基于计算机的多系统萎缩症α-突触核蛋白病理学评估是识别疾病亚型的新工具。

IF 7.1 1区 医学 Q1 PATHOLOGY
Ain Kim , Koji Yoshida , Gabor G. Kovacs , Shelley L. Forrest
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引用次数: 0

摘要

多系统萎缩症(MSA)是一种神经退行性疾病,病程多变,临床(小脑(MSA-C)或帕金森病(MSA-P))和病理表型各不相同,提示存在不同的α-突触核蛋白(αSyn)品系。从神经病理学角度看,MSA的特征是αSyn在少突胶质细胞胞浆包涵体(GCI)中的聚集。本研究采用一种基于计算机的新方法,量化了MSA病例(n = 20)中GCIs的大小、所有αSyn病变的密度、仅GCIs的密度和GCIs的数量。用与疾病相关的 5G4 抗αSyn 抗体免疫染色普门和小脑白质(WM)。经过数字扫描和图像处理后,对全部 5G4 免疫反应性病变(即神经元、神经细胞和胶质细胞)和 GCIs 进行光学解剖,以测量包涵体的大小和密度,然后使用基于计算机的新型方法(ImageJ)进行评估。不同病例和不同脑区的GCI大小不同(p < 0.0001),不同脑区和不同病例的所有αSyn病理学密度(包括GCI的密度和数量)也存在异质性,其中MSA-C病例小脑WM中所有αSyn病理学密度明显更高(p = 0.049)。一些特定区域的形态学变量与发病年龄和死亡年龄成反比,这表明潜在的衰老相关细胞机制。无监督K均值聚类分析根据区域特异性形态学变量将MSA病例分为三个不同的组别。总之,我们开发了一种基于计算机的新型方法,这种方法易于使用,为开发基于人工智能的评估策略以进行大规模比较研究迈出了第一步。我们对不同脑区和病例之间形态学变量变异性的观察凸显了 i) 基于计算机的方法在检测常规诊断实践中未考虑的特征方面的重要性,以及 ii) 在识别以前未识别的 MSA 亚型方面的新颖性,这些亚型并不一定反映当前 MSA-C 或 MSA-P 的临床分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Computer-Based Evaluation of α-Synuclein Pathology in Multiple System Atrophy as a Novel Tool to Recognize Disease Subtypes

Multiple system atrophy (MSA) is a neurodegenerative disorder with variable disease course and distinct constellations of clinical (cerebellar [MSA-C] or parkinsonism [MSA-P]) and pathological phenotypes, suggestive of distinct α-synuclein (αSyn) strains. Neuropathologically, MSA is characterized by the accumulation of αSyn in oligodendrocytic glial cytoplasmic inclusions (GCI). Using a novel computer-based method, this study quantified the size of GCIs, density of all αSyn pathology, density of only the GCIs, and number of GCIs in MSA cases (n = 20). The putamen and cerebellar white matter were immunostained with the disease-associated 5G4 anti-αSyn antibody. Following digital scanning and image processing, total 5G4-immunoreactive pathology (ie, neuronal, neuritic, and glial) and GCIs were optically dissected for inclusion size and density measurement and then evaluated applying a novel computer-based method using ImageJ. GCI size varied between cases and brain regions (P < .0001), and heterogeneity in the density of all αSyn pathology including the density and number of GCIs were observed between regions and across cases, where MSA-C cases had a significantly higher density of all αSyn pathology in the cerebellar white matter (P = .049). Some region-specific morphologic variables inversely correlated with the age of onset and death, suggestive of an underlying aging-related cellular mechanism. Unsupervised K-means cluster analysis classified MSA cases into 3 distinct groups based on region-specific morphologic variables. In conclusion, we developed a novel computer-based method that is easily accessible, providing a first step to developing artificial intelligence–based evaluation strategies for large scale comparative studies. Our observations on the variability of morphologic variables between brain regions and cases highlight (1) the importance of computer-based approaches to detect features not considered in the routine diagnostic practice, and (2) novel aspects for the identification of previously unrecognized MSA subtypes that do not necessarily reflect the current clinical classification of MSA-C or MSA-P.

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来源期刊
Modern Pathology
Modern Pathology 医学-病理学
CiteScore
14.30
自引率
2.70%
发文量
174
审稿时长
18 days
期刊介绍: Modern Pathology, an international journal under the ownership of The United States & Canadian Academy of Pathology (USCAP), serves as an authoritative platform for publishing top-tier clinical and translational research studies in pathology. Original manuscripts are the primary focus of Modern Pathology, complemented by impactful editorials, reviews, and practice guidelines covering all facets of precision diagnostics in human pathology. The journal's scope includes advancements in molecular diagnostics and genomic classifications of diseases, breakthroughs in immune-oncology, computational science, applied bioinformatics, and digital pathology.
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