scholarly journals Maternal factors associated with smoking during gestation and consequences in newborns: results of an 18-year study

2011 ◽  
Vol 40 (1) ◽  
pp. 27-36 ◽  
Author(s):  
K. Kavanagh ◽  
B.L. Dozier ◽  
T.J. Chavanne ◽  
L.A. Fairbanks ◽  
M.J. Jorgensen ◽  
...  

1993 ◽  
Vol 73 (2) ◽  
pp. 431-435 ◽  
Author(s):  
B. D. King ◽  
R. D. H. Cohen ◽  
S. McCormac ◽  
C. L. Guenther

Stepwise discriminant analysis was used to determine maternal factors associated with dystocia in 564 2-yr-old heifers bred to bulls with below breed average birth weights. Calf birth weight (n = 556) was consistently the most significant (P < 0.001) factor correlated (R2 = 0.31) with dystocia. Other significant (P < 0.001) factors were weight at breeding (n = 376) and calving (n = 559; R2 = 0.11 for both traits). Other factors considered were age at breeding (n = 446), pelvic area at breeding (n = 112) and pregnancy evaluation (n = 297), heifer birth weight (n = 564), gestation length (n = 467) and age at calving (n = 559) but none were significant (P > 0.05). Heifers requiring caesarian section were heaviest (P < 0.05) at breeding and their calves were heaviest (P < 0.05) at birth. Unassisted heifers were heavier at calving (P < 0.05) than assisted heifers. It was concluded that none of the factors examined in this study was a reliable predictor of dystocia in beef heifers but that heifers should be bred at 75–80% of their expected calving weight to reduce the risk of dystocia. Key words: Dystocia, heifer, discriminant analysis


2017 ◽  
Vol 100 ◽  
pp. 16-23 ◽  
Author(s):  
Hany Abdalla ◽  
Adel Elghafghuf ◽  
Ibrahim Elsohaby ◽  
Mohammed A.F. Nasr

1997 ◽  
Vol 9 (2) ◽  
pp. 61-71 ◽  
Author(s):  
H Fox

A baby may be small for a variety of reasons, but there are certain overt maternal and fetal factors which may lead to, or are associated with, a poor fetal growth rate. Pre-eminent amongst the maternal factors is severe pre-eclampsia and in women with this disease the smallness of the baby is almost certainly due to the inadequacy of the uteroplacental circulation. Other maternal factors of importance are cigarette smoking, drug abuse and certain infections such as malaria. The most obvious fetal factors associated with a low birth weight are congenital malformations and chromosomal abnormalities, and there the failure of the fetus to achieve a normal weight is clearly an expression of a generalised disorder of growth and is unrelated to the adequacy or otherwise of the placenta. If cases such as these are removed from consideration, there remains an important residue of unduly small infants who are delivered after an apparently uncomplicated pregnancy, are free from congenital malformations and have a normal karotype; it is this group which is considered here.


2018 ◽  
Author(s):  
Katelyn J. Rittenhouse ◽  
Bellington Vwalika ◽  
Alex Keil ◽  
Jennifer Winston ◽  
Marie Stoner ◽  
...  

AbstractBackgroundGlobally, preterm birth is the leading cause of neonatal death with estimated prevalence and associated mortality highest in low‐ and middle‐income countries (LMICs). Accurate identification of preterm infants is important at the individual level for appropriate clinical intervention as well as at the population level for informed policy decisions and resource allocation. As early prenatal ultrasound is commonly not available in these settings, gestational age (GA) is often estimated using newborn assessment at birth. This approach assumes last menstrual period to be unreliable and birthweight to be unable to distinguish preterm infants from those that are small for gestational age (SGA). We sought to leverage machine learning algorithms incorporating maternal factors associated with SGA to improve accuracy of preterm newborn identification in LMIC settings.Methods and FindingsThis study uses data from an ongoing obstetrical cohort in Lusaka, Zambia that uses early pregnancy ultrasound to estimate GA. Our intent was to identify the best set of parameters commonly available at delivery to correctly categorize births as either preterm (<37 weeks) or term, compared to GA assigned by early ultrasound as the gold standard. Trained midwives conducted a newborn assessment (<72 hours) and collected maternal and neonatal data at the time of delivery or shortly thereafter. New Ballard Score (NBS), last menstrual period (LMP), and birth weight were used individually to assign GA at delivery and categorize each birth as either preterm or term. Additionally, machine learning techniques incorporated combinations of these measures with several maternal and newborn characteristics associated with prematurity and SGA to develop GA at delivery and preterm birth prediction models. The distribution and accuracy of all models were compared to early ultrasound dating. Within our live‐born cohort to date (n = 862), the median GA at delivery by early ultrasound was 39.4 weeks (IQR: 38.3 ‐ 40.3). Among assessed newborns with complete data included in this analysis (n = 458), the median GA by ultrasound was 39.6 weeks (IQR: 38.4 ‐ 40.3). Using machine learning, we identified a combination of six accessible parameters (LMP, birth weight, twin delivery, maternal height, hypertension in labor, and HIV serostatus) that can be used by machine learning to outperform current GA prediction methods. For preterm birth prediction, this combination of covariates correctly classified >94% of newborns and achieved an area under the curve (AUC) of 0.9796.ConclusionsWe identified a parsimonious list of variables that can be used by machine learning approaches to improve accuracy of preterm newborn identification. Our best performing model included LMP, birth weight, twin delivery, HIV serostatus, and maternal factors associated with SGA. These variables are all easily collected at delivery, reducing the skill and time required by the frontline health worker to assess GA.


2018 ◽  
Vol 25 (4) ◽  
pp. 112-121
Author(s):  
Che Muzaini Che’ Muda ◽  
◽  
Tengku Alina Tengku Ismail ◽  
Rohana Ab Jalil ◽  
Suhaily Mohd Hairon ◽  
...  

2021 ◽  
Vol 15 (1) ◽  
pp. 1-11
Author(s):  
Badane Amina Wako ◽  
Isabella Epiu ◽  
Samuel Otor

Background/Aim Stillbirth refers to fetal death occurring at or after 28 weeks of gestation. Worldwide, 130 million babies are born every year and approximately 4 million are stillborn; more than 98% of these deaths occur in developing countries. The government of the Republic of Kenya has put in place several measures, such as the National Health Insurance Fund and Free Child Delivery Programmes for pregnant women, in order to meet the Sustainable Development Goals on health. However, the problem of stillbirth continues to prevail in the country. This study sought to determine maternal factors associated with occurrence of stillbirth in selected hospitals in Marsabit County, Kenya. Methods The study employed a cross-sectional descriptive study design, targeting 387 women who delivered in selected hospitals in Marsabit County, to collect qualitative and quantitative data. Quantitative data were analysed using the Statistical Package for Social Sciences version 24.0 while qualitative data were analysed using N-Vivo software version 11. Inferential statistics were calculated using Chi Square and Fisher's Exact Tests at 95% confidence interval and P<0.05 was considered significant. Results The rate of stillbirth occurrence was 5.9%. Maternal factors significantly associated with the occurrence of stillbirth included antenatal attendance (P=0.031), use of illicit drugs (P=0.041), low maternal weight (P=0.043) and tough domestic work (P=0.004). Conclusions The respondents from Marsabit County experienced relative high rates of stillbirth compared to the national figure. The outcome of delivery was significantly influenced by maternal factors. These results may help address the high rate of stillbirth across the country and improve the delivery outcomes of pregnancies among mothers delivering in public hospitals.


2019 ◽  
Vol 6 (10) ◽  
Author(s):  
Maria L Alcaide ◽  
Violeta J Rodriguez ◽  
John M Abbamonte ◽  
Shandir Ramlagan ◽  
Sibusiso Sifunda ◽  
...  

Abstract Background This study evaluated maternal factors associated with infant neurodevelopmental outcomes among HIV-exposed uninfected (HEU) infants in rural South Africa. This study followed pregnant women living with HIV pre- and postpartum and evaluated sociodemographic factors, use of antiretrovirals (ARVs), and mental health factors as predictors of HEU infant developmental outcomes (cognitive, receptive, and expressive communication, fine and gross motor skills). Methods Participants were 80 mother–infant dyads. Mothers were assessed during pregnancy, and HEU infant development was assessed at a mean (SD) of 13.36 (1.89) months of age. Results Women were an average (SD) of 28.9 (5.2) years of age, and infants were on average 13.4 (1.9) months old. An analysis of covariance indicated that infants whose mothers had ARV detected in dry blood spots at 32 weeks of pregnancy had lower functioning scores in the cognitive domain than those with undetected ARV (n = 14; M, 15.3 vs 17.2; P = .048). Antenatal physical intimate partner violence was also associated with delayed cognitive functioning (F (1, 74), 4.96; P = .029). Conclusions This study found risks for delayed infant cognitive development to be associated with the use of ARV during pregnancy and intimate partner violence, although findings merit replication due to the low sample size. Given the growing number of HEU infants, the necessity to better understand the potential toxicity of ARV exposure in utero is apparent. Similarly, the need for preventing intimate partner violence and screening for, and managing, developmental delays among these infants is increasing.


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