基于纵向网络的大脑灰质核磁共振成像测量与临床相关,对多发性硬化症的治疗效果非常敏感。

IF 4.1 Q1 CLINICAL NEUROLOGY Brain communications Pub Date : 2024-07-29 eCollection Date: 2024-01-01 DOI:10.1093/braincomms/fcae234
Elisa Colato, Jonathan Stutters, Sridar Narayanan, Douglas L Arnold, Jeremy Chataway, Claudia A M Gandini Wheeler-Kingshott, Frederik Barkhof, Olga Ciccarelli, Arman Eshaghi, Declan T Chard
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引用次数: 0

摘要

在多发性硬化症临床试验中,磁共振成像结果测量通常是在全脑水平上提取的,但整个大脑的病理结构并不一致,因此全脑测量可能会忽略区域性治疗效果。独立成分分析等数据驱动方法在识别区域性疾病效应方面已显示出前景,但只能在组水平上计算,无法进行前瞻性应用。这项工作的目的是开发一种技术,从 T1 加权容积磁共振成像中提取个体研究参与者基于纵向独立成分分析网络的共变灰质体积测量值,并评估它们与临床试验中残疾进展和治疗效果的关联。我们使用了八项临床试验中 5089 名多发性硬化症患者(22 045 次就诊)的纵向 MRI 和临床数据。其中包括复发性缓解型、原发性和继发性进展型多发性硬化症患者。我们利用五项阴性临床试验的数据(2764 名参与者,13 222 次就诊)来提取基于独立成分分析的测量值。然后,我们训练并交叉验证了一个最小绝对收缩和选择算子回归模型(可前瞻性地应用于之前未见的数据),以从相同的区域磁共振成像容积测量结果中预测独立成分分析测量结果,并将其应用于三项阳性临床试验的数据(2325 名参与者,8823 次就诊)。我们使用嵌套混合效应模型来确定不同多发性硬化表型的网络如何与残疾进展相关联,并测试对治疗效果的敏感性。我们发现了 17 种一致的区域体积共变模式。在训练队列中,与复发缓解型多发性硬化症患者相比,继发性进展型多发性硬化症患者有四个网络的体积损失更快,原发性进展型多发性硬化症患者有三个网络的体积损失更快。与原发性进展型多发性硬化症相比,继发性进展型多发性硬化症患者四个网络的体积变化更快。在合并阳性试验队列中,八个独立成分分析网络和全脑灰质体积测量显示出治疗效果,基于网络的测量中治疗与安慰剂的差异幅度始终大于全脑灰质体积测量。利用临床试验数据对灰质体积变化进行基于网络的纵向分析是可行的,它显示了多发性硬化表型之间的横截面和纵向差异,与残疾进展和治疗效果相关。要了解这些区域变化的病理机制,还需要今后的工作。
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Longitudinal network-based brain grey matter MRI measures are clinically relevant and sensitive to treatment effects in multiple sclerosis.

In multiple sclerosis clinical trials, MRI outcome measures are typically extracted at a whole-brain level, but pathology is not homogeneous across the brain and so whole-brain measures may overlook regional treatment effects. Data-driven methods, such as independent component analysis, have shown promise in identifying regional disease effects but can only be computed at a group level and cannot be applied prospectively. The aim of this work was to develop a technique to extract longitudinal independent component analysis network-based measures of co-varying grey matter volumes, derived from T1-weighted volumetric MRI, in individual study participants, and assess their association with disability progression and treatment effects in clinical trials. We used longitudinal MRI and clinical data from 5089 participants (22 045 visits) with multiple sclerosis from eight clinical trials. We included people with relapsing-remitting, primary and secondary progressive multiple sclerosis. We used data from five negative clinical trials (2764 participants, 13 222 visits) to extract the independent component analysis-based measures. We then trained and cross-validated a least absolute shrinkage and selection operator regression model (which can be applied prospectively to previously unseen data) to predict the independent component analysis measures from the same regional MRI volume measures and applied it to data from three positive clinical trials (2325 participants, 8823 visits). We used nested mixed-effect models to determine how networks differ across multiple sclerosis phenotypes are associated with disability progression and to test sensitivity to treatment effects. We found 17 consistent patterns of co-varying regional volumes. In the training cohort, volume loss was faster in four networks in people with secondary progressive compared with relapsing-remitting multiple sclerosis and three networks with primary progressive multiple sclerosis. Volume changes were faster in secondary compared with primary progressive multiple sclerosis in four networks. In the combined positive trials cohort, eight independent component analysis networks and whole-brain grey matter volume measures showed treatment effects, and the magnitude of treatment-placebo differences in the network-based measures was consistently greater than with whole-brain grey matter volume measures. Longitudinal network-based analysis of grey matter volume changes is feasible using clinical trial data, showing differences cross-sectionally and longitudinally between multiple sclerosis phenotypes, associated with disability progression, and treatment effects. Future work is required to understand the pathological mechanisms underlying these regional changes.

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