{"title":"MATERNAL FACTORS ASSOCIATED WITH LOW BIRTH WEIGHT AMONG THE DELIVERIES IN\nA SIR SUNDER LAL HOSPITAL, BHU, VARANASI","authors":"Ruchi Kannaujiya, U. Srivastava, Alok Kumar","doi":"10.53390/ijbs.v12.i1.5","DOIUrl":null,"url":null,"abstract":"Abstract: Birth weight is very important indicator of the health and viability of a newborn infant. It is a significant factor of newborn growth and survival. Globally, it is estimated that there are 20 million of infants who are born with low birth weight, it depends on many maternal factors such as maternal age, gestations, antenatal care, education level, weight gain, parity, sex of child, and body mass index. Logistic regression is a statistical model for analyzing a dataset in which one or more independent variables that determine an outcome. The main objective of this paper is to identify the predictors\nof low birth weight through binary logistic regression model.\nMethods: A hospital based cross sectional study was conducted in Obstetrics and Gynecology postnatal ward of Sir Sunder Lal hospital, BHU, Varanasi from 14th June 2015 to 15 January 2017. Altogether 500 respondents were taken and respondents were Mother who had delivered the newborns in SSL hospital. A spring type weighing machine scale was used to measure the birth weight of babies and birth weight was taken after the birth within the 24 hours.\nResult: A total of 517 births occurred during the study period among which 39.07% were low birth weight and 60.93% were normal birth weight. Low birth weight neonates mean birth weight was found to be 1.93 kg and overall the mean in birth weight was 2.97 kg. Chi square test to find out the risk factor associated with the low birth weight which shows that maternal education, initial weight of mother, weight gain of mother, gestation, sex of child, pregnancy complication, body mass index, antenatal care are statistically significant with low birth weight. The fitted binary Logistic regression model\nshows that use of iron and calcium supplements has the highest odd ratio compared to the other factors.\nConclusion: This study suggest that there were several factors finding to affect the birth weight which are education level, maternal weight, weight gain, body mass index, antenatal care, sex of neonates, pregnancy complication, gestation age and use of iron calcium supplements.","PeriodicalId":219235,"journal":{"name":"International Journal on Biological Sciences","volume":"7 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"1900-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal on Biological Sciences","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.53390/ijbs.v12.i1.5","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Abstract: Birth weight is very important indicator of the health and viability of a newborn infant. It is a significant factor of newborn growth and survival. Globally, it is estimated that there are 20 million of infants who are born with low birth weight, it depends on many maternal factors such as maternal age, gestations, antenatal care, education level, weight gain, parity, sex of child, and body mass index. Logistic regression is a statistical model for analyzing a dataset in which one or more independent variables that determine an outcome. The main objective of this paper is to identify the predictors
of low birth weight through binary logistic regression model.
Methods: A hospital based cross sectional study was conducted in Obstetrics and Gynecology postnatal ward of Sir Sunder Lal hospital, BHU, Varanasi from 14th June 2015 to 15 January 2017. Altogether 500 respondents were taken and respondents were Mother who had delivered the newborns in SSL hospital. A spring type weighing machine scale was used to measure the birth weight of babies and birth weight was taken after the birth within the 24 hours.
Result: A total of 517 births occurred during the study period among which 39.07% were low birth weight and 60.93% were normal birth weight. Low birth weight neonates mean birth weight was found to be 1.93 kg and overall the mean in birth weight was 2.97 kg. Chi square test to find out the risk factor associated with the low birth weight which shows that maternal education, initial weight of mother, weight gain of mother, gestation, sex of child, pregnancy complication, body mass index, antenatal care are statistically significant with low birth weight. The fitted binary Logistic regression model
shows that use of iron and calcium supplements has the highest odd ratio compared to the other factors.
Conclusion: This study suggest that there were several factors finding to affect the birth weight which are education level, maternal weight, weight gain, body mass index, antenatal care, sex of neonates, pregnancy complication, gestation age and use of iron calcium supplements.
摘要:出生体重是衡量新生儿健康和生存能力的重要指标。它是影响新生儿生长和生存的重要因素。在全球范围内,估计有2000万婴儿出生时体重过低,这取决于许多产妇因素,如产妇年龄、妊娠期、产前保健、教育水平、体重增加、胎次、儿童性别和体重指数。逻辑回归是一种统计模型,用于分析数据集,其中一个或多个独立变量决定结果。本文的主要目的是通过二元logistic回归模型识别低出生体重的预测因子。方法:于2015年6月14日至2017年1月15日在瓦拉纳西BHU Sir Sunder Lal医院妇产科产后病房进行以医院为基础的横断面研究。调查对象为在SSL医院分娩的母亲,共500人。采用弹簧式称重机秤测量婴儿出生体重,出生后24小时内取出生体重。结果:研究期间共出生517例,其中低出生体重39.07%,正常出生体重60.93%。低出生体重新生儿平均出生体重为1.93公斤,总体平均出生体重为2.97公斤。卡方检验找出与低出生体重相关的危险因素,结果表明,母亲受教育程度、母亲初始体重、母亲体重增加、妊娠情况、儿童性别、妊娠并发症、体重指数、产前护理对低出生体重均有统计学意义。拟合的二元Logistic回归模型显示,与其他因素相比,铁和钙补充剂的使用具有最高的奇比。结论:影响新生儿出生体重的因素有文化程度、产妇体重、体重增加、体重指数、产前保健、新生儿性别、妊娠并发症、孕龄、铁钙补充剂使用情况等。