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A New Approach to Diagnose Parkinsons Disease Using a Structural Cooccurrence Matrix for a Similarity Analysis

机译:结构同现矩阵用于帕金森氏病诊断相似性的新方法

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摘要

Parkinson's disease affects millions of people around the world and consequently various approaches have emerged to help diagnose this disease, among which we can highlight handwriting exams. Extracting features from handwriting exams is an important contribution of the computational field for the diagnosis of this disease. In this paper, we propose an approach that measures the similarity between the exam template and the handwritten trace of the patient following the exam template. This similarity was measured using the Structural Cooccurrence Matrix to calculate how close the handwritten trace of the patient is to the exam template. The proposed approach was evaluated using various exam templates and the handwritten traces of the patient. Each of these variations was used together with the Naïve Bayes, OPF, and SVM classifiers. In conclusion the proposed approach was proven to be better than the existing methods found in the literature and is therefore a promising tool for the diagnosis of Parkinson's disease.
机译:帕金森氏病影响着全球数百万人,因此出现了各种方法来帮助诊断这种疾病,其中我们可以重点介绍手写检查。从手写检查中提取特征是计算领域对这种疾病的诊断的重要贡献。在本文中,我们提出一种方法来测量检查模板与遵循该检查模板的患者手写迹线之间的相似性。使用结构同现矩阵来测量这种相似性,以计算患者的手写痕迹与检查模板的距离。使用各种检查模板和患者的手写痕迹对提出的方法进行了评估。这些变体中的每一个都与朴素贝叶斯,OPF和SVM分类器一起使用。总之,事实证明,所提出的方法优于文献中的现有方法,因此是诊断帕金森氏病的有前途的工具。

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