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Implementing machine learning in bipolar diagnosis in China

机译:在中国双极诊断中实施机器学习

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Bipolar disorder (BPD) is often confused with major depression, and current diagnostic questionnaires are subjective and time intensive. The aim of this study was to develop a new Bipolar Diagnosis Checklist in Chinese (BDCC) by using machine learning to shorten the Affective Disorder Evaluation scale (ADE) based on an analysis of registered Chinese multisite cohort data. In order to evaluate the importance of each item of the ADE, a case-control study of 360 bipolar disorder (BPD) patients, 255 major depressive disorder (MDD) patients and 228 healthy (no psychiatric diagnosis) controls (HCs) was conducted, spanning 9 Chinese health facilities participating in the Comprehensive Assessment and Follow-up Descriptive Study on Bipolar Disorder (CAFé-BD). The BDCC was formed by selected items from the ADE according to their importance as calculated by a random forest machine learning algorithm. Five classical machine learning algorithms, namely, a random forest algorithm, support vector regression (SVR), the least absolute shrinkage and selection operator (LASSO), linear discriminant analysis (LDA) and logistic regression, were used to retrospectively analyze the aforementioned cohort data to shorten the ADE. Regarding the area under the receiver operating characteristic (ROC) curve (AUC), the BDCC had high AUCs of 0.948, 0.921, and 0.923 for the diagnosis of MDD, BPD, and HC, respectively, despite containing only 15% (17/113) of the items from the ADE. Traditional scales can be shortened using machine learning analysis. By shortening the ADE using a random forest algorithm, we generated the BDCC, which can be more easily applied in clinical practice to effectively enhance both BPD and MDD diagnosis.
机译:双极性障碍(BPD)通常与主要抑郁症混淆,目前的诊断问卷是主观和时间密集。本研究的目的是通过使用机器学习来开发中文(BDCC)的新双极诊断清单,以根据注册的中国多路队列数据的分析来缩短情感障碍评估规模(ADE)。为了评估每种物品的ade的重要性,对360个双相障碍(BPD)患者的病例对照研究,255名主要抑郁症(MDD)患者和228例健康(无精神病诊断)对照(HCS)进行进行,跨越9中国卫生设施参加了对双相障碍(Café-BD)的综合评估和后续描述性研究。通过随机林机学习算法计算的重要性,通过来自ADE的选定物品形成BDCC。五种古典机器学习算法,即随机森林算法,支持向量回归(SVR),绝对收缩和选择操作员(套索),线性判别分析(LDA)和逻辑回归,用于回顾上述群组数据缩短ade。关于接收器操作特征(ROC)曲线(AUC)下的区域,尽管仅含15%(17/113 )来自ade的物品。可以使用机器学习分析缩短传统尺度。通过使用随机森林算法缩短ade,我们产生了BDCC,可以更容易地应用于临床实践,以有效增强BPD和MDD诊断。

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