Prediction of Fetal Health Status Using Machine Learning

Naidile S Saragodu, Shreedhara N Hegde, Harprith Kaur
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Abstract

The goal of this promising area of study is to enhance prenatal care and lower fetal morbidity and mortality by utilizingmachine learning to anticipate fetal disease. In this study, we present a machine learning-based strategy for predicting fetaldiseases from clinical data. First, we gathered a sizable collection of clinical information from expectant mothers with various fetal disorders. Using clinical guidelines, we pre-processed the data and retrieved pertinent features. We integrated a range of machine learning algorithms, including logistic regression, support vector machines, decision trees, and random forests, to train and test our model. We evaluated the performance of our model using severalfactors, such as accuracy, sensitivity, specificity, and area under the receiver operating characteristic curve (AUC-ROC).The results of this study demonstrate how machine learning algorithms can accurately forecast fetal health status. The developed models achieve good accuracy and AUC-ROC ratings todistinguish between healthy and at-risk fetuses. The interpretability study identifies key clinical characteristics that have a significant impact on the prediction, providing medical practitioners with useful information when making decisions about prenatal care. Through the provision of more unbiasedand precise assessments of fetal health status, machine learning techniques incorporated into prenatal care have the potential to transform the industry. By providing accurate and early projections, this technology can assist healthcare professionals in identifying high-risk pregnancies and carrying out the necessary procedures, improving mother and fetal outcomes. Future research should concentrate on verifying and improving predictive models on larger and more varied datasets to ensure real-world applicability and reliability
利用机器学习预测胎儿健康状况
这一前景广阔的研究领域的目标是利用机器学习预测胎儿疾病,从而加强产前护理,降低胎儿发病率和死亡率。在这项研究中,我们提出了一种基于机器学习的策略,从临床数据中预测胎儿疾病。首先,我们收集了大量患有各种胎儿疾病的准妈妈的临床信息。利用临床指南,我们对数据进行了预处理,并检索了相关特征。我们整合了一系列机器学习算法,包括逻辑回归、支持向量机、决策树和随机森林,以训练和测试我们的模型。我们使用准确性、灵敏度、特异性和接收者操作特征曲线下面积(AUC-ROC)等多个因素评估了模型的性能。所开发的模型在区分健康胎儿和高危胎儿方面具有良好的准确性和 AUC-ROC 评级。可解释性研究确定了对预测有重大影响的关键临床特征,为医疗从业人员在产前护理决策时提供了有用的信息。通过对胎儿健康状况进行更公正、更精确的评估,将机器学习技术融入产前护理有望改变整个行业。通过提供准确的早期预测,这项技术可以帮助医疗保健专业人员识别高危妊娠并实施必要的手术,从而改善母亲和胎儿的预后。未来的研究应集中于在更大、更多样的数据集上验证和改进预测模型,以确保其在现实世界中的适用性和可靠性。
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