Khazaie Habibolah, Rezaei Farzin, Zakiei Ali, Faridmarandi Behrooz, Komasi Saeid
Sleep Disorders Research Center, Kermanshah University of Medical Sciences, Kermanshah, Iran.
Department of Psychiatry, Roozbeh Hospital, Tehran University of Medical Sciences, Tehran, Iran.
Front Psychiatry. 2024 Jul 12;15:1392525. doi: 10.3389/fpsyt.2024.1392525. eCollection 2024.
Psychopathology research mainly focused on the cross-sectional and longitudinal associations between personality and psychiatric disorders without considering the moment-to-moment dynamics of personality in response to environmental situations. The present study aimed to both cluster a young sample according to three mixed clinical conditions (poor sleep quality, depression, and somatization) and to predict the derived clusters by maladaptive personality traits and sex differences using a deep machine learning approach.
A sample of 839 adults aged 18-40 years (64% female) from the west of Iran were clustered according to the mixed clinical conditions using the cluster analysis techniques. An Artificial Neural Network (ANN) modeling is used to predict the derived clusters by maladaptive personality traits and biological gender. A receiver operating characteristic (ROC) curve was used to identify independent variables with high sensitivity specific to the derived clusters.
The cluster analysis techniques suggested a fully stable and acceptable four-cluster solution for Depressed Poor Sleepers, Nonclinical Good Sleepers, Subclinical Poor Sleepers, and Clinical Poor Sleepers. The ANN model led to the identification of one hidden layer with two hidden units. The results of Area under the ROC Curve were relatively to completely acceptable, ranging from.726 to.855. Anhedonia, perceptual dysregulation, depressivity, anxiousness, and unusual beliefs are the most valuable traits with importance higher than 70%.
The machine learning approach can be well used to predict mixed clinical conditions by maladaptive personality traits. Future research can test the complexity of normal personality traits connected to mixed clinical conditions.
精神病理学研究主要集中在人格与精神障碍之间的横断面和纵向关联,而没有考虑人格在应对环境情况时的即时动态。本研究旨在根据三种混合临床状况(睡眠质量差、抑郁和躯体化)对一个年轻样本进行聚类,并使用深度机器学习方法通过适应不良人格特质和性别差异来预测所得到的聚类。
使用聚类分析技术,根据混合临床状况对来自伊朗西部的839名18至40岁成年人(64%为女性)样本进行聚类。使用人工神经网络(ANN)模型通过适应不良人格特质和生物学性别来预测所得到的聚类。使用受试者工作特征(ROC)曲线来识别对所得到的聚类具有高敏感性的独立变量。
聚类分析技术表明,对于抑郁睡眠差者、非临床良好睡眠者、亚临床睡眠差者和临床睡眠差者,存在一个完全稳定且可接受的四类解决方案。ANN模型导致识别出一个具有两个隐藏单元的隐藏层。ROC曲线下面积的结果相对到完全可接受,范围从0.726到0.855。快感缺失、感知失调、抑郁性、焦虑和异常信念是最重要的特质,重要性高于70%。
机器学习方法可很好地用于通过适应不良人格特质预测混合临床状况。未来的研究可以测试与混合临床状况相关的正常人格特质的复杂性。