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将地球科学框架整合到数字病理学分析中,可以定量分析组织学景观中的微观结构关系。

Integration of geoscience frameworks into digital pathology analysis permits quantification of microarchitectural relationships in histological landscapes.

机构信息

University of Edinburgh Centre for Inflammation Research, Queen's Medical Research Institute, The University of Edinburgh, 47 Little France Crescent, Edinburgh, EH16 4TJ, UK.

Edinburgh Pathology, The Royal Infirmary of Edinburgh, The University of Edinburgh, 51 Little France Crescent, Edinburgh, EH16 4SA, UK.

出版信息

Sci Rep. 2020 Oct 16;10(1):17572. doi: 10.1038/s41598-020-74691-9.

Abstract

Although gold-standard histological assessment is subjective it remains central to diagnosis and clinical trial protocols and is crucial for the evaluation of any preclinical disease model. Objectivity and reproducibility are enhanced by quantitative analysis of histological images but current methods require application-specific algorithm training and fail to extract understanding from the histological context of observable features. We reinterpret histopathological images as disease landscapes to describe a generalisable framework defining topographic relationships in tissue using geoscience approaches. The framework requires no user-dependent training to operate on all image datasets in a classifier-agnostic manner but is adaptable and scalable, able to quantify occult abnormalities, derive mechanistic insights, and define a new feature class for machine-learning diagnostic classification. We demonstrate application to inflammatory, fibrotic and neoplastic disease in multiple organs, including the detection and quantification of occult lobular enlargement in the liver secondary to hilar obstruction. We anticipate this approach will provide a robust class of histological data for trial stratification or endpoints, provide quantitative endorsement of experimental models of disease, and could be incorporated within advanced approaches to clinical diagnostic pathology.

摘要

尽管金标准的组织学评估具有主观性,但它仍然是诊断和临床试验方案的核心,对于评估任何临床前疾病模型也至关重要。通过对组织学图像进行定量分析,可以提高客观性和可重复性,但目前的方法需要针对特定算法进行训练,并且无法从可观察特征的组织学背景中提取出相关信息。我们将组织病理学图像重新解释为疾病景观,以描述一种使用地球科学方法定义组织中地形关系的通用框架。该框架不需要用户依赖的训练即可以无分类器的方式对所有图像数据集进行操作,但具有适应性和可扩展性,能够量化隐匿性异常,得出机制性见解,并为机器学习诊断分类定义一个新的特征类别。我们在多个器官的炎症、纤维化和肿瘤性疾病中展示了该方法的应用,包括检测和量化由于肝门阻塞引起的肝脏隐匿性小叶增大。我们预计这种方法将为试验分层或终点提供一类稳健的组织学数据,为疾病的实验模型提供定量支持,并且可以被纳入先进的临床诊断病理学方法中。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fdb4/7567886/d70b19499c88/41598_2020_74691_Fig1_HTML.jpg

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