scholarly journals Improving preterm newborn identification in low-resource settings with machine learning

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.

2021 ◽  
Vol 21 (1) ◽  
Author(s):  
Xiaojing Guo ◽  
Xiaoqiong Li ◽  
Tingting Qi ◽  
Zhaojun Pan ◽  
Xiaoqin Zhu ◽  
...  

Abstract Background Despite 15–17 millions of annual births in China, there is a paucity of information on prevalence and outcome of preterm birth. We characterized the outcome of preterm births and hospitalized preterm infants by gestational age (GA) in Huai’an in 2015, an emerging prefectural region of China. Methods Of 59,245 regional total births, clinical data on 2651 preterm births and 1941 hospitalized preterm neonates were extracted from Huai’an Women and Children’s Hospital (HWCH) and non-HWCH hospitals in 2018–2020. Preterm prevalence, morbidity and mortality rates were characterized and compared by hospital categories and GA spectra. Death risks of preterm births and hospitalized preterm infants in the whole region were analyzed with multivariable Poisson regression. Results The prevalence of extreme, very, moderate, late and total preterm of the regional total births were 0.14, 0.53, 0.72, 3.08 and 4.47%, with GA-specific neonatal mortality rates being 44.4, 15.8, 3.7, 1.5 and 4.3%, respectively. There were 1025 (52.8% of whole region) preterm admissions in HWCH, with significantly lower in-hospital death rate of inborn (33 of 802, 4.1%) than out-born (23 of 223, 10.3%) infants. Compared to non-HWCH, three-fold more neonates in HWCH were under critical care with higher death rate, including most extremely preterm infants. Significantly all-death risks were found for the total preterm births in birth weight <  1000 g, GA < 32 weeks, amniotic fluid contamination, Apgar-5 min < 7, and birth defects. For the hospitalized preterm infants, significantly in-hospital death risks were found in out-born of HWCH, GA < 32 weeks, birth weight <  1000 g, Apgar-5 min < 7, birth defects, respiratory distress syndrome, necrotizing enterocolitis and ventilation, whereas born in HWCH, antenatal glucocorticoids, cesarean delivery and surfactant use decreased the death risks. Conclusions The integrated data revealed the prevalence, GA-specific morbidity and mortality rate of total preterm births and their hospitalization, demonstrating the efficiency of leading referral center and whole regional perinatal-neonatal network in China. The concept and protocol should be validated in further studies for prevention of preterm birth.


2013 ◽  
Vol 31 (3) ◽  
pp. 285-292 ◽  
Author(s):  
Cristina Lika Uezima ◽  
Ariane Moreira Barreto ◽  
Ruth Guinsburg ◽  
Akemi Kuroda Chiba ◽  
José Orlando Bordin ◽  
...  

OBJECTIVE: In preterm newborn infants transfused with erythrocytes stored up to 28 days, to compare the reduction of blood donor exposure in two groups of infants classified according to birth weight. METHODS: A prospective study was conducted with preterm infants with birth weight <1000g (Group 1) and 1000-1499g (Group 2), born between April, 2008 and December, 2009. Neonates submitted to exchange transfusions, emergency erythrocyte transfusion, or those who died in the first 24 hours of life were excluded. Transfusions were indicated according to the local guideline using pediatric transfusion satellite bags. Demographic and clinical data, besides number of transfusions and donors were assessed. . Logistic regression analysis was performed to determine factors associated with multiple transfusions. RESULTS: 30 and 48 neonates were included in Groups 1 and 2, respectively. The percentage of newborns with more than one erythrocyte transfusion (90 versus 11%), the median number of transfusions (3 versus 1) and the median of blood donors (2 versus 1) were higher in Group 1 (p<0.001), compared to Group 2. Among those with multiple transfusions, 14 (82%) and one (50%) presented 50% reduction in the number of blood donors, respectively in Groups 1 and 2. Factors associated with multiple transfusions were: birth weight <1000g (OR 11.91; 95%CI 2.14-66.27) and presence of arterial umbilical catheter (OR 8.59; 95%CI 1.94-38.13), adjusted for confounders. CONCLUSIONS: The efficacy of pediatrics satellites bags on blood donor reduction was higher in preterm infants with birth weight <1000g.


2020 ◽  
Vol 96 (3) ◽  
pp. 327-332
Author(s):  
Julia Damiani Victora ◽  
Mariangela Freitas Silveira ◽  
Cristian Tedesco Tonial ◽  
Cesar Gomes Victora ◽  
Fernando Celso Barros ◽  
...  

2016 ◽  
Vol 26 (5) ◽  
pp. 1349-1360 ◽  
Author(s):  
M. R. S. Moura ◽  
C. G. A. Araújo ◽  
M. M. Prado ◽  
H. B. M. S. Paro ◽  
R. M. C. Pinto ◽  
...  

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


2015 ◽  
Vol 15 (1) ◽  
Author(s):  
Amelia Miyashiro Nunes dos Santos ◽  
◽  
Ruth Guinsburg ◽  
Maria Fernanda Branco de Almeida ◽  
Renato Soibelman Procianoy ◽  
...  

Author(s):  
Anant Pawar ◽  
Durgesh Kumar

Background: Low birth weight (LBW) continues to remain a major public health problem worldwide. There are numerous factors contributing to LBW both maternal and foetal. The maternal risk factors are biologically and socially interrelated. The mortality of low birth weight can be reduced if the maternal risk factors are detected early and managed by simple techniques. This study was conducted to study the maternal risk factors associated with low birth weight. Methods: A retrospective record based case control study was conducted. Retrospective data collection was done using registers from medical record section of Obstetrics and Gynaecology department. After applying exclusion criteria and checking for completeness of records, we selected 60 cases and 124 matched controls. Data was entered in Microsoft excel and analyzed using SPSS version 16. Students ‘t’ test, chi-square test and odds ratio were used to find out the factors associated with low birth weight. Results: In the present study, 60 cases and 124 controls were studied. Mean age of mothers in the case group was 24.4±4.7 yrs. and in the control group was 24.8±4.42 yrs. Mean weight of the cases was 62.5±6.89 kg and of the controls was 65.04±7.16 kg. A total of 35% of the cases and 20% of the controls suffered from pregnancy related diseases. Conclusions: Maternal factors like Socio-economic status, weight, haemoglobin and parity were significantly associated with LBW. Maternal diseases like hypertension, diabetes can result in LBW baby. 


1982 ◽  
Vol 31 (3-4) ◽  
pp. 241-245 ◽  
Author(s):  
Denis Hemon ◽  
Colette Berger ◽  
Philippe Lazar

The maternal risk factors that correlate with small-for-dateness among twins have been analyzed using a sample of 659 twin pairs and a matched sample of singletons. Non-marital status, job involvement, and the previous delivery of a low-birth weight (<2,500g) infant present a negative interaction with twinning, as low gestational age-adjusted birth weight does not correlate significantly with these risk factors among twin gestations, while it does among singleton gestations. On the other hand, the effects of parity, habitual maternal weight, smoking during pregnancy, and twinning are additive on gestational age-adjusted birth weight. Indeed, the decrease in adjusted birth weight associated with these risk factors is of the same magnitude among twins and singletons and is statistically significant in both cases. These findings suggest that exposure of twin pregnancies to these latter risk factors, and particularly to smoking during pregnancy, can lead to the delivery of newborns with extremely low birth weights.


2020 ◽  
Vol 96 (3) ◽  
pp. 327-332 ◽  
Author(s):  
Julia Damiani Victora ◽  
Mariangela Freitas Silveira ◽  
Cristian Tedesco Tonial ◽  
Cesar Gomes Victora ◽  
Fernando Celso Barros ◽  
...  

Sign in / Sign up

Export Citation Format

Share Document