Laboratory LIPI ENS, USMBA Fez, Morocco.
Laboratory LIPI ENS, USMBA Fez, Morocco.
Comput Methods Programs Biomed. 2020 Jan;183:104979. doi: 10.1016/j.cmpb.2019.07.007. Epub 2019 Jul 8.
Parkinson's disease (PD) is the second most common neurodegenerative disease affecting significant portion of elderly population. One of the most frequent hallmarks and the first manifestation of PD is deterioration of handwriting. Since the diagnosis of Parkinson's disease is difficult, researchers have worked to develop a support tool based on algorithms to separate healthy controls from PD patients. On-line handwriting analysis is one of the methods that can be used to diagnose PD. In this study, we aimed to analyze the Arabic Handwriting of 28 Parkinson's disease patients and 28 healthy controls (HCs) who were the same age and have the same intellectual level. We focused on copying an Arabic text task. For each participant we have calculated 1482 features. Based on the most relevant features selected by the Pearson's coefficient correlation, the Hierarchical Ascendant Classification (HAC) was applied and generated 3 clusters of writers. The characterization of these clusters was carried out by using the quantitative and qualitative parameters. The obtained results show that the combination of these two aspects can discriminate at best PD patients from HCs.
帕金森病(PD)是第二常见的影响老年人群体的神经退行性疾病。PD 的最常见特征之一,也是其最早的表现,是笔迹恶化。由于帕金森病的诊断较为困难,研究人员一直在努力开发一种基于算法的支持工具,以便将健康对照组与 PD 患者区分开来。在线笔迹分析是可用于诊断 PD 的方法之一。在这项研究中,我们旨在分析 28 名帕金森病患者和 28 名年龄和智力水平相同的健康对照组(HCs)的阿拉伯语笔迹。我们专注于复制阿拉伯语文本任务。对于每个参与者,我们计算了 1482 个特征。基于 Pearson 系数相关性选择的最相关特征,应用了层次聚类分析(HAC),并生成了 3 组书写者。通过使用定量和定性参数对这些聚类进行了特征描述。结果表明,这两个方面的结合可以最好地区分 PD 患者和 HCs。