一种用于帕金森病检测的手写任务分析的高效算法

Sara A. Elazazy, M. Eldesoky, M. El-Wakad, A. Soliman
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引用次数: 1

摘要

帕金森氏症会导致震颤、僵硬、运动迟缓和多巴胺耗竭引起的僵硬。一些诊断测试被用于检测帕金森病,如核磁共振成像和脑电图信号。由于缺乏传统方法,产生结果需要相对较长的时间,而且这些方法大多很昂贵。检测帕金森氏症的新概念依赖于对手写图像的图像处理。在之前的研究中,科学家们发现,在健康病例中,素描率趋于稳定,而在患者病例中,素描率出现不稳定。在本文中,我们使用Radon变换来增强CNN的训练,提高其检测帕金森病的能力。此外,我们使用了各种类型的机器学习分类器,并比较了不同选择的分类器与先前技术之间的准确性。准确度达92.45%,特异性为70.38%,F1评分为88.98%,精密度为87.68%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Algorithm for Analysis of Handwriting Task for the Detection of Parkinson's disease
Parkinson's disease results in tremors, stiffness, bradykinesia, and rigidity due to dopamine depletion. Several diagnostic tests were applied to detect Parkinson's disease such as MRI images and EEG signals. The lack of conventional methods is taking a relatively long time to produce results and These methods are mostly expensive. The new concept to detect Parkinson's disease is depending on the image processing for handwriting images. In previous studies, scientists found that the sketching rate becomes steady in healthy cases and instability appears among patient cases. In this paper, we used Radon Transform to enhance the training of the CNN and increase its ability to detect Parkinson’s. Also, we used various types of machine learning classifiers and the comparing the accuracy between the different selected classifiers and the previous techniques. The accuracy obtained by the proposed technique reached up to 92.45% with 70.38% specificity, 88.98% F1 score , and precision of 87.68% Consequently.
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