Distinct spatiotemporal atrophy patterns in corticobasal syndrome are associated with different underlying pathologies.

IF 4.5 Q1 CLINICAL NEUROLOGY Brain communications Pub Date : 2025-02-11 eCollection Date: 2025-01-01 DOI:10.1093/braincomms/fcaf066
William J Scotton, Cameron Shand, Emily G Todd, Martina Bocchetta, Christopher Kobylecki, David M Cash, Lawren VandeVrede, Hilary W Heuer, Annelies Quaegebeur, Alexandra L Young, Neil Oxtoby, Daniel Alexander, James B Rowe, Huw R Morris, Adam L Boxer, Jonathan D Rohrer, Peter A Wijeratne
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Abstract

Although the corticobasal syndrome was originally most closely linked with the pathology of corticobasal degeneration, the 2013 Armstrong clinical diagnostic criteria, without the addition of aetiology-specific biomarkers, have limited positive predictive value for identifying corticobasal degeneration pathology in life. Autopsy studies demonstrate considerable pathological heterogeneity in corticobasal syndrome, with corticobasal degeneration pathology accounting for only ∼50% of clinically diagnosed individuals. Individualized disease stage and progression modelling of brain changes in corticobasal syndrome may have utility in predicting this underlying pathological heterogeneity, and in turn improve the design of clinical trials for emerging disease-modifying therapies. The aim of this study was to jointly model the phenotypic and temporal heterogeneity of corticobasal syndrome, to identify unique imaging subtypes based solely on a data-driven assessment of MRI atrophy patterns and then investigate whether these subtypes provide information on the underlying pathology. We applied Subtype and Stage Inference, a machine learning algorithm that identifies groups of individuals with distinct biomarker progression patterns, to a large cohort of 135 individuals with corticobasal syndrome (52 had a pathological or biomarker defined diagnosis) and 252 controls. The model was fit using volumetric features extracted from baseline T1-weighted MRI scans and then used to subtype and stage follow-up scans. The subtypes and stages at follow-up were used to validate the longitudinal consistency of the baseline subtype and stage assignments. We then investigated whether there were differences in associated pathology and clinical phenotype between the subtypes. Subtype and Stage Inference identified at least two distinct and longitudinally stable spatiotemporal subtypes of atrophy progression in corticobasal syndrome; four-repeat-tauopathy confirmed cases were most commonly assigned to the Subcortical subtype (83% of individuals with progressive supranuclear palsy pathology and 75% of individuals with corticobasal-degeneration pathology), whilst those with Alzheimer's pathology were most commonly assigned to the Fronto-parieto-occipital subtype (81% of individuals). Subtype assignment was stable at follow-up (98% of cases), and individuals consistently progressed to higher stages (100% stayed at the same stage or progressed), supporting the model's ability to stage progression. By jointly modelling disease stage and subtype, we provide data-driven evidence for at least two distinct and longitudinally stable spatiotemporal subtypes of atrophy in corticobasal syndrome that are associated with different underlying pathologies. In the absence of sensitive and specific biomarkers, accurately subtyping and staging individuals with corticobasal syndrome at baseline has important implications for screening on entry into clinical trials, as well as for tracking disease progression.

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皮质基底层综合征不同的时空萎缩模式与不同的潜在病理有关。
虽然皮质基底综合征最初与皮质基底变性的病理关系最为密切,但2013年的Armstrong临床诊断标准,由于没有添加病因特异性生物标志物,对生活中识别皮质基底变性病理的阳性预测价值有限。尸检研究显示基底皮质综合征的病理异质性,基底皮质变性病理仅占临床诊断个体的50%。皮质基底综合征患者大脑变化的个体化疾病分期和进展模型可能有助于预测这种潜在的病理异质性,进而改善新出现的疾病改善疗法的临床试验设计。本研究的目的是共同建立皮质基底综合征的表型和时间异质性模型,仅基于数据驱动的MRI萎缩模式评估来识别独特的成像亚型,然后研究这些亚型是否提供了潜在病理的信息。我们将Subtype and Stage Inference(一种机器学习算法,用于识别具有不同生物标志物进展模式的个体组)应用于135名皮质基底综合征患者(52名具有病理或生物标志物定义的诊断)和252名对照。该模型使用从基线t1加权MRI扫描中提取的体积特征进行拟合,然后用于亚型和分期随访扫描。随访时的亚型和分期用于验证基线亚型和分期分配的纵向一致性。然后,我们研究了亚型之间是否存在相关病理和临床表型的差异。亚型和分期推断确定了皮质基底综合征萎缩进展的至少两种不同且纵向稳定的时空亚型;四重脑病确诊病例最常被归为皮质下亚型(83%的进行性核上性麻痹患者和75%的皮质基底变性患者),而阿尔茨海默氏症患者最常被归为额顶枕亚型(81%的患者)。在随访中,亚型分配是稳定的(98%的病例),并且个体持续进展到更高的阶段(100%保持在同一阶段或进展),支持该模型分期进展的能力。通过联合建模疾病分期和亚型,我们为皮质基底综合征中至少两种不同且纵向稳定的时空萎缩亚型提供了数据驱动的证据,这些亚型与不同的潜在病理相关。在缺乏敏感和特异性生物标志物的情况下,在基线时对皮质基底综合征患者进行准确的分型和分期对于进入临床试验的筛查以及跟踪疾病进展具有重要意义。
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