In recent years, sensors from smart consumer devices have shown great diagnostic potential in movement disorders. In this context, data modalities such as electronic questionnaires, hand movement and voice captures have successfully captured biomarkers and allowed discrimination between Parkinson's disease (PD) and healthy controls (HC) or differential diagnosis (DD). However, to the best of our knowledge, a comprehensive evaluation of assessments with a multi-modal smart device system has still been lacking. In a prospective study exploring PD, we used smartwatches and smartphones to collect multi-modal data from 504 participants, including PD patients, DD and HC. This study aims to assess the effect of multi-modal vs. single-modal data on PD vs. HC and PD vs. DD classification, as well as on PD group clustering for subgroup identification. We were able to show that by combining various modalities, classification accuracy improved and further PD clusters were discovered.
翻译:近年来,来自智能消费者装置的传感器在运动障碍方面表现出巨大的诊断潜力,在这方面,电子问卷、手动和语音捕捉等数据模式成功地捕捉了生物标记,并允许在帕金森氏病与健康控制(HC)或差异诊断(DD)之间实行歧视。然而,据我们所知,仍然缺乏对具有多模式智能装置系统的评估进行全面评估,在一项探讨PD的展望性研究中,我们利用智能观察和智能手机从504名参与者,包括PD病人、DDD和HC收集多模式数据。这项研究旨在评估多模式数据与单模式数据对PD对HC和PDD分类的影响,以及PD组群群对分组识别的影响。我们通过综合各种模式,发现分类精度提高和进一步的PD组群。