整合深度学习与图论分析组织病理学整张影像

Hyun Jung, Christian Suloway, Tianyi Miao, E. Edmondson, D. Morcock, C. Deleage, Yanling Liu, Jack R. Collins, C. Lisle
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引用次数: 3

摘要

免疫染色图像中胶原沉积的特征与各种病理状况有关,特别是在人类免疫缺陷病毒(HIV)感染中。准确分割这些胶原并提取潜在疾病的代表性特征是实现定量诊断的重要步骤。虽然从分割的胶原中得出的一阶统计量可以用于表示不同时间点的病理演变,但它无法捕获形态变化和空间排列。在这项工作中,我们展示了一个完整的管道,通过整合深度学习和图论,从组织病理学全幻灯片图像(wsi)中提取代表潜在疾病进展的关键组织病理学特征。训练卷积神经网络并将其用于组织病理学WSI分割。采用并行处理方法将100K ~ 150K的分割胶原原纤维转化为单个集体属性关系图,并应用图论从胶原框架中提取拓扑信息和关系信息。结果与预期的由胶原沉积引起的致病性一致,突出了在全切片组织学图像中分析各种网状结构的临床应用潜力。
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Integration of Deep Learning and Graph Theory for Analyzing Histopathology Whole-slide Images
Characterization of collagen deposition in immunostained images is relevant to various pathological conditions, particularly in human immunodeficiency virus (HIV) infection. Accurate segmentation of these collagens and extracting representative features of underlying diseases are important steps to achieve quantitative diagnosis. While a first order statistic derived from the segmented collagens can be useful in representing pathological evolutions at different timepoints, it fails to capture morphological changes and spatial arrangements. In this work, we demonstrate a complete pipeline for extracting key histopathology features representing underlying disease progression from histopathology whole-slide images (WSIs) via integration of deep learning and graph theory. A convolutional neural network is trained and utilized for histopathological WSI segmentation. Parallel processing is applied to convert 100K ~ 150K segmented collagen fibrils into a single collective attributed relational graph, and graph theory is applied to extract topological and relational information from the collagenous framework. Results are in good agreement with the expected pathogenicity induced by collagen deposition, highlighting potentials in clinical applications for analyzing various meshwork-structures in whole-slide histology images.
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