Rebeca Scalco, Luca C Oliveira, Zhengfeng Lai, Danielle J Harvey, Lana Abujamil, Charles DeCarli, Lee-Way Jin, Chen-Nee Chuah, Brittany N Dugger
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引用次数: 0
摘要
对淀粉样蛋白-β(Aβ)病理进行准确和可扩展的量化,对于深入研究阿尔茨海默病(AD)的疾病表型和进一步研究至关重要。这项多学科研究利用机器学习(ML)管道对 Aβ 沉积物进行粒度量化,并评估其在颞叶中的分布,从而解决了目前神经病理学研究的局限性。利用加州大学戴维斯分校阿尔茨海默病研究中心连续解剖病例的 131 张全切片图像,我们的目标有三个:(1)验证白质(WM)和灰质(GM)中 Aβ 沉积物量化的自动工作流程;(2)定义 GM 和 WM 中不同 Aβ 沉积物类型的分布;(3)研究 Aβ 沉积物与痴呆状态和混合病理存在的相关性。我们的方法凸显了 ML 管道的稳健性和有效性,显示出与专家评估类似的熟练程度。我们对颞叶GM和WM中Aβ沉积物的定量和分布进行了全面深入的研究,发现随着既定诊断标准(NIA-AA)的严重程度,Aβ沉积物会逐渐增加。我们还介绍了 Aβ 负荷与临床诊断以及是否存在混合病理的相关性。本研究介绍了一种可重复的工作流程,展示了 ML 方法在神经病理学领域的实际应用,并将输出数据用于相关分析。我们认识到了局限性,如 ML 模型和当前 ML 分类中的潜在偏差,并提出了未来研究的途径,以完善和扩展该方法。我们希望能为神经病理学的进步、ML 应用和精准医学的发展做出贡献,为 AD 脑病例的深度表型分析铺平道路,并为神经病理学研究的进一步发展奠定基础。
Machine learning quantification of Amyloid-β deposits in the temporal lobe of 131 brain bank cases.
Accurate and scalable quantification of amyloid-β (Aβ) pathology is crucial for deeper disease phenotyping and furthering research in Alzheimer Disease (AD). This multidisciplinary study addresses the current limitations on neuropathology by leveraging a machine learning (ML) pipeline to perform a granular quantification of Aβ deposits and assess their distribution in the temporal lobe. Utilizing 131 whole-slide-images from consecutive autopsied cases at the University of California Davis Alzheimer Disease Research Center, our objectives were threefold: (1) Validate an automatic workflow for Aβ deposit quantification in white matter (WM) and gray matter (GM); (2) define the distributions of different Aβ deposit types in GM and WM, and (3) investigate correlates of Aβ deposits with dementia status and the presence of mixed pathology. Our methodology highlights the robustness and efficacy of the ML pipeline, demonstrating proficiency akin to experts' evaluations. We provide comprehensive insights into the quantification and distribution of Aβ deposits in the temporal GM and WM revealing a progressive increase in tandem with the severity of established diagnostic criteria (NIA-AA). We also present correlations of Aβ load with clinical diagnosis as well as presence/absence of mixed pathology. This study introduces a reproducible workflow, showcasing the practical use of ML approaches in the field of neuropathology, and use of the output data for correlative analyses. Acknowledging limitations, such as potential biases in the ML model and current ML classifications, we propose avenues for future research to refine and expand the methodology. We hope to contribute to the broader landscape of neuropathology advancements, ML applications, and precision medicine, paving the way for deep phenotyping of AD brain cases and establishing a foundation for further advancements in neuropathological research.
期刊介绍:
"Acta Neuropathologica Communications (ANC)" is a peer-reviewed journal that specializes in the rapid publication of research articles focused on the mechanisms underlying neurological diseases. The journal emphasizes the use of molecular, cellular, and morphological techniques applied to experimental or human tissues to investigate the pathogenesis of neurological disorders.
ANC is committed to a fast-track publication process, aiming to publish accepted manuscripts within two months of submission. This expedited timeline is designed to ensure that the latest findings in neuroscience and pathology are disseminated quickly to the scientific community, fostering rapid advancements in the field of neurology and neuroscience. The journal's focus on cutting-edge research and its swift publication schedule make it a valuable resource for researchers, clinicians, and other professionals interested in the study and treatment of neurological conditions.