Analytical study of Parkinson's diagnosis through classification techniques

K. Karthikayani, R. Nandakumar
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Abstract

Nerve Diseases are one of the most important health issues faced by a majority of the population of the world. They can range from as much as a small tooth sensitivity to more complex nervous diseases like Parkinson's disease or Parkinsonism. It is essential to have a frame work that can effectually recognize the prevalence of Parkinsonism in thousands of samples instantaneously. In this paper the potential of nine classification techniques is evaluated for prediction of Parkinsonism. Namely decision tree, naive Bayesian neural network, SVM, ANN, KNN. The proposed algorithm of SVM (support vector machine) employs in Parkinsonism prediction. Using medical profiles such as age, sex, blood pressure, muscle electric activity, EMG Evaluation, it can predict likeliness of patients getting Parkinsonism. Based on this, medical society takes interest in detecting and preventing the nerve disease. From the analysis, it has been proved that classification based techniques contribute high effectiveness and obtain high accuracy when compared to others.
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帕金森病分类诊断的分析研究
神经疾病是世界上大多数人面临的最重要的健康问题之一。它们的范围从小到牙齿敏感到更复杂的神经疾病,如帕金森氏症或帕金森症。重要的是要有一个框架工作,可以有效地识别帕金森病的患病率在成千上万的样本瞬间。本文对九种分类技术在帕金森病预测中的潜力进行了评价。即决策树、朴素贝叶斯神经网络、SVM、ANN、KNN。本文提出的支持向量机(SVM)算法用于帕金森病的预测。利用年龄、性别、血压、肌电活动、肌电图评估等医疗资料,它可以预测患者患帕金森病的可能性。基于此,医学界对神经疾病的检测和预防产生了极大的兴趣。分析表明,与其他方法相比,基于分类的方法具有较高的效率和准确性。
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