利用弱监督学习在虚拟组织染色组织上诊断肺癌

IF 7.1 1区 医学 Q1 PATHOLOGY Modern Pathology Pub Date : 2024-04-07 DOI:10.1016/j.modpat.2024.100487
Zhenghui Chen, Ivy H.M. Wong, Weixing Dai, Claudia T.K. Lo, Terence T.W. Wong
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引用次数: 0

摘要

肺腺癌(LUAD)是最常见的原发性肺癌,占所有肺癌病例的 40%。目前肺癌分析的金标准是基于病理学家对在明视野显微镜或数字玻片扫描仪下观察的苏木精和伊红(H&E)染色组织切片的解读。有人提出利用深度学习的计算病理学来检测组织学图像上的肺癌。然而,获取H&E染色图像的组织学染色工作流程和随后的癌症诊断程序分别需要繁琐的样本制备步骤和重复的人工判读,耗费大量人力和时间。在这项工作中,我们提出了一种弱监督学习方法,用于在虚拟组织学染色的无标签组织切片上进行 LUAD 分类。带有组织病理学信息的无标记组织自发荧光图像可通过弱监督深度生成模型转换为虚拟 H&E 染色图像。为了完成下游的LUAD分类任务,我们在癌症基因组图谱(TCGA)的开源LUAD H&E染色全切片图像(WSIs)数据集上训练了基于注意力的多实例学习模型,并进行了不同的设置。该模型在从玛丽医院和威尔士亲王医院收集的150张H&E染色WSI上进行了验证,平均曲线下面积(AUC)为0.961。该模型在 58 个虚拟 H&E 染色 WSI 上的平均 AUC 也达到了 0.973,与 58 个标准 H&E 染色 WSI 的平均 AUC 0.977 相当。虚拟 H&E 染色 WSI 和地面真实 H&E 染色 WSI 的注意力热图可以显示 LUAD 组织切片的肿瘤区域。总之,所提出的无标记组织虚拟 H&E 染色 WSI 诊断工作流程是一种快速、经济、可解释的方法,有助于临床医生进行术后病理检查。该方法可作为其他无标记成像模式和疾病背景的蓝本。
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Lung Cancer Diagnosis on Virtual Histologically Stained Tissue Using Weakly Supervised Learning

Lung adenocarcinoma (LUAD) is the most common primary lung cancer and accounts for 40% of all lung cancer cases. The current gold standard for lung cancer analysis is based on the pathologists’ interpretation of hematoxylin and eosin (H&E)-stained tissue slices viewed under a brightfield microscope or a digital slide scanner. Computational pathology using deep learning has been proposed to detect lung cancer on histology images. However, the histological staining workflow to acquire the H&E-stained images and the subsequent cancer diagnosis procedures are labor-intensive and time-consuming with tedious sample preparation steps and repetitive manual interpretation, respectively. In this work, we propose a weakly supervised learning method for LUAD classification on label-free tissue slices with virtual histological staining. The autofluorescence images of label-free tissue with histopathological information can be converted into virtual H&E-stained images by a weakly supervised deep generative model. For the downstream LUAD classification task, we trained the attention-based multiple-instance learning model with different settings on the open-source LUAD H&E-stained whole-slide images (WSIs) dataset from the Cancer Genome Atlas (TCGA). The model was validated on the 150 H&E-stained WSIs collected from patients in Queen Mary Hospital and Prince of Wales Hospital with an average area under the curve (AUC) of 0.961. The model also achieved an average AUC of 0.973 on 58 virtual H&E-stained WSIs, comparable to the results on 58 standard H&E-stained WSIs with an average AUC of 0.977. The attention heatmaps of virtual H&E-stained WSIs and ground-truth H&E-stained WSIs can indicate tumor regions of LUAD tissue slices. In conclusion, the proposed diagnostic workflow on virtual H&E-stained WSIs of label-free tissue is a rapid, cost effective, and interpretable approach to assist clinicians in postoperative pathological examinations. The method could serve as a blueprint for other label-free imaging modalities and disease contexts.

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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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