基于机器学习的精神分裂症患者诊断

Nadezhda Shanarova, M. Pronina, M. Lipkovich, J. Kropotov
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引用次数: 0

摘要

精神分裂症是一种严重的精神疾病,它会显著降低生活质量。为了减轻长期的负面影响,早期治疗非常重要。正因为如此,精神分裂症的可靠诊断才引起了人们的极大兴趣。本文设计了一种基于机器学习的精神分裂症诊断方法。分类模型应用于从执行视觉提示Go-NoGo任务的患者和健康受试者的脑电图(EEG)记录中计算的事件相关电位(erp)。样本由200名成年人组成,年龄在18岁到50岁之间。为了应用机器学习模型,从erp中提取了各种特征。特征提取过程通过一个特殊的程序参数化,并通过网格搜索技术和模型超参数选择该过程的参数。在特征提取之后进行序列特征选择变换,防止过倾斜,降低计算复杂度。在得到的特征集上训练支持向量机和随机森林模型。最佳模型的灵敏度和特异性分别为91%和91.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning based diagnostics of schizophrenia patients
Schizophrenia is a major psychiatric disorder which significantly reduces the quality of life. Early treatment is extremely important in order to mitigate the long-term negative effects. Because of that, reliable diagnosis of schizophrenia is of big interest. In this paper, machine learning based diagnostics of schizophrenia is designed. Classification models are applied to event-related potentials (ERPs) calculated from electroencephalo-gram (EEG) records of patients and healthy subjects performing modification of the visual cued Go-NoGo task. The sample consisted of 200 adult individuals, with an age ranging between 18 and 50 years. In order to apply machine learning models various features are extracted from ERPs. Process of feature extraction is parametrized through a special procedure and parameters of this procedure are selected through a grid-search technique along with model hyperparameters. Feature extraction is followed by Sequential Feature Selection transformation in order to prevent overtitting and reduce computational complexity. Support vector machines and Random Forest models are trained on the resulting feature set. Sensitivity and specificity of the best model are 91% and 91.7% respectively.
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