论文标题
使用对结直肠癌中病理图像的深度学习,肿瘤浸润淋巴细胞的预后意义
Prognostic Significance of Tumor-Infiltrating Lymphocytes Using Deep Learning on Pathology Images in Colorectal Cancers
论文作者
论文摘要
目的肿瘤浸润淋巴细胞(TILS)在癌症中具有明显的预后值。但是,很少有针对结直肠癌(CRC)开发的基于自动学习的TIL评分算法。我们开发了一种自动化的多尺度链接网络工作流,用于使用H&E染色图像来量化CRC肿瘤的细胞级TIL。使用两个国际数据集评估了自动TIL评分(TIL)对疾病进展的预测性能(TIL),其中包括来自癌症基因组图集(TCGA)的554名CRC患者(TCGA)和来自分子和细胞肿瘤学(MCO)的1130名CRC患者。结果链接网模型提供了出色的精度(0.9508),召回(0.9185)和总F1分数(0.9347)。 TIL之间观察到明显的剂量反应关系,而TCGA和MCO队列的疾病进展或死亡的风险也降低。 TCGA数据的单变量和多元COX回归分析都表明,高tils患者的疾病进展风险降低(约75%)。在MCO和TCGA研究中,TIL-HIGH组在单变量分析中与总体生存率的提高显着相关(分别降低了30%和54%的风险)。但是,在MCO数据集中观察到了潜在的混杂。根据知道的危险因素,在不同的亚组中始终观察到高元素的有利作用。结论成功开发了基于LinkNet的自动TIL定量的深度学习工作流程。
Purpose Tumor-infiltrating lymphocytes (TILs) have significant prognostic values in cancers. However, very few automated, deep-learning-based TIL scoring algorithms have been developed for colorectal cancers (CRC). Methods We developed an automated, multiscale LinkNet workflow for quantifying cellular-level TILs for CRC tumors using H&E-stained images. The predictive performance of the automatic TIL scores (TIL) for disease progression and overall survival was evaluate using two international datasets, including 554 CRC patients from The Cancer Genome Atlas (TCGA) and 1130 CRC patients from Molecular and Cellular Oncology (MCO). Results The LinkNet model provided an outstanding precision (0.9508), recall (0.9185), and overall F1 score (0.9347). Clear dose-response relationships were observed between TILs and risk of disease progression or death decreased in both TCGA and MCO cohorts. Both univariate and multivariate Cox regression analyses for the TCGA data demonstrated that patients with high TILs had significant (approx. 75%) reduction of risk for disease progression. In both MCO and TCGA studies, the TIL-high group was significantly associated with improved overall survival in univariate analysis (30% and 54% reduction in risk, respectively). However, potential confounding was observed in the MCO dataset. The favorable effects of high TILs were consistently observed in different subgroups according to know risk factors. Conclusion A deep-learning workflow for automatic TIL quantification based on LinkNet was successfully developed.