On the Application of Metaheuristics and Deep Wavelet Scattering Decompositions for the Prediction of Adolescent Psychosis Using EEG Brain Wave Signals

E. Nsugbe
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引用次数: 8

Abstract

Schizophrenia is a common psychotic disorder which affects a substantial amount of the population, where the paranoid variant is viewed as the most common form of the disorder. This form of psychosis has been seen to affect both adults and adolescents; where in the case of adolescents, it is increasingly challenging to diagnose with traditional means involving clinical interviews. The use of electroencephalography (EEG) signals has proven to be an effective means of non-invasively diagnosing brain disorders, alongside having the ability to mitigate any form of subjective bias from the diagnosis process. This paper explores the use of acquired EEG signals, metaheuristics and deep wavelet scattering decomposition, and a combination of supervised and unsupervised learning, for the automated prediction of adolescent schizophrenia. The results showed the best accuracy for the metaheuristic decomposition alongside the candidate learning methods, in the region of 95%+ across the various classification metrics, which showcases an enhanced means of prediction of adolescent schizophrenia. Further work would now explore the use of Long ShortTerm Memory and Convolution Neural Networks to investigate the classification performances.
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元启发式与深度小波散射分解在脑电波信号预测青少年精神病中的应用
精神分裂症是一种常见的精神障碍,影响了相当数量的人群,其中偏执变体被视为最常见的疾病形式。这种形式的精神病已被发现影响成年人和青少年;而在青少年的情况下,用包括临床访谈在内的传统手段进行诊断越来越具有挑战性。脑电图(EEG)信号的使用已被证明是一种非侵入性诊断脑部疾病的有效手段,同时具有减轻诊断过程中任何形式的主观偏见的能力。本文探讨了利用获取的脑电信号、元启发式和深度小波散射分解,以及监督学习和无监督学习相结合的方法对青少年精神分裂症的自动预测。结果显示,在各种分类指标中,元启发式分解和候选学习方法的准确率最高,在95%以上的范围内,这表明了一种增强的预测青少年精神分裂症的方法。进一步的工作将探索使用长短期记忆和卷积神经网络来研究分类性能。
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