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Fetal health status prediction based on maternal clinical history using machine learning techniques

机译:基于母体临床史的胎儿健康状况预测使用机器学习技术

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Background and ObjectiveCongenital anomalies are seen at 1–3% of the population, probabilities of which are tried to be found out primarily through double, triple and quad tests during pregnancy. Also, ultrasonographical evaluations of fetuses enhance detecting and defining these abnormalities. About 60–70% of the anomalies can be diagnosed via ultrasonography, while the remaining 30–40% can be diagnosed after childbirth. Medical diagnosis and prediction is a topic that is closely related with e-Health and machine learning. e-Health applications are critically important especially for the patients unable to see a doctor or any health professional. Our objective is to help clinicians and families to better predict fetal congenital anomalies besides the traditional pregnancy tests using machine learning techniques and e-Health applications. MethodsIn this work, we developed a prediction system with assistive e-Health applications which both the pregnant women and practitioners can make use of. A performance comparison (considering Accuracy, F1-Score, AUC measures) was made between 9 binary classification models (Averaged Perceptron, Boosted Decision Tree, Bayes Point Machine, Decision Forest, Decision Jungle, Locally-Deep Support Vector Machine, Logistic Regression, Neural Network, Support Vector Machine) which were trained with the clinical dataset of 96 pregnant women and used to process data to predict fetal anomaly status based on the maternal and clinical data. The dataset was obtained through maternal questionnaire and detailed evaluations of 3 clinicians from RadyoEmar radiodiagnostics center in Istanbul, Turkey. Our e-Health applications are used to get pregnant women’s health status and clinical history parameters as inputs, recommend them physical activities to perform during pregnancy, and inform the practitioners and finally the patients about possible risks of fetal anomalies as the output. ResultsIn this paper, the highest accuracy of prediction was displayed as 89.5% during the development tests with Decision Forest model. In real life testing with 16 users, the performance was 87.5%. This estimate is sufficient to give an idea of fetal health before the patient visits the physician. ConclusionsThe proposed work aims to provide assistive services to pregnant women and clinicians via an online system consisting of a mobile side for the patients, a web application side for their clinicians and a prediction system. In addition, we showed the impact of certain clinical data parameters of pregnant on the fetal health status, statistically correlated the parameters with the existence of fetal anomalies and showed guidelines for future researches.
机译:背景和客观的概况在1-3%的人口中被观察到,其概率被认为主要通过怀孕期间的双重,三重和四边试验来发现。此外,胎儿的超声评估增强了检测和定义这些异常。大约60-70%的异常可以通过超声检查诊断,而剩余的30-40%可以在分娩后诊断。医学诊断和预测是与电子健康和机器学习密切相关的主题。 E-Health申请严重重要,特别是对于无法看到医生或任何健康专业人士的患者。我们的目标是帮助临床医生和家庭更好地预测使用机器学习技术和电子健康应用的传统妊娠试验之外的胎儿先天性异常。方法在这项工作中,我们开发了一种预测系统,具有辅助电子健康应用,孕妇和从业者都可以利用。在9二进制分类模型之间进行了性能比较(考虑到准确性,F1分数,AUC措施)(平均的Perceptron,提升决策树,贝叶斯点机,决策林,决策丛林,局部深度支持向量机,逻辑回归,神经网络,支持向量机器用96名孕妇的临床数据集接受培训,并用于处理数据以基于母体和临床数据预测胎儿异常状态。数据集是通过产妇调查表获得的,并通过土耳其伊斯坦布尔的Radyoemar Radiodiognostics中心的3名临床医生进行详细评估。我们的电子健康申请用于使孕妇的健康状况和临床历史参数作为投入,推荐他们在怀孕期间进行体育活动,并告知从业者,最后患者患者可能存在胎儿异常的风险作为产出。结果本文,在决策林模型的开发试验期间,预测的最高精度显示为89.5%。在使用16个用户的现实生活测试中,性能为87.5%。在患者访问医生之前,这种估计足以在患者​​之前举行胎儿健康。结论拟议工作旨在通过由患者的移动侧组成的在线系统,为临床医生和预测系统提供担任孕妇和临床医生提供辅助服务。此外,我们展示了某些临床数据参数对胎儿健康状况的影响,统计上与胎儿异常存在的参数相关,并显示了未来研究指南。

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