中风后失语症中基于连接体的病变-症状映射的度量比较

IF 4.1 Q1 CLINICAL NEUROLOGY
Brain communications Pub Date : 2024-09-12 eCollection Date: 2024-01-01 DOI:10.1093/braincomms/fcae313
Junhua Ding, Melissa Thye, Amelia J Edmondson-Stait, Jerzy P Szaflarski, Daniel Mirman
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引用次数: 0

摘要

基于连接组的病变-症状映射将行为障碍与大脑结构连接的破坏联系起来。基于连接组的病变-症状映射可以基于不同的方法(弥散核磁共振成像与病变掩膜)、网络尺度(全脑与感兴趣区)和测量类型(基于束、基于包裹或基于网络的度量)。我们评估了不同的基于连接组的病变-症状映射处理选择的相似性,并使用多元宇宙分析法确定了影响结果的因素--这种方法是对所有合理的处理选择进行分析并显示结果。在 50 名左半球中风后失语的参与者样本中,测试了病灶掩膜和弥散加权图像得出的指标与波士顿命名测试和令牌测试成绩的关联。直接 "测量值来自弥散加权图像。间接 "测量是通过在白质图谱上叠加病变掩膜得出的。为整个大脑和感兴趣的区域(14 个语言相关区块)构建了基于包裹的连接组。计算了大量基于束和基于网络的指标。不同的处理方法(扩散加权图像与病变掩膜)、网络尺度(全脑与感兴趣区)和度量类型之间存在很大差异。结果表明,不同处理方法之间的相关性较弱,基于连接组的病变-症状映射结果也不同。在进行基于连接组的病变症状映射分析时,需要大量的方法论工作来验证各种决策点。多元宇宙分析是一种有用的策略,可用于评估基于连接组的病变症状映射中不同处理选择的相似性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Metric comparison of connectome-based lesion-symptom mapping in post-stroke aphasia.

Connectome-based lesion-symptom mapping relates behavioural impairments to disruption of structural brain connectivity. Connectome-based lesion-symptom mapping can be based on different approaches (diffusion MRI versus lesion mask), network scales (whole brain versus regions of interest) and measure types (tract-based, parcel-based, or network-based metrics). We evaluated the similarity of different connectome-based lesion-symptom mapping processing choices and identified factors that influence the results using multiverse analysis-the strategy of conducting and displaying the results of all reasonable processing choices. Metrics derived from lesion masks and diffusion-weighted images were tested for association with Boston Naming Test and Token Test performance in a sample of 50 participants with aphasia following left hemispheric stroke. 'Direct' measures were derived from diffusion-weighted images. 'Indirect' measures were derived by overlaying lesion masks on a white matter atlas. Parcel-based connectomes were constructed for the whole brain and regions of interest (14 language-relevant parcels). Numerous tract-based and network-based metrics were calculated. There was a high discrepancy across processing approaches (diffusion-weighted images versus lesion masks), network scales (whole brain versus regions of interest) and metric types. Results indicate weak correlations and different connectome-based lesion-symptom mapping results across the processing choices. Substantial methodological work is needed to validate the various decision points that arise when conducting connectome-based lesion-symptom mapping analyses. Multiverse analysis is a useful strategy for evaluating the similarity across different processing choices in connectome-based lesion-symptom mapping.

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CiteScore
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