Cognitive Phenotyping of Parkinson's Disease Patients Via Digital Analysis of Spoken Word Properties.

IF 7.6 1区 医学 Q1 CLINICAL NEUROLOGY
Franco J Ferrante,Daniel Escobar Grisales,María Fernanda López,Pamela Lopes da Cunha,Lucas Federico Sterpin,Jet M J Vonk,Pedro Chaná Cuevas,Claudio Estienne,Eugenia Hesse,Lucía Amoruso,Juan Rafael Orozco Arroyave,Adolfo M García
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Abstract

BACKGROUND Cognitive symptoms are highly prevalent in Parkinson's disease (PD), often manifesting as mild cognitive impairment (MCI). Yet, their detection and characterization remain suboptimal because standard approaches rely on subjective impressions derived from lengthy, univariate tests. OBJECTIVE We examined whether digital analysis of verbal fluency predicts cognitive status in PD. METHODS We asked 464 Spanish speakers with PD to complete taxonomic (animal), thematic (supermarket), and phonemic (/p/) fluency tasks. We quantified six response properties: semantic variability, granularity, concreteness, length, frequency, and phonological neighborhood. In Study 1, these properties were fed to a ridge regressor to predict Mattis Dementia Rating Scale (MDRS) scores and subscores. In Study 2, we used the same properties to compare (via a generalized linear model) and classify (via random forest) between 123 patients with and 124 without MCI. RESULTS In Study 1, predicted MDRS scores and subscores strongly correlated with actual ones, adjusting for clinical and cognitive variables (R = 0.51, P < 0.001). In Study 2, MCI patients' words were less semantically variable, less concrete, and shorter, adjusting for clinical and cognitive variables (P-values < 0.05). Machine learning discrimination between patients with and without MCI was robust in the validation set (area under the curve [AUC] = 0.76), with good generalization to unseen pre-surgical (AUC = 0.68) and post-surgical (AUC = 0.72) samples, surpassing MDRS scores (AUC = 0.54). Results were consistently driven by semantic variability, granularity, and concreteness. CONCLUSIONS Digital word property analysis predicts cognitive symptom severity and distinguishes between cognitive phenotypes of PD, enabling scalable neuropsychological screenings. © 2025 International Parkinson and Movement Disorder Society.
通过语音特性的数字分析帕金森病患者的认知表型。
认知症状在帕金森病(PD)中非常普遍,通常表现为轻度认知障碍(MCI)。然而,它们的检测和表征仍然不够理想,因为标准方法依赖于从漫长的单变量测试中得出的主观印象。目的探讨言语流畅性的数字分析是否能预测PD患者的认知状态。方法我们让464名西班牙语PD患者完成分类(动物)、主题(超市)和音位(/p/)流畅性任务。我们量化了六个响应属性:语义可变性、粒度、具体性、长度、频率和语音邻域。在研究1中,这些特性被输入脊回归器来预测Mattis痴呆评定量表(MDRS)得分和子得分。在研究2中,我们使用相同的属性来比较(通过广义线性模型)和分类(通过随机森林)123例MCI患者和124例非MCI患者。结果在研究1中,经临床和认知变量调整后,预测MDRS评分和亚评分与实际评分呈强相关(R = 0.51, P < 0.001)。在研究2中,经临床和认知变量调整后,MCI患者的词语语义变量较少,不具体,且较短(p值< 0.05)。机器学习对MCI患者和非MCI患者的区分在验证集中是稳健的(曲线下面积[AUC] = 0.76),对未见的术前(AUC = 0.68)和术后(AUC = 0.72)样本具有良好的泛化性,超过了MDRS评分(AUC = 0.54)。结果始终由语义可变性、粒度和具体性驱动。结论数字词属性分析可预测帕金森病的认知症状严重程度,并可区分帕金森病的认知表型,从而实现可扩展的神经心理学筛查。©2025国际帕金森和运动障碍学会。
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来源期刊
Movement Disorders
Movement Disorders 医学-临床神经学
CiteScore
13.30
自引率
8.10%
发文量
371
审稿时长
12 months
期刊介绍: Movement Disorders publishes a variety of content types including Reviews, Viewpoints, Full Length Articles, Historical Reports, Brief Reports, and Letters. The journal considers original manuscripts on topics related to the diagnosis, therapeutics, pharmacology, biochemistry, physiology, etiology, genetics, and epidemiology of movement disorders. Appropriate topics include Parkinsonism, Chorea, Tremors, Dystonia, Myoclonus, Tics, Tardive Dyskinesia, Spasticity, and Ataxia.
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