LightFFNet:脑电图定量生物标志物的MDD预测

U. Shukla, Shreeya Garg
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引用次数: 0

摘要

重度抑郁症(MDD)是一个全球性问题,每年受其困扰的人数正以惊人的速度增加。脑电图(EEG)在诊断重度抑郁症中的作用已显示出潜在的激增。为了设计一种通过脑电图作为主要分析工具来自动诊断重度抑郁症的方法,已经进行了许多研究。然而,大多数方法依赖于机器学习和深度神经网络工具的应用。这些在很大程度上依赖于带注释的EEG信号进行训练,这需要训练有素的专业人员进行数据生成。此外,其实现的时间和内存复杂性是巨大的。针对这些挑战,本文设计了一种使用谱聚类检测MDD的方法。对原始脑电图进行预处理,从原始脑电图信号中提取3个定量生物指标:波段功率(δ、β、θ波段功率)和3个非线性信号提取特征。信道分析和半球分析已经进行,以了解交叉半球之间的相关性和依赖性。测试和验证了该解决方案的效率和有效性,与其他现有设计相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LightFFNet: MDD Prediction on EEG Quantitative Biomarkers
Major depressive disorder (MDD) is a global issue and every year the number of people suffering, is increasing at an alarming rate. The role of electroencephalography (EEG) in diagnosing MDD has shown a potential surge. Many studies have been carried out for designing an automated approach to the diagnosis of MDD through EEG as a primary tool of analysis. However, most of the methodologies depend on machine learning and the application of deep neural network tools. These heavily depend on the annotated EEG signals for training, which requires trained professional for data generation. In addition, the time and memory complexity of its implementations are huge. With these challenges, the article designs an approach for the detection of MDD using spectral clustering. The raw EEG is pre-processed, and then three quantitative biomarkers: band power (delta, beta, and theta band power, and three non-linear signal extracted features have been extracted from raw EEG signals. Channel-wise and hemisphere-wise analyses have been conducted to understand the correlation and reliance among the cross-hemisphere. The efficiency and effectiveness of the solution on par with the other existing design are tested and validated.
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