García Adolfo M, Arias-Vergara Tomás, C Vasquez-Correa Juan, Nöth Elmar, Schuster Maria, Welch Ariane E, Bocanegra Yamile, Baena Ana, Orozco-Arroyave Juan R
Cognitive Neuroscience Center, Universidad de San Andrés, Buenos Aires, Argentina.
National Scientific and Technical Research Council (CONICET), Buenos Aires, Argentina.
Mov Disord. 2021 Dec;36(12):2862-2873. doi: 10.1002/mds.28751. Epub 2021 Aug 14.
Dysarthric symptoms in Parkinson's disease (PD) vary greatly across cohorts. Abundant research suggests that such heterogeneity could reflect subject-level and task-related cognitive factors. However, the interplay of these variables during motor speech remains underexplored, let alone by administering validated materials to carefully matched samples with varying cognitive profiles and combining automated tools with machine learning methods.
We aimed to identify which speech dimensions best identify patients with PD in cognitively heterogeneous, cognitively preserved, and cognitively impaired groups through tasks with low (reading) and high (retelling) processing demands.
We used support vector machines to analyze prosodic, articulatory, and phonemic identifiability features. Patient groups were compared with healthy control subjects and against each other in both tasks, using each measure separately and in combination.
Relative to control subjects, patients in cognitively heterogeneous and cognitively preserved groups were best discriminated by combined dysarthric signs during reading (accuracy = 84% and 80.2%). Conversely, patients with cognitive impairment were maximally discriminated from control subjects when considering phonemic identifiability during retelling (accuracy = 86.9%). This same pattern maximally distinguished between cognitively spared and impaired patients (accuracy = 72.1%). Also, cognitive (executive) symptom severity was predicted by prosody in cognitively preserved patients and by phonemic identifiability in cognitively heterogeneous and impaired groups. No measure predicted overall motor dysfunction in any group.
Predominant dysarthric symptoms appear to be best captured through undemanding tasks in cognitively heterogeneous and preserved cohorts and through cognitively loaded tasks in patients with cognitive impairment. Further applications of this framework could enhance dysarthria assessments in PD. © 2021 International Parkinson and Movement Disorder Society.
帕金森病(PD)的构音障碍症状在不同队列中差异很大。大量研究表明,这种异质性可能反映个体水平和任务相关的认知因素。然而,在运动言语过程中这些变量之间的相互作用仍未得到充分探索,更不用说通过对认知特征不同但经过仔细匹配的样本使用经过验证的材料,并将自动化工具与机器学习方法相结合来进行研究了。
我们旨在通过低(阅读)和高(复述)处理要求的任务,确定哪些言语维度最能在认知异质性、认知保留和认知受损组中识别出帕金森病患者。
我们使用支持向量机来分析韵律、发音和音素可识别性特征。在两项任务中,分别单独使用和组合使用每种测量方法,将患者组与健康对照受试者进行比较,并在患者组之间相互比较。
相对于对照受试者,在阅读过程中,通过组合构音障碍体征,认知异质性和认知保留组的患者最容易被区分出来(准确率分别为84%和80.2%)。相反,在复述过程中考虑音素可识别性时,认知受损患者与对照受试者之间的区分度最大(准确率为86.9%)。同样的模式在认知未受损和受损患者之间的区分度最大(准确率为72.1%)。此外,在认知保留的患者中,韵律可预测认知(执行)症状的严重程度,在认知异质性和受损组中,音素可识别性可预测认知(执行)症状的严重程度。没有任何测量方法能够预测任何组中的整体运动功能障碍。
在认知异质性和保留的队列中,通过要求较低的任务,以及在认知受损的患者中通过认知负荷较高的任务,似乎能够最好地捕捉主要的构音障碍症状。该框架的进一步应用可以加强帕金森病中构音障碍的评估。© 2021国际帕金森和运动障碍协会。