Gillis Grace, Bhalerao Gaurav, Blane Jasmine, Mitchell Robert, Pretorius Pieter M, McCracken Celeste, Nichols Thomas E, Smith Stephen M, Miller Karla L, Alfaro-Almagro Fidel, Raymont Vanessa, Martos Lola, Mackay Clare E, Griffanti Ludovica
Department of Psychiatry, Oxford Centre for Human Brain Activity, Wellcome Centre for Integrative Neuroimaging, University of Oxford, Oxford, UK.
Oxford Health NHS Foundation Trust, Oxford, UK.
Hum Brain Mapp. 2025 Feb 15;46(3):e70151. doi: 10.1002/hbm.70151.
The analysis tools and statistical methods used in large neuroimaging research studies differ from those applied in clinical contexts, making it unclear whether these techniques can be translated to a memory clinic setting. The Oxford Brain Health Clinic (OBHC) was established in 2020 to bridge this gap between research studies and memory clinics. We optimised the UK Biobank imaging framework for the memory clinic setting by integrating enhanced quality control (QC) processes (MRIQC, QUAD, and DSE decomposition) and supplementary dementia-informed analyses (lobar volumes, NBM volumes, WMH classification, PSMD, cortical diffusion MRI metrics, and tract volumes) into the analysis pipeline. We explored associations between resultant imaging-derived phenotypes (IDPs) and clinical phenotypes in the OBHC patient population (N = 213), applying hierarchical FDR correction to account for multiple testing. 14%-24% of scans were flagged by automated QC tools, but upon visual inspection, only 0%-2.4% of outputs were excluded. The pipeline successfully generated 5683 IDPs aligned with UK Biobank and 110 IDPs targeted towards dementia-related changes. We replicated established associations and found novel associations between brain metrics and age, cognition, and dementia-related diagnoses. The imaging protocol is feasible, acceptable, and yields high-quality data that is usable for both clinical and research purposes. We validated the use of this methodology in a real-world memory clinic population, which demonstrates the potential of this enhanced pipeline to bridge the gap between big data studies and clinical settings.
大型神经影像学研究中使用的分析工具和统计方法与临床环境中应用的不同,这使得尚不清楚这些技术能否转化到记忆诊所环境中。牛津脑健康诊所(OBHC)于2020年成立,以弥合研究与记忆诊所之间的这一差距。我们通过将增强的质量控制(QC)流程(MRIQC、QUAD和DSE分解)以及补充的痴呆症相关分析(脑叶体积、内侧颞叶体积、白质高信号分类、PSMD、皮质扩散MRI指标和束体积)整合到分析流程中,针对记忆诊所环境优化了英国生物银行成像框架。我们在OBHC患者群体(N = 213)中探索了由此产生的影像衍生表型(IDP)与临床表型之间的关联,并应用分层错误发现率(FDR)校正来处理多重检验。14%-24%的扫描被自动QC工具标记,但经目视检查,仅0%-2.4%的输出被排除。该流程成功生成了5683个与英国生物银行一致的IDP以及110个针对痴呆症相关变化的IDP。我们重复了已有的关联,并发现了脑指标与年龄、认知和痴呆症相关诊断之间的新关联。该成像方案是可行的、可接受的,并且能产生可用于临床和研究目的的高质量数据。我们在真实世界的记忆诊所人群中验证了这种方法的使用,这证明了这种增强型流程在弥合大数据研究与临床环境之间差距方面的潜力。