Faculty of Engineering, University of Antioquia UdeA, Medellín, Colombia.
Faculty of Engineering, University of Antioquia UdeA, Medellín, Colombia; Pattern Recognition Lab, Friedrich-Alexander-Universität Erlangen-Nürnberg, Germany.
Comput Methods Programs Biomed. 2019 May;173:43-52. doi: 10.1016/j.cmpb.2019.03.005. Epub 2019 Mar 13.
Parkinson's disease is a neurological disorder that affects the motor system producing lack of coordination, resting tremor, and rigidity. Impairments in handwriting are among the main symptoms of the disease. Handwriting analysis can help in supporting the diagnosis and in monitoring the progress of the disease. This paper aims to evaluate the importance of different groups of features to model handwriting deficits that appear due to Parkinson's disease; and how those features are able to discriminate between Parkinson's disease patients and healthy subjects.
Features based on kinematic, geometrical and non-linear dynamics analyses were evaluated to classify Parkinson's disease and healthy subjects. Classifiers based on K-nearest neighbors, support vector machines, and random forest were considered.
Accuracies of up to 93.1% were obtained in the classification of patients and healthy control subjects. A relevance analysis of the features indicated that those related to speed, acceleration, and pressure are the most discriminant. The automatic classification of patients in different stages of the disease shows κ indexes between 0.36 and 0.44. Accuracies of up to 83.3% were obtained in a different dataset used only for validation purposes.
The results confirmed the negative impact of aging in the classification process when we considered different groups of healthy subjects. In addition, the results reported with the separate validation set comprise a step towards the development of automated tools to support the diagnosis process in clinical practice.
帕金森病是一种影响运动系统的神经退行性疾病,导致运动协调障碍、静止性震颤和僵硬。书写障碍是该疾病的主要症状之一。 handwriting analysis(笔迹分析)可有助于支持诊断,并监测疾病的进展。本文旨在评估不同特征组对于建模因帕金森病而出现的 handwriting deficits(书写缺陷)的重要性;以及这些特征如何能够区分帕金森病患者和健康受试者。
评估了基于运动学、几何和非线性动力学分析的特征,以对帕金森病患者和健康受试者进行分类。考虑了基于 K-最近邻、支持向量机和随机森林的分类器。
在对患者和健康对照受试者的分类中,最高可达 93.1%的准确度。对特征的相关性分析表明,与速度、加速度和压力相关的特征最具判别力。对疾病不同阶段的患者的自动分类显示 κ 指数在 0.36 到 0.44 之间。在仅用于验证目的的不同数据集上,获得了高达 83.3%的准确度。
当考虑不同组的健康受试者时,结果证实了老化对分类过程的负面影响。此外,与单独验证集报告的结果一起,朝着开发自动化工具以支持临床实践中的诊断过程迈出了一步。