Developing a model to predict neonatal respiratory distress syndrome and affecting factors using data mining: A cross-sectional study

Parisa Farshid, K. Mirnia, Peyman Rezaei-Hachesu, Elham Maserat, Taha Samad-Soltani
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Abstract

Background: One of the major challenges that hospitals and clinicians face is the early identification of newborns at risk for adverse events. One of them is neonatal respiratory distress syndrome (RDS). RDS is the widest spared respiratory disorder in immature newborns and the main source of death among them. Machine learning has been broadly accepted and used in various scopes to analyze medical information and is very useful in the early detection of RDS. Objective: This study aimed to develop a model to predict neonatal RDS and affecting factors using data mining. Materials and Methods: The original dataset in this cross-sectional study was extracted from the medical records of newborns diagnosed with RDS from July 2017-July 2018 in Alzahra hospital, Tabriz, Iran. This data includes information about 1469 neonates, and their mothers information. The data were preprocessed and applied to expand the classification model using machine learning techniques such as support vector machine, Naïve Bayes, classification tree, random forest, CN2 rule induction, and neural network, for prediction of RDS episodes. The study compares models according to their accuracy. Results: Among the obtained results, an accuracy of 0.815, sensitivity of 0.802, specificity of 0.812, and area under the curve of 0.843 was the best output using random forest. Conclusion: The findings of our study proved that new approaches, such as data mining, may support medical decisions, improving diagnosis in neonatal RDS. The feasibility of using a random forest in neonatal RDS prediction would offer the possibility to decrease postpartum complications of neonatal care. Key words: Data mining, Classification, Neonatal respiratory distress syndrome, Newborn, Machine learning.
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利用数据挖掘建立预测新生儿呼吸窘迫综合征及其影响因素的模型:横断面研究
背景:医院和临床医生面临的主要挑战之一是及早发现有不良事件风险的新生儿。新生儿呼吸窘迫综合征(RDS)就是其中之一。RDS 是未成熟新生儿中最常见的呼吸系统疾病,也是新生儿死亡的主要原因。机器学习已被广泛接受并用于各种医疗信息分析,对早期检测 RDS 非常有用。 研究目的本研究旨在利用数据挖掘技术开发一个预测新生儿 RDS 及其影响因素的模型。 材料与方法:本横断面研究的原始数据集是从伊朗大不里士市阿尔扎赫拉医院 2017 年 7 月至 2018 年 7 月期间诊断为 RDS 的新生儿病历中提取的。这些数据包括 1469 名新生儿的信息及其母亲信息。数据经过预处理后,使用支持向量机、奈夫贝叶斯、分类树、随机森林、CN2 规则归纳和神经网络等机器学习技术扩展分类模型,用于预测 RDS 发作。研究根据模型的准确性对其进行了比较。 结果:在获得的结果中,随机森林的准确率为 0.815,灵敏度为 0.802,特异性为 0.812,曲线下面积为 0.843,是最佳输出结果。 结论我们的研究结果证明,数据挖掘等新方法可以支持医疗决策,改善新生儿 RDS 的诊断。在新生儿 RDS 预测中使用随机森林的可行性将为减少新生儿护理的产后并发症提供可能。 关键词数据挖掘 分类 新生儿呼吸窘迫综合征 新生儿 机器学习
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