Abstract

Depression is a mental disease which symptom is people feel negative about life during long period. With the fast-paced social lifestyle, increasingly stress make people tired toward their life and work. The prevalence rate of depression become higher worldwide. However, the frequent way to detect the depression is depended on the Self-Rating Depression Scale (SDS) and the diagnosis given by the Professional psychologist. Those methods performance is always unstable and inefficiency. Electroencephalogram (EEG) as a functional neuron signal have been widely used in neurology diagnosis. It has been testified as a great tool to diagnose the depression. Deep learning (DL) can extract some latent features from complex data which tradition way cant analyze efficiently. For this reason DL intensely utilized in Medical field.This paper aims to analyze the general and feasible solution of applying deep learning to diagnose depression through EEG signals. It reviews the relevant literature in this field in recent years, summarizes the corresponding methods and breakthroughs used in this paper, and systematically constructs this solution. Finally, based on the shortcomings and deficiencies found in these papers, the main problems that need to be addressed in the future are proposed, and the future potential of this field is discussed.

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