Lawton Michael, Baig Fahd, Rolinski Michal, Ruffman Claudio, Nithi Kannan, May Margaret T, Ben-Shlomo Yoav, Hu Michele T M
School of Social and Community Medicine, University of Bristol, Bristol, UK.
Nuffield Department of Clinical Neurosciences, Division of Clinical Neurology, University of Oxford, Oxford, UK.
J Parkinsons Dis. 2015;5(2):269-79. doi: 10.3233/JPD-140523.
Within Parkinson's there is a spectrum of clinical features at presentation which may represent sub-types of the disease. However there is no widely accepted consensus of how best to group patients.
Use a data-driven approach to unravel any heterogeneity in the Parkinson's phenotype in a well-characterised, population-based incidence cohort.
769 consecutive patients, with mean disease duration of 1.3 years, were assessed using a broad range of motor, cognitive and non-motor metrics. Multiple imputation was carried out using the chained equations approach to deal with missing data. We used an exploratory and then a confirmatory factor analysis to determine suitable domains to include within our cluster analysis. K-means cluster analysis of the factor scores and all the variables not loading into a factor was used to determine phenotypic subgroups.
Our factor analysis found three important factors that were characterised by: psychological well-being features; non-tremor motor features, such as posture and rigidity; and cognitive features. Our subsequent five cluster model identified groups characterised by (1) mild motor and non-motor disease (25.4%), (2) poor posture and cognition (23.3%), (3) severe tremor (20.8%), (4) poor psychological well-being, RBD and sleep (18.9%), and (5) severe motor and non-motor disease with poor psychological well-being (11.7%).
Our approach identified several Parkinson's phenotypic sub-groups driven by largely dopaminergic-resistant features (RBD, impaired cognition and posture, poor psychological well-being) that, in addition to dopaminergic-responsive motor features may be important for studying the aetiology, progression, and medication response of early Parkinson's.
帕金森病患者在疾病初发时存在一系列临床特征,这些特征可能代表了该疾病的不同亚型。然而,对于如何最佳地对患者进行分组,目前尚无广泛认可的共识。
采用数据驱动的方法,在一个特征明确的基于人群的发病率队列中,揭示帕金森病表型的异质性。
对769例连续患者进行评估,这些患者的平均病程为1.3年,评估指标包括广泛的运动、认知和非运动指标。采用链式方程法进行多重插补以处理缺失数据。我们先进行探索性因素分析,然后进行验证性因素分析,以确定适合纳入聚类分析的领域。对因素得分以及所有未加载到因素中的变量进行K均值聚类分析,以确定表型亚组。
我们的因素分析发现了三个重要因素,其特征分别为:心理健康特征;非震颤性运动特征,如姿势和僵硬;以及认知特征。我们随后的五聚类模型确定了以下几组:(1)轻度运动和非运动疾病(25.4%),(2)姿势和认知较差(23.3%),(3)严重震颤(20.8%),(4)心理健康差、快速眼动睡眠行为障碍和睡眠问题(18.9%),以及(5)严重运动和非运动疾病且心理健康差(11.7%)。
我们的方法识别出了几个由主要抗多巴胺能特征(快速眼动睡眠行为障碍、认知和姿势受损、心理健康差)驱动的帕金森病表型亚组,这些特征除了多巴胺能反应性运动特征外,可能对研究早期帕金森病的病因、进展和药物反应很重要。