EEG-derived brainwave patterns for depression diagnosis via hybrid machine learning and deep learning frameworks.

IF 1.4 4区 心理学 Q4 CLINICAL NEUROLOGY
Nitin Ahire
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Abstract

In the fields of engineering, science, technology, and medicine, artificial intelligence (AI) has made significant advancements. In particular, the application of AI techniques in medicine, such as machine learning (ML) and deep learning (DL), is rapidly growing and offers great potential for aiding physicians in the early diagnosis of illnesses. Depression, one of the most prevalent and debilitating mental illnesses, is projected to become the leading cause of disability worldwide by 2040. For early diagnosis, a patient-friendly, cost-effective approach based on readily observable and objective indicators is essential. The objective of this research is to develop machine learning and deep learning techniques that utilize electroencephalogram (EEG) signals to diagnose depression. Different statistical features were extracted from the EEG signals and fed into the models. Three classifiers were constructed: 1D Convolutional Neural Network (1DCNN), Support Vector Machine (SVM), and Logistic Regression (LR). The methods were tested on a dataset comprising EEG signals from 34 patients with Major Depressive Disorder (MDD) and 30 healthy subjects. The signals were collected under three distinct conditions: TASK, when the subject was performing a task; Eye Close (EC), when the subject's eyes were closed; and Eye Open (EO), when the subject's eyes were open. All three classifiers were applied to each of the three types of signals, resulting in nine (3 × 3) experiments. The results showed that TASK signals yielded the highest accuracies of 88.4%, 89.3%, and 90.21% for LR, SVM, and 1DCNN, respectively, compared to EC and EO signals. Additionally, the proposed methods outperformed some state-of-the-art approaches. These findings highlight the potential of EEG-based approaches for the clinical diagnosis of depression and provide promising avenues for further research. Additionally, the proposed methodology demonstrated statistically significant improvements in classification accuracy, with p-values < 0.05, ensuring robustness and reliability.

通过混合机器学习和深度学习框架对抑郁症诊断的脑电图衍生脑电波模式。
在工程、科学、技术和医学领域,人工智能(AI)取得了重大进展。特别是,人工智能技术在医学上的应用,如机器学习(ML)和深度学习(DL),正在迅速发展,并为帮助医生早期诊断疾病提供了巨大的潜力。抑郁症是最普遍和最令人衰弱的精神疾病之一,预计到2040年将成为全球致残的主要原因。对于早期诊断,基于易于观察和客观指标的对患者友好且具有成本效益的方法至关重要。本研究的目的是开发利用脑电图(EEG)信号诊断抑郁症的机器学习和深度学习技术。从脑电信号中提取不同的统计特征并将其输入到模型中。构建了三种分类器:一维卷积神经网络(1DCNN)、支持向量机(SVM)和逻辑回归(LR)。这些方法在包含34名重度抑郁症患者和30名健康受试者的脑电图信号的数据集上进行了测试。在三种不同的情况下收集信号:任务,当受试者执行任务时;Eye Close (EC),受试者的眼睛闭上;以及睁开眼睛(EO),即受试者睁开眼睛的时候。所有三种分类器分别应用于三种类型的信号,进行了9次(3 × 3)实验。结果表明,与EC和EO信号相比,TASK信号在LR、SVM和1DCNN上的准确率分别为88.4%、89.3%和90.21%。此外,所提出的方法优于一些最先进的方法。这些发现突出了基于脑电图的方法在抑郁症临床诊断中的潜力,并为进一步的研究提供了有希望的途径。此外,所提出的方法在分类精度上有统计学上显著的提高,p值< 0.05,保证了稳健性和可靠性。
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来源期刊
Applied Neuropsychology-Adult
Applied Neuropsychology-Adult CLINICAL NEUROLOGY-PSYCHOLOGY
CiteScore
4.50
自引率
11.80%
发文量
134
期刊介绍: pplied Neuropsychology-Adult publishes clinical neuropsychological articles concerning assessment, brain functioning and neuroimaging, neuropsychological treatment, and rehabilitation in adults. Full-length articles and brief communications are included. Case studies of adult patients carefully assessing the nature, course, or treatment of clinical neuropsychological dysfunctions in the context of scientific literature, are suitable. Review manuscripts addressing critical issues are encouraged. Preference is given to papers of clinical relevance to others in the field. All submitted manuscripts are subject to initial appraisal by the Editor-in-Chief, and, if found suitable for further considerations are peer reviewed by independent, anonymous expert referees. All peer review is single-blind and submission is online via ScholarOne Manuscripts.
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