Thomas Thebaud, Anna Favaro, Casey Chen, Gabrielle Chavez, Laureano Moro-Velazquez, Ankur Butala, Najim Dehak
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引用次数: 0
摘要
运动变化是帕金森病(PD)和阿尔茨海默病(AD)等神经退行性疾病(ND)的早期征兆,但往往难以检测,尤其是在早期阶段。在这项工作中,我们研究了从 113 名受试者在数字平板电脑上执行多项任务时的手写信号中提取的一系列可解释指标的行为。目的是测量这些指标在表征和评估包括注意力缺失症和帕金森病在内的多种非痴呆症方面的有效性。为此,研究人员从 14 项不同的任务中提取了任务诊断指标和任务特定指标。随后,通过统计分析和一系列分类实验,我们研究了哪些指标在NDs和健康对照组之间以及不同NDs之间具有更强的分辨力。初步结果表明,我们可以有效地利用手头的各种任务来区分所考虑的 NDs,特别是通过测量稳定性、书写速度、不书写所花费的时间以及我们手工制作的可解释度量指标中各组之间的压力变化,多个任务的 p 值均低于 0.0001。
Explainable Metrics for the Assessment of Neurodegenerative Diseases through Handwriting Analysis
Motor changes are early signs of neurodegenerative diseases (NDs) such as
Parkinson's disease (PD) and Alzheimer's disease (AD), but are often difficult
to detect, especially in the early stages. In this work, we examine the
behavior of a wide array of explainable metrics extracted from the handwriting
signals of 113 subjects performing multiple tasks on a digital tablet. The aim
is to measure their effectiveness in characterizing and assessing multiple NDs,
including AD and PD. To this end, task-agnostic and task-specific metrics are
extracted from 14 distinct tasks. Subsequently, through statistical analysis
and a series of classification experiments, we investigate which metrics
provide greater discriminative power between NDs and healthy controls and among
different NDs. Preliminary results indicate that the various tasks at hand can
all be effectively leveraged to distinguish between the considered set of NDs,
specifically by measuring the stability, the speed of writing, the time spent
not writing, and the pressure variations between groups from our handcrafted
explainable metrics, which shows p-values lower than 0.0001 for multiple tasks.
Using various classification algorithms on the computed metrics, we obtain up
to 87% accuracy to discriminate AD and healthy controls (CTL), and up to 69%
for PD vs CTL.