The Influence of Cerebrovascular Pathology on Cluster Analysis of Neuropsychological Scores in Patients With Mild Cognitive Impairment.

Kristoffer Romero, Natalia Ladyka-Wojcik, Arjan Heir, Buddhika Bellana, Larry Leach, Guy B Proulx
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Abstract

Objectives: The diagnostic entity of mild cognitive impairment (MCI) is heterogeneous, highlighting the need for data-driven classification approaches to identify patient subgroups. However, these approaches can be strongly determined by sample characteristics and selected measures. Here, we applied a cluster analysis to an MCI patient database from a neuropsychology clinic to determine whether the inclusion of patients with MCI with vascular pathology would result in a different classification of subgroups.

Methods: Participants diagnosed with MCI (n = 166), vascular cognitive impairment-no dementia (n = 26), and a group of older adults with subjective cognitive concerns but no objective impairment (n = 144) were assessed using a full neuropsychological battery and other clinical measures. Cognitive measures were analyzed using a hierarchical cluster analysis and then a k-means approach, with resulting clusters compared on a range of demographic and clinical variables.

Results: We found a 4-factor solution: a cognitively intact cluster, a globally impaired cluster, an amnestic/visuospatial impairment cluster, and a mild, mixed-domain cluster. Interestingly, group differences in self-reported multilingualism emerged in the derived clusters that were not observed when comparing diagnostic groups.

Conclusions: Our results were generally consistent with previous studies using cluster analysis in MCI. Including patients with primarily cerebrovascular disease resulted in subtle differences in the derived clusters and revealed new insights into shared cognitive profiles of patients beyond diagnostic categories. These profiles should be further explored to develop individualized assessment and treatment approaches.

脑血管病理对轻度认知障碍患者神经心理评分聚类分析的影响。
目的:轻度认知障碍(MCI)的诊断实体是异构的,强调需要数据驱动的分类方法来识别患者亚组。然而,这些方法可以强烈地由样本特征和选择的措施决定。在这里,我们对来自神经心理学诊所的MCI患者数据库进行了聚类分析,以确定纳入伴有血管病理的MCI患者是否会导致不同的亚组分类。方法:使用完整的神经心理学电池和其他临床测量对诊断为轻度认知障碍(n = 166),血管性认知障碍-无痴呆(n = 26)和一组有主观认知问题但无客观障碍的老年人(n = 144)进行评估。使用分层聚类分析和k-means方法对认知测量进行分析,并根据一系列人口统计学和临床变量对所得聚类进行比较。结果:我们发现了一个四因素的解决方案:认知完整的集群,整体受损的集群,遗忘/视觉空间障碍集群,以及轻度,混合域集群。有趣的是,自我报告的多语言能力的群体差异出现在衍生集群中,而在比较诊断组时没有观察到这一点。结论:我们的结果与先前在MCI中使用聚类分析的研究基本一致。将主要患有脑血管疾病的患者包括在内,在衍生的聚类中产生了微妙的差异,并揭示了对诊断类别之外患者的共同认知概况的新见解。这些特点应进一步探讨,以制定个性化的评估和治疗方法。
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