lipopolysaccharides, substances that activate the expression of inflammatory cytokines. Therefore, as previously explained, conditions that promote the inflammatory state in pregnant women would favor LBW29.

A woman's diet during pregnancy tends to remain similar to pre-pregnancy or to improve during the gestational period, especially due to maternal concern for adequate fetal development and growth31. Saidman et al.39 showed that 65% of pregnant women interviewed reported changes in dietary pattern during pregnancy, including increased consumption of fruits, vegetables, cereal and milk. The main motivation for these changes was to promote fetal health. Evaluating the food consumption of pregnant women through a Food Frequency Questionnaire, Fazio et al.40 concluded that there is no great variation in dietary habits during pregnancy, suggesting that diet at the end of gestation reflects the diet at the beginning of the gestational period.

This study had some limitations. First, the food consumption form was applied in the week prior to delivery, and may be influenced by physiological and / or emotional changes that occur during this period. Second, although the form is a valid tool on food consumption, being used in national surveys by the Ministry of Health, its use depends on the memory of the person being interviewed, and food consumption may be underestimated.


Most pregnant women regularly consumed unprocessed or minimally processed foods such as beans and milk or yogurt, considered markers of healthy consumption. However, among ultra-processed foods, which are considered markers of unhealthy consumption, pregnant women regularly consumed all food groups, especially sweets, soft drinks and sausages. This study showed that the maternal consumption of sausages increased the likelihood of newborns of presenting LBW.

Studies on maternal food consumption and association with LBW are still scarce, but it is essential to encourage the planning and elaboration of public interventions to reduce this outcome. Thus, further studies on maternal food consumption and its relationship with variations in birth weight should be carried out, which would help develop nutritional strategies more adequate for pregnant women, emphasizing maternal and child health.


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Received: January 21, 2019; Revised: April 26, 2019; Accepted: August 13, 2019

*Corresponding author: Beatriz Rodrigues. Faculdade de Nutrição Emilia de Jesus Ferreiro, Universidade Federal Fluminense. Rua Mário Santos Braga, n. 30, 4° andar. Valonguinho, Centro. Niterói, RJ. CEP 24020-140. Telefone: (21) 2629-9846. E-mail:

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