Identification of prognostic spatial organization features in colorectal cancer microenvironment using deep learning on histopathology images

Lin Qi , Jia Ke , Zhaoliang Yu , Yi Cao , Yuni Lai , Yufeng Chen , Feng Gao , Xin Wang
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引用次数: 5

Abstract

Background

The ecological diversity in the tumor microenvironment influences cancer progression and clinical outcomes of patients. However, the complexity of cellular and tissue components hamper quantitative dissection of the tumor microenvironment. In this study, we aimed to develop an efficient and robust artificial intelligence (AI)-empowered framework for the identification of prognostic spatial organization features based on histopathological images.

Results

Using two public H&E image cohorts involving 107,180 hand-delineated image patches, we trained and validated a robust and efficient deep convolutional neural network for accurate tissue classification. With the classification result, we calculated whole-slide and infiltrating spatial organization features (SOFs) for different tissue types. Interestingly, the whole-slide SOFs recapitulated the characteristics of the four Consensus Molecular Subtypes (CMSs) of colorectal cancer (CRC). More specifically, we found that lymphocyte, tumor, mucus, and stroma tissues are significantly more abundant in CMS1, 2, 3, and 4, respectively. Using univariate and multivariate analyses, we identified infiltrating lymphocyte ratio (ILR) and infiltrating stroma ratio (ISR) are significantly associated with relapse-free survival. Based on two independent clinical cohorts, we further demonstrated the combinatorial prognostic value of ILR and ISR. Together, our results suggest that a high level of lymphocyte infiltration may surpass the effect of stromal infiltration. However, stromal infiltration will be essential for RFS in patients with low degrees of immune activity.

Conclusions

We developed CRC-SPA for accurate profiling of spatial organization features using histology images, providing a cost-efficient tool for more quantitative analysis of tumor microenvironment and stratification of patients for more optimized clinical management.

利用组织病理学图像的深度学习识别结直肠癌微环境的预后空间组织特征
肿瘤微环境的生态多样性影响肿瘤的进展和患者的临床结局。然而,细胞和组织成分的复杂性阻碍了肿瘤微环境的定量解剖。在这项研究中,我们的目标是开发一个高效和强大的人工智能(AI)授权框架,用于识别基于组织病理学图像的预后空间组织特征。结果使用两个公开的H&E图像队列,涉及107,180个手工绘制的图像块,我们训练并验证了一个鲁棒高效的深度卷积神经网络,用于准确的组织分类。根据分类结果,计算不同组织类型的全载和浸润空间组织特征(SOFs)。有趣的是,整个幻灯片的SOFs概括了结直肠癌(CRC)的四种共识分子亚型(cms)的特征。更具体地说,我们发现淋巴细胞、肿瘤、粘液和间质组织分别在CMS1、2、3和4中明显更丰富。通过单变量和多变量分析,我们发现浸润淋巴细胞比率(ILR)和浸润间质比率(ISR)与无复发生存显著相关。基于两个独立的临床队列,我们进一步证明了ILR和ISR的组合预后价值。总之,我们的结果表明,高水平的淋巴细胞浸润可能超过基质浸润的作用。然而,对于免疫活性低的患者,间质浸润将是RFS的必要条件。我们开发的CRC-SPA可以通过组织学图像准确地描述肿瘤的空间组织特征,为肿瘤微环境的定量分析和患者分层提供了一种经济有效的工具,以优化临床管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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