Cumming School of Medicine, University of Calgary, Calgary, Alberta, Canada.
Department of Clinical Neurosciences, University of Calgary, Calgary, Alberta, Canada.
Hum Brain Mapp. 2020 Sep;41(13):3749-3764. doi: 10.1002/hbm.25084. Epub 2020 Jun 1.
Parkinson's disease (PD) is characterized by overlapping motor, neuropsychiatric, and cognitive symptoms. Worse performance in one domain is associated with worse performance in the other domains. Commonality analysis (CA) is a method of variance partitioning in multiple regression, used to separate the specific and common influence of collinear predictors. We apply, for the first time, CA to the functional connectome to investigate the unique and common neural connectivity underlying the interface of the symptom domains in 74 non-demented PD subjects. Edges were modeled as a function of global motor, cognitive, and neuropsychiatric scores. CA was performed, yielding measures of the unique and common contribution of the symptom domains. Bootstrap confidence intervals were used to determine the precision of the estimates and to directly compare each commonality coefficient. The overall model identified a network with the caudate nucleus as a hub. Neuropsychiatric impairment accounted for connectivity in the caudate-dorsal anterior cingulate and caudate-right dorsolateral prefrontal-right inferior parietal circuits, while caudate-medial prefrontal connectivity reflected a unique effect of both neuropsychiatric and cognitive impairment. Caudate-precuneus connectivity was explained by both unique and shared influence of neuropsychiatric and cognitive symptoms. Lastly, posterior cortical connectivity reflected an interplay of the unique and common effects of each symptom domain. We show that CA can determine the amount of variance in the connectome that is unique and shared amongst motor, neuropsychiatric, and cognitive symptoms in PD, thereby improving our ability to interpret the data while gaining novel insight into networks at the interface of these symptom domains.
帕金森病(PD)的特征是运动、神经精神和认知症状重叠。一个领域的表现越差,与其他领域的表现越差相关。共通性分析(CA)是多元回归中的一种方差分割方法,用于分离共线性预测因子的特定和共同影响。我们首次将 CA 应用于功能连接体,以研究 74 名非痴呆 PD 患者症状域界面下独特和共同的神经连通性。边缘被建模为全局运动、认知和神经精神评分的函数。进行 CA,得出症状域的独特和共同贡献的度量。使用自举置信区间确定估计值的精度,并直接比较每个共性系数。总体模型确定了以尾状核为枢纽的网络。神经精神障碍解释了尾状核-背侧前扣带和尾状核-右侧背外侧前额叶-右侧下顶叶回路的连通性,而尾状核-内侧前额叶的连通性反映了神经精神和认知障碍的独特影响。尾状核-楔前叶的连通性由神经精神和认知症状的独特和共享影响来解释。最后,皮质后连接反映了每个症状域的独特和共同影响的相互作用。我们表明,CA 可以确定 PD 中运动、神经精神和认知症状的连接体中独特和共享的方差量,从而提高我们解释数据的能力,同时对这些症状域界面的网络获得新的见解。