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Deep-Asymmetry: Asymmetry Matrix Image for Deep Learning Method in Pre-Screening Depression

Min Kang, Hyunjin Kwon, Jinhyeok Park, Seokhwan Kang, Youngho Lee

2020Sensors71 citationsDOIOpen Access PDF

Abstract

To have an objective depression diagnosis, numerous studies based on machine learning and deep learning using electroencephalogram (EEG) have been conducted. Most studies depend on one-dimensional raw data and required fine feature extraction. To solve this problem, in the EEG visualization research field, short-time Fourier transform (STFT), wavelet, and coherence commonly used as method s for transferring EEG data to 2D images. However, we devised a new way from the concept that EEG's asymmetry was considered one of the major biomarkers of depression. This study proposes a deep-asymmetry methodology that converts the EEG's asymmetry feature into a matrix image and uses it as input to a convolutional neural network. The asymmetry matrix image in the alpha band achieved 98.85% accuracy and outperformed most of the methods presented in previous studies. This study indicates that the proposed method can be an effective tool for pre-screening major depressive disorder patients.

Topics & Concepts

Artificial intelligenceElectroencephalographyComputer sciencePattern recognition (psychology)Feature extractionConvolutional neural networkWaveletDeep learningFeature (linguistics)AsymmetryCoherence (philosophical gambling strategy)Matrix (chemical analysis)PsychologyMathematicsPhysicsStatisticsNeuroscienceQuantum mechanicsMaterials sciencePhilosophyLinguisticsComposite materialEEG and Brain-Computer InterfacesFunctional Brain Connectivity StudiesECG Monitoring and Analysis
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