Objective Assessment of Depression Using Multiple Physiological Signals

Yuan Long, Yanfei Lin, Zhengbo Zhang, R. Jiang, Zhao Wang
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引用次数: 1

Abstract

At present, the diagnosis of depression in clinical practice mainly relies on the subjective judgment of physicians and patients, and lacks a more objective diagnostic method. Previous studies have proposed that depressed patients have abnormal autonomic nervous system activities and inadequate response under cognitive tasks, which can be objectively assessed using physiological signal features. In this study, Electrocardiographic (ECG) and photoplethysmogram (PPG) signals were collected from 17 depressed patients and 19 healthy controls in resting and task states. Statistical, time-domain, frequency-domain, and non-linear features were extracted. Unlike previous studies, linear fusion and merge fusion were performed on the features of both resting state and task state. LightGBM feature importance was adopted for feature selection, And the LightGBM classification algorithm was used to distinguish depressed patients from healthy controls. The accuracy of the fusion modality for both resting state and task state higher than that of the single modality, such as only rest state, only task state, which can obtain 85.32% accuracy. Conclusions: It is shown that the fusion of resting and task states obtains higher accuracy rate for depression recognition compared with individual resting state and individual task state, that the method of multimodal features based on LightGBM Classifier is effective for depression assessment, and that this study may provide some help in the objective assessment of depression.
目的利用多种生理信号评价抑郁症
目前临床上对抑郁症的诊断主要依靠医生和患者的主观判断,缺乏较为客观的诊断方法。既往研究提出抑郁症患者自主神经系统活动异常,认知任务反应不足,可通过生理信号特征客观评价。本研究采集了17例抑郁症患者和19例健康对照者在静息状态和任务状态下的心电图(ECG)和光电体积描记图(PPG)信号。提取了统计、时域、频域和非线性特征。与以往的研究不同,我们对静息状态和任务状态的特征都进行了线性融合和合并融合。采用LightGBM特征重要性进行特征选择,采用LightGBM分类算法区分抑郁症患者与健康对照。静息状态和任务状态融合模态的准确率均高于仅静息状态、仅任务状态等单一模态,可达到85.32%的准确率。结论:静息状态和任务状态融合对抑郁症的识别准确率高于个体静息状态和个体任务状态,基于LightGBM分类器的多模态特征方法对抑郁症的评估是有效的,本研究可为抑郁症的客观评估提供一定的帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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