Rush Alzheimer's Disease Center, Rush University Medical Center, Chicago, Illinois, USA.
Department of Pathology, Rush University Medical Center, Chicago, Illinois, USA.
J Neuropathol Exp Neurol. 2023 Nov 20;82(12):976-986. doi: 10.1093/jnen/nlad086.
High-throughput digital pathology offers considerable advantages over traditional semiquantitative and manual methods of counting pathology. We used brain tissue from 5 clinical-pathologic cohort studies of aging; the Religious Orders Study, the Rush Memory and Aging Project, the Minority Aging Research Study, the African American Clinical Core, and the Latino Core to (1) develop a workflow management system for digital pathology processes, (2) optimize digital algorithms to quantify Alzheimer disease (AD) pathology, and (3) harmonize data statistically. Data from digital algorithms for the quantification of β-amyloid (Aβ, n = 413) whole slide images and tau-tangles (n = 639) were highly correlated with manual pathology data (r = 0.83 to 0.94). Measures were robust and reproducible across different magnifications and repeated scans. Digital measures for Aβ and tau-tangles across multiple brain regions reproduced established patterns of correlations, even when samples were stratified by clinical diagnosis. Finally, we harmonized newly generated digital measures with historical measures across multiple large autopsy-based studies. We describe a multidisciplinary approach to develop a digital pathology pipeline that reproducibly identifies AD neuropathologies, Aβ load, and tau-tangles. Digital pathology is a powerful tool that can overcome critical challenges associated with traditional microscopy methods.
高通量数字病理学相对于传统的半定量和手动病理学计数方法具有很大的优势。我们使用了来自 5 项临床病理学衰老队列研究的脑组织;宗教秩序研究、拉什记忆与衰老项目、少数族裔衰老研究、非裔美国人临床核心和拉丁裔核心,(1)开发了一种数字病理学流程的工作流管理系统,(2)优化了用于量化阿尔茨海默病(AD)病理学的数字算法,(3)并进行了统计学上的协调。用于量化β-淀粉样蛋白(Aβ,n=413)全幻灯片图像和 tau 缠结(n=639)的数字算法的数据与手动病理学数据高度相关(r=0.83 至 0.94)。在不同放大倍数和重复扫描下,这些措施具有很强的稳健性和可重复性。多个脑区的 Aβ和 tau 缠结的数字测量结果再现了已建立的相关性模式,即使在按照临床诊断对样本进行分层时也是如此。最后,我们将新生成的数字测量结果与多个大型基于尸检的研究中的历史测量结果进行了协调。我们描述了一种多学科方法来开发一种数字病理学管道,该管道可重现性地识别 AD 神经病理学、Aβ 负荷和 tau 缠结。数字病理学是一种强大的工具,可以克服与传统显微镜方法相关的关键挑战。