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In Journal of cancer research and clinical oncology

PURPOSE : Rapid diagnosis and risk stratification can provide timely treatment for colorectal cancer (CRC) patients. Deep learning (DL) is not only used to identify tumor regions in histopathological images, but also applied to predict survival and achieve risk stratification. Whereas, most of methods dependent on regions of interest annotated by pathologist and ignore the global information in the image.

METHODS : A dual resolution DL network based on weakly supervised learning (WDRNet) was proposed for CRC identification and prognosis. The proposed method was trained and validated on the dataset from The Cancer Genome Atlas (TCGA) and tested on the external dataset from Affiliated Cancer Hospital and Institute of Guangzhou Medical University (ACHIGMU).

RESULTS : In identification task, WDRNet accurately identified tumor images with an accuracy of 0.977 in slide level and 0.953 in patch level. Besides, in prognosis task, WDRNet showed an excellent prediction performance in both datasets with the concordance index (C-index) of 0.716 ± 0.037 and 0.598 ± 0.024 respectively. Moreover, the results of risk stratification were statistically significant in univariate analysis (p < 0.001, HR = 7.892 in TCGA-CRC, and p = 0.009, HR = 1.718 in ACHIGMU) and multivariate analysis (p < 0.001, HR = 5.914 in TCGA-CRC, and p = 0.025, HR = 1.674 in ACHIGMU).

CONCLUSIONS : We developed a weakly supervised resolution DL network to achieve precise identification and prognosis of CRC patients, which will assist doctors in diagnosis on histopathological images and stratify patients to select appropriate therapeutic schedule.

Xu Yan, Jiang Liwen, Chen Wenjing, Huang Shuting, Liu Zhenyu, Zhang Jiangyu

2022-Nov-04

Colorectal cancer, Deep learning, Identification, Prognosis, Whole-slide Images