Machine Learning Approach on Photoplethysmogram Morphology for Psychiatric Disorders Prediction

A. Awang, N. Nayan, N. R. N. Jaafar, Mohd Zubir Suboh, K. A. A. Rahman, Siti Nor Ashikin Ismail
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Abstract

Psychiatric disorders (PDs) interfere with one's functioning and greatly affect a person's quality of life. Prompt diagnosis and intervention at the early stages of these illnesses are important. However, most people are oblivious or unaware of their mental health status as the symptoms may not be easily recognizable. Consequently, complications occur later in life. In this study, a machine learning (ML) approach that distinguishes between case (PD-diagnosed patients) and control (healthy) groups was developed using photoplethysmogram (PPG) morphology. 92 subjects with gender and age-matched PPG data were collected during two phases; baseline and stimulus state of a 10-min experiment. 60 features from PPG morphology were extracted from each phase, and another 30 were obtained from differences between the two phases. A total of 27 out of 90 features exhibited a significant difference. Twelve features extracted by heatmap based on the correlation analysis were fed to five types of ML algorithms: discrimination analysis, k-nearest neighbor, decision tree, support vector machine, and artificial neural network (ANN). The results showed the best performance of 92.86%, 100.00%, and 96.43% for sensitivity, specificity, and accuracy by ANN. Thus, a PD prediction model was developed using machine learning techniques from PPG morphology extraction.
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基于光容积图形态学的机器学习方法预测精神疾病
精神障碍(pd)干扰一个人的功能,并极大地影响一个人的生活质量。在这些疾病的早期阶段及时诊断和干预非常重要。然而,大多数人都没有意识到自己的心理健康状况,因为症状可能不容易识别。因此,并发症发生在生命的后期。在这项研究中,使用光容积描记图(PPG)形态学开发了一种区分病例(pd诊断患者)和对照(健康)组的机器学习(ML)方法。分两个阶段收集了92名性别和年龄匹配的受试者的PPG数据;10分钟实验的基线和刺激状态。每相提取PPG形态的60个特征,从两相的差异中提取另外30个特征。90个特征中有27个表现出显著差异。将基于相关分析的热图提取的12个特征输入到5种ML算法中:判别分析、k近邻、决策树、支持向量机和人工神经网络。结果表明,人工神经网络的敏感性、特异性和准确性分别为92.86%、100.00%和96.43%。因此,利用PPG形态提取的机器学习技术开发了PD预测模型。
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