An Early Detection of Parkinson’s Disease from Geometric Drawings

Vishal Nandan Medhi, Kaustav Moni Basumatary, R. Murugan, Tripti Goel
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Abstract

Parkinson’s disease (PD) is a sensory system issue that may prompt shaking, firmness and trouble in strolling. Hence, it is a non-communicable disease; hence, proper diagnosis will prevent further damage to the body at an early stage. Most of the symptoms occur due to a decrease in the dopamine level in the patient’s body. Literature has shown that it is feasible to distinguish PD by requesting that the patient draw a spiral or wave and track their drawing and pen pressure speed afterward. The drawing speed is increasingly slow pen pressure is lower for an individual having the PD. The methodology uses the Histogram of Oriented Gradients (HOG) as the feature descriptor and proposed the weighted Random Forest (WRF) classifier technique. HOG will track the intensity changes in the images, and the WRF works with a small dataset to provide effective results. This strategy provides a very good testing accuracy of 93% and 92% on the wave and spiral datasets. This method is a very robust and cost-effective method for the early detection of PD.
从几何图形中早期发现帕金森病
帕金森氏症(PD)是一种感觉系统问题,可能会引起颤抖、僵硬和行走困难。因此,它是非传染性疾病;因此,正确的诊断可以在早期阶段防止对身体的进一步损害。大多数症状是由于患者体内多巴胺水平下降引起的。文献表明,通过要求患者画一个螺旋或波浪,并跟踪他们的画和笔的压力速度来区分PD是可行的。绘画速度越来越慢,对于患有PD的人来说,笔压更低。该方法采用定向梯度直方图(HOG)作为特征描述符,提出加权随机森林(WRF)分类器技术。HOG将跟踪图像中的强度变化,而WRF使用小数据集来提供有效的结果。该策略在波浪和螺旋数据集上的测试精度分别为93%和92%。该方法是一种非常可靠和经济的PD早期检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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