Department of Statistics, University of Gujrat, Pakistan.
Department of Management Sciences, University of Gujrat, Pakistan.
Behav Neurol. 2020 Jun 22;2020:2678718. doi: 10.1155/2020/2678718. eCollection 2020.
The present study is aimed at identifying the most prominent determinants of OCD along with their strength to classify the OCD patients from healthy controls. The data for this cross-sectional study were collected from 200 diagnosed OCD patients and 400 healthy controls. The respondents were selected through purposive sampling and interviewed by using the Y-BOCS scale with the addition of a factor, worth of an individual in his family. The validity and reliability of data were assessed through Cronbach's alpha and confirmatory factor analysis. Artificial Neural Network (ANN) modeling was adopted to determine threatening determinants along with their strength to predict OCD in an individual. The results of ANN modeling depicted 98% accurate classification of OCD patients from healthy controls. The most contributing factors in determining the OCD patients according to normalized importance were the contamination and cleaning (100%); symmetric and perfection (72.5%); worth of an individual in the family (71.1%); aggressive, religious, and sexual obsession (50.5%); high-risk assessment (46.0%); and somatic obsessions and checking (24.0%).
本研究旨在确定 OCD 的最主要决定因素及其强度,以便将 OCD 患者与健康对照进行分类。这项横断面研究的数据来自 200 名确诊的 OCD 患者和 400 名健康对照。通过目的抽样选择受访者,并使用 Y-BOCS 量表进行访谈,同时加入了一个家庭中个体价值的因素。通过 Cronbach's alpha 和验证性因子分析评估数据的有效性和可靠性。采用人工神经网络 (ANN) 模型来确定威胁性决定因素及其强度,以预测个体是否患有 OCD。ANN 模型的结果显示,OCD 患者与健康对照的分类准确率达到 98%。根据归一化重要性确定 OCD 患者的最重要因素包括:污染和清洁(100%);对称和完美(72.5%);家庭中个体的价值(71.1%);攻击性、宗教和性痴迷(50.5%);高风险评估(46.0%);躯体痴迷和检查(24.0%)。