A pattern recognition approach based on electrodermal response for pathological mood identification in bipolar disorders

A. Lanatà, A. Greco, G. Valenza, E. Scilingo
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引用次数: 23

Abstract

This paper reports on results of a pattern recognition technique for classifying pathological mental states of bipolar disorders using information gathered from the electrodermal response. The rationale behind this work is that the autonomic nervous system dynamics, non-invasively quantified through the electrodermal response processing, is altered by the specific mood state. Starting from the hypothesis that bipolar disorders are associated with affective dysfunctions, we processed data gathered from four bipolar patients through eleven experimental trials while an ad-hoc emotional stimulation is administered. Intra- and inter-subject variability were investigated. We show that, using a deconvolution-based approach to estimate sympathetic ANS markers and simple k-Nearest Neighbor algorithms, the proposed methodology is able to discern up to three mood states such as depression, hypo-mania, and euthymia with an average intra-subject accuracy greater than 98% and inter-subject accuracy greater than 82%.
基于皮肤电反应的模式识别方法用于双相情感障碍的病理性情绪识别
本文报告了一种模式识别技术的结果,该技术利用从皮肤电反应收集的信息来分类双相情感障碍的病理精神状态。这项工作背后的基本原理是自主神经系统动力学,通过皮电反应处理非侵入性量化,被特定的情绪状态改变。从双相情感障碍与情感功能障碍相关的假设出发,我们通过11项实验试验处理了从4名双相情感障碍患者收集的数据,同时给予特别的情绪刺激。研究了受试者内部和受试者之间的变异性。我们表明,使用基于反卷积的方法来估计交感神经网络标记和简单的k-最近邻算法,所提出的方法能够识别多达三种情绪状态,如抑郁、低躁狂和心境愉悦,平均受试者内准确度大于98%,受试者间准确度大于82%。
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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