基于组织病理图像的葡萄膜黑色素瘤深度学习分类和患者预后新指标的识别。

IF 3.7 3区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
Qi Wan, Xiang Ren, Ran Wei, Shali Yue, Lixiang Wang, Hongbo Yin, Jing Tang, Ming Zhang, Ke Ma, Ying-Ping Deng
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引用次数: 0

摘要

背景:深度学习在数字组织病理学中得到了广泛的应用。本研究的目的是测试深度学习(DL)算法用于预测葡萄膜黑色素瘤(UM)的全幻灯片图像(WSI)的生命状态。方法:我们开发了一个深度学习模型(Google-net),从TCGA-UVM队列的组织病理学图像中预测UM患者的生命状态,并在内部队列中进行验证。从模型中提取组织病理学DL特征,然后将UM患者分为两个亚型。进一步研究两亚型在临床转归、肿瘤突变、微环境、药物治疗反应概率等方面的差异。结果:我们发现所建立的深度学习模型对斑块和wsi的预测准确率达到了> = 90%。根据14个组织病理学特征,我们成功地将UM患者分为Cluster1和Cluster2亚型。与Cluster2相比,Cluster1亚型患者的生存预后较差,免疫检查点基因表达水平升高,CD8 + T细胞和CD4 + T细胞的免疫浸润更高,对抗pd -1治疗更敏感。此外,我们建立并验证了优于传统临床特征的预后组织病理学dl特征和基因特征。最后,我们构建了一个结合dl特征和基因特征的nomogram来预测UM患者的死亡率。结论:我们的研究结果表明,DL模型可以准确地预测UM专利仅使用组织病理图像的生命状态。我们根据组织病理学特征发现了两个亚群,这可能有利于免疫治疗和化疗。最后,构建了一个结合dl特征和基因特征的功能良好的nomogram,为UM患者的治疗和管理提供了更直接和可靠的预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep learning classification of uveal melanoma based on histopathological images and identification of a novel indicator for prognosis of patients.

Deep learning classification of uveal melanoma based on histopathological images and identification of a novel indicator for prognosis of patients.

Deep learning classification of uveal melanoma based on histopathological images and identification of a novel indicator for prognosis of patients.

Deep learning classification of uveal melanoma based on histopathological images and identification of a novel indicator for prognosis of patients.

Background: Deep learning has been extensively used in digital histopathology. The purpose of this study was to test deep learning (DL) algorithms for predicting the vital status of whole-slide image (WSI) of uveal melanoma (UM).

Methods: We developed a deep learning model (Google-net) to predict the vital status of UM patients from histopathological images in TCGA-UVM cohort and validated it in an internal cohort. The histopathological DL features extracted from the model and then were applied to classify UM patients into two subtypes. The differences between two subtypes in clinical outcomes, tumor mutation, and microenvironment, and probability of drug therapeutic response were investigated further.

Results: We observed that the developed DL model can achieve a high accuracy of >  = 90% for patches and WSIs prediction. Using 14 histopathological DL features, we successfully classified UM patients into Cluster1 and Cluster2 subtypes. Compared to Cluster2, patients in the Cluster1 subtype have a poor survival outcome, increased expression levels of immune-checkpoint genes, higher immune-infiltration of CD8 + T cell and CD4 + T cells, and more sensitivity to anti-PD-1 therapy. Besides, we established and verified prognostic histopathological DL-signature and gene-signature which outperformed the traditional clinical features. Finally, a well-performed nomogram combining the DL-signature and gene-signature was constructed to predict the mortality of UM patients.

Conclusions: Our findings suggest that DL model can accurately predict vital status in UM patents just using histopathological images. We found out two subgroups based on histopathological DL features, which may in favor of immunotherapy and chemotherapy. Finally, a well-performing nomogram that combines DL-signature and gene-signature was constructed to give a more straightforward and reliable prognosis for UM patients in treatment and management.

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来源期刊
Biological Procedures Online
Biological Procedures Online 生物-生化研究方法
CiteScore
10.50
自引率
0.00%
发文量
16
审稿时长
>12 weeks
期刊介绍: iological Procedures Online publishes articles that improve access to techniques and methods in the medical and biological sciences. We are also interested in short but important research discoveries, such as new animal disease models. Topics of interest include, but are not limited to: Reports of new research techniques and applications of existing techniques Technical analyses of research techniques and published reports Validity analyses of research methods and approaches to judging the validity of research reports Application of common research methods Reviews of existing techniques Novel/important product information Biological Procedures Online places emphasis on multidisciplinary approaches that integrate methodologies from medicine, biology, chemistry, imaging, engineering, bioinformatics, computer science, and systems analysis.
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