Adane Shumet Mebrat, Teshale Achamyeleh Birhanu, Belay Daniel Gashaneh, Nigatu Solomon Gedlu
Department of Epidemiology, College of Medicine and Health Sciences, Hawassa University, Hawassa, Ethiopia.
School of Public Health and Preventive Medicine, Monash University, Melbourne, VIC, Australia.
Front Pediatr. 2025 Jun 12;13:1496019. doi: 10.3389/fped.2025.1496019. eCollection 2025.
The World Health Organization reported 2.6 million neonatal deaths in 2016, accounting for nearly 46% of all under-five deaths globally. Ethiopia is among the top 10 countries with the highest neonatal mortality, with an estimated 122,000 newborn deaths annually. This study aimed to develop and validate a risk score to predict neonatal mortality.
We conducted a retrospective follow-up study among 845 neonates admitted tot Hawassa University Comprehensive Specialized Hospital, Southern Ethiopia. Data were entered into EpiData version 4.6 and analyzed using R version 4.0.5. Variables with < 0.25 in the bivariable analysis were entered into the multivariable model. A stepwise backward elimination technique with < 0.1 for the likelihood ratio test to fit the reduced model. Finally, variables with < 0.05 were considered statistically significant.
Of the 845 neonates included in the study, 130 died, resulting in a neonatal mortality incidence proportion of 15.4% (95% CI: 13%, 17%). Seven variables, namely, residence, primigravida, low birth weight, amniotic fluid status, Apgar score, perinatal asphyxia, and breastfeeding, were included in the model. The AUC of the final reduced validated model was 0.781 (95% CI: 0.73, 0.82). The accuracy of the model was also assessed by calibration and resulted in a -value of 0.781. The model had a sensitivity and specificity of 80% and 66%, respectively. Decision curve analysis of the model provides a higher net benefit across ranges of threshold probabilities.
We constructed and internally validated a prediction model with good performance. This model is feasible and applicable in healthcare settings to reducing neonatal mortality and improving overall maternal and child healthcare.
世界卫生组织报告称,2016年有260万新生儿死亡,占全球五岁以下儿童死亡总数的近46%。埃塞俄比亚是新生儿死亡率最高的10个国家之一,估计每年有12.2万新生儿死亡。本研究旨在开发并验证一个预测新生儿死亡率的风险评分。
我们对埃塞俄比亚南部哈瓦萨大学综合专科医院收治的845例新生儿进行了回顾性随访研究。数据录入EpiData 4.6版本,并使用R 4.0.5版本进行分析。双变量分析中P<0.25的变量被纳入多变量模型。采用逐步向后排除技术,似然比检验P<0.1以拟合简化模型。最后,P<0.05的变量被认为具有统计学意义。
在纳入研究的845例新生儿中,130例死亡,新生儿死亡率为15.4%(95%CI:13%,17%)。模型纳入了七个变量,即居住地、初产妇、低出生体重、羊水状况、阿氏评分、围产期窒息和母乳喂养。最终简化验证模型的AUC为0.781(95%CI:0.73,0.82)。通过校准评估模型的准确性,得到P值为0.781。该模型的敏感性和特异性分别为80%和66%。模型的决策曲线分析在不同阈值概率范围内提供了更高的净效益。
我们构建并内部验证了一个性能良好的预测模型。该模型在医疗环境中可行且适用,有助于降低新生儿死亡率并改善整体母婴保健。