An Automated MDD Detection System based on Machine Learning Methods in Smart Connected Healthcare

G. Sharma, A. Joshi, E. Pilli
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引用次数: 5

Abstract

Electroencephalography (EEG)-based depression detection in the early stage is a very challenging and important research area in artificial intelligence as it can save the lives of several people. This paper presents EEG-based machine learning models involving 30 healthy subjects and 33 major depressive disorder (MDD) subjects to diagnose MDD. The model with the best performance has been evaluated on the Internet of Medical Things (IoMT) framework for smart healthcare. The main idea behind this study is to recognize features and classifiers which can best discriminate the healthy and depressive subjects. This study has three main steps of analysis: 1) Linear, non-linear, fractal dimension, statistical, time, coherence features have been extracted from EEG signals. Their effects are investigated, and quality features are identified. 2) Three feature selection methods, Principle component analysis (PCA), Neighbourhood component analysis (NBA), and Relief-based algorithm (RBA), are utilized for the selection of most relevant features, and their performance is compared. 3) For discriminating normal and depressed subjects, radial-basis function (RBF) based support vector machine (SVM), K- nearest neighbor (KNN), logistic regression (LR), decision tree (DT), naïve Bayes classification (NBC), bagged tree (BT) and linear discriminant analysis (LDA) classifier are used. This paper concludes that non-linear features with an RBF-SVM classifier achieve the best classification accuracy of 98.90%. The findings in this study are utilized to develop a model to detect depression in remote applications and smart healthcare.
智能互联医疗中基于机器学习方法的MDD自动检测系统
基于脑电图(EEG)的早期抑郁症检测是人工智能领域一个非常具有挑战性和重要的研究领域,因为它可以挽救许多人的生命。本文建立了基于脑电图的机器学习模型,对30名健康受试者和33名重度抑郁障碍(MDD)受试者进行诊断。在智能医疗的医疗物联网(IoMT)框架下,对性能最好的模型进行了评估。本研究的主要思想是识别最能区分健康和抑郁受试者的特征和分类器。本研究主要分三个步骤进行分析:1)提取脑电信号的线性、非线性、分形维数、统计、时间、相干特征。研究了它们的作用,并确定了质量特征。2)利用主成分分析(PCA)、邻域成分分析(NBA)和基于浮雕的算法(RBA)三种特征选择方法选择相关度最高的特征,并对其性能进行比较。3)区分正常和抑郁受试者,采用基于径向基函数(RBF)的支持向量机(SVM)、K近邻(KNN)、逻辑回归(LR)、决策树(DT)、naïve贝叶斯分类(NBC)、袋树(BT)和线性判别分析(LDA)分类器。结果表明,非线性特征与RBF-SVM分类器的分类准确率最高,达到98.90%。本研究的结果被用于开发一个模型来检测远程应用和智能医疗中的抑郁症。
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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