用于精神分裂症检测的机器学习分类器集成

H. Raji-Lawal, A. Oloyede, O. Aiyeniko, P.E. Ishola, T.T. Ajagbe, A. Abayomi-Alli
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引用次数: 0

摘要

精神分裂症的特点是行为怪异,言语怪异,理解现实的能力下降。精神分裂症的诊断需要全面而详细的医学检查。机器学习还帮助计算机科学家利用神经成像数据对精神分裂症进行分类和诊断。本研究恳求使用计算机辅助诊断对精神分裂症的神经影像资料进行分类。该数据集包含86个实例,其中包括40名精神分裂症患者,46名健康患者和32个变量。它们从Kaggle MLSF 2014分类挑战中获得,并由于体积小而使用合成少数过采样技术(SMOTE)进行增强。这产生了一个包含1806个实例的更大的数据集。利用机器学习算法支持向量机、k近邻、逻辑回归、Naïve贝叶斯、人工神经网络对增强数据集进行分类。用350例进行训练(70%),用150例进行检验(30%),KNN和SVM正确分类162例为精神分裂症患者,正确分类188例为健康对照组,Tree正确分类159例为精神分裂症,错误分类3例为精神分裂症,正确分类185例为健康对照组,错误分类3例为健康对照组,Logistic回归正确分类139例为精神分裂症,错误分类23例为精神分裂症。正确分类健康170例,错误分类健康对照18例;正确分类精神分裂症139例,错误分类精神分裂症23例;正确分类健康166例,错误分类健康对照22例。ANN使用了549个实例,其中60%用于训练,20%用于测试,20%用于验证,准确率达到100%,是最好的分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ENSEMBLE OF MACHINE LEARNING CLASSIFIERS FOR SCHIZOPHRENIA DETECTION
Schizophenia disease is characterized by odd behavior, weird speech and decreased capacity to apprehend reality. The diagnosis of schizophrenia requires a complete and detailed medical examination. Machine learning has also helped computer scientists to classify and diagnose schizophrenia using neuroimaging data. This research implored the use of computer aided diagnosis to classify neuroimaging data of schizophrenia. The dataset of 86 instances which include 40 schizophenia patients, 46 healthy patients and 32 variable. They were obtained from Kaggle MLSF 2014 classification challenge and augmented due to small sized using synthetic minority oversampling technique (SMOTE). This yielded a larger data set of 1806 instances. The augmented data set were classified using machine learning algorithms support vector machine, K-neareast neighbours, logistic regression, Naïve bayes, artificial neural network. 350 instances was used for the training (70%) and 150 instances was used for testing (30%), KNN and SVM correctly classified 162 as Schizophrenia patients and classified 188 as healthy control, Tree correctly classified 159 as schizophrenia, mis-classified 3 as schizophrenia, correctly classified 185 as healthy and mis-classified 3 as healthy control, Logistic Regression correctly classified 139 as schizophrenia, mis-classified 23 as schizophrenia, correctly classified 170 as healthy and mis-classified 18 as healthy control, Naive Bayes correctly classified 139 as schizophrenia, mis- classified 23 as schizophrenia, correctly classified 166 as healthy and mis-classified 22 as healthy control. ANN used 549instances, 60% for training, 20% for testing and 20% for validation got an accuracy of 100%, this makes it the best classification method.
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