An AI-based approach to predict delivery outcome based on measurable factors of pregnant mothers.

PLOS digital health Pub Date : 2025-02-05 eCollection Date: 2025-02-01 DOI:10.1371/journal.pdig.0000543
Michael Owusu-Adjei, James Ben Hayfron-Acquah, Twum Frimpong, Abdul-Salaam Gaddafi
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Abstract

The desire for safer delivery mode that preserves the lives of both mother and child with minimal or no complications before, during and after childbirth is the wish for every expectant mother and their families. However, the choice for any particular delivery mode is supposedly influenced by a number of factors that leads to the ultimate decision of choice. Some of the factors identified include maternal birth history, maternal and child health conditions prevailing before and during labor onset. Predictive modeling has been used extensively to determine important contributory factors or artifacts influencing delivery choice in related research studies. However, missing among a myriad of features used in various research studies for this determination is maternal history of spontaneous, threatened and inevitable abortion(s). How its inclusion impacts delivery outcome has not been covered in extensive research work. This research work therefore takes measurable maternal features that include real time information on administered partographs to predict delivery outcome. This is achieved by adopting effective feature selection technique to estimate variable relationships with the target variable. Three supervised learning techniques are used and evaluated for performance. Prediction accuracy score of area under the curve obtained show Gradient Boosting classifier achieved 91% accuracy, Logistic Regression 93% and Random Forest 91%. Balanced accuracy score obtained for these techniques were; Gradient Boosting 82.73%, Logistic Regression 84.62% and Random Forest 83.02%. Correlation statistic for variable independence among input variables showed that delivery outcome type as an output is associated with fetal gestational age and the progress of maternal cervix dilatation during labor onset.

基于孕妇可测量因素的人工智能方法预测分娩结果。
希望采用更安全的分娩方式,在分娩前、分娩中和分娩后尽量减少或没有并发症,以保护母亲和儿童的生命,这是每一位孕妇及其家庭的愿望。然而,任何特定交付模式的选择都可能受到导致最终选择决策的许多因素的影响。确定的一些因素包括产妇生育史、分娩前和分娩期间普遍存在的产妇和儿童健康状况。在相关研究中,预测建模被广泛用于确定影响交付选择的重要促成因素或人为因素。然而,在各种研究中用于确定这一决定的无数特征中,缺少了母亲的自然流产史、先兆流产史和不可避免流产史。在广泛的研究工作中,还没有涉及其纳入如何影响交付结果。因此,这项研究工作需要可测量的产妇特征,包括管理产程的实时信息,以预测分娩结果。这是通过采用有效的特征选择技术来估计变量与目标变量的关系来实现的。使用了三种监督学习技术并对其性能进行了评估。得到的曲线下面积预测准确率评分显示,梯度增强分类器的准确率达到91%,逻辑回归达到93%,随机森林达到91%。这些技术得到的平衡准确度评分为;梯度增强82.73%,逻辑回归84.62%,随机森林83.02%。输入变量间变量独立性的相关统计显示,分娩结局类型作为输出与胎儿胎龄和分娩时宫颈扩张的进展有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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