Neurodegenerative disorder diagnosis using support vector machine and Naive bayes algorithms

Raziya Begum, M. R. Narasingarao, Niranjan Polala
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Abstract

The radical change of brain cells that causes dopamine, a component that allows brain cells to exchange information with one another, causes Parkinson's disease. Control, adaptation, and fluency of movement are all controlled by dopamine-producing cells in the brain. To reduce this production of dopamine, these cells should die at least 50%, resulting in Parkinson's motor symptoms. The diagnosis of Parkinson's disease using SVM and Navie bayes algorithms is presented in this paper. A feature selection and classification process is used in the proposed diagnosis method. In the experiments, the classification of diseased was done using Classification algorithms and Regression algorithms and Support Vector Machines. Our results compared Support Vector Machines with Feature Extraction outperformed the Naïve bayes. With the fewest number of features, 81.77 percent accuracy in Parkinson's diagnosis was achieved. This research work has preprocessed the dataset worked on Parkinson's Progression Markers Initiative (PPMI) and then used one of the classification methods, Support Vector Machine (SVM), to distinguish people with Parkinson's disease from healthy people. This article explained, how the ROC curve changes as the number of cross validation folds increases, as well as how the value of true positive and false positive rates changes.
神经退行性疾病的支持向量机与朴素贝叶斯诊断
脑细胞的剧烈变化导致多巴胺的产生,多巴胺是一种允许脑细胞相互交换信息的成分,导致帕金森病。运动的控制、适应和流畅性都是由大脑中产生多巴胺的细胞控制的。为了减少多巴胺的产生,这些细胞至少要死亡50%,从而导致帕金森病的运动症状。本文提出了基于支持向量机和纳维贝叶斯算法的帕金森病诊断方法。所提出的诊断方法采用特征选择和分类过程。在实验中,采用分类算法、回归算法和支持向量机对病变进行分类。我们的结果比较支持向量机与特征提取优于Naïve贝叶斯。以最少的特征,帕金森病的诊断准确率达到81.77%。本研究在帕金森进展标记计划(PPMI)上对数据集进行预处理,然后使用支持向量机(SVM)作为分类方法之一,将帕金森病患者与健康人区分开来。本文解释了ROC曲线如何随着交叉验证折叠数的增加而变化,以及真阳性率和假阳性率的值如何变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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