Volume 17 No 3 (2019)
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A Deep Convolution Neural Network Based Model for Identification Depression Using EEG
SUMESHWAR SINGH
Abstract
An upsurge in suicide instances throughout the world is frequently caused by depression. Therefore, a precise
evaluation and counselling are essential to alleviate the consequences of depression. The electrical activity of the
brain is monitored and documented using an electroencephalogram (EEG). It is capable of producing a reliable
evaluation of the degree of depression. Prior investigation established the viability of using deep learning (DL)
models with EEG data to diagnose mental disorder. The patient's behaviour exhibits the signs of depression. As a
result, doctors employ questionnaires and talking sessions as screening methods to determine the severity of
depression. DeprNet is a DL-based Convolutional Neural Network that this research suggests be used to categorise
the EEG data of healthy and depressed patients. The suggested system uses a convolutional neural network as a deep
learning technique. The system was created using an EEG dataset for depression, and it analyses if a subject is
positive, negative, or neutral. The confusion matrix, accuracy, precision, recall, and f1-score are among the
experimental findings
Keywords
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