Predicting gastric cancer outcome from resected lymph node histopathology images using deep learning

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Abstract

N-staging is a determining factor for prognostic assessment and decision-making for stage-based cancer therapeutic strategies. Visual inspection of whole-slides of intact lymph nodes is currently the main method used by pathologists to calculate the number of metastatic lymph nodes (MLNs). Moreover, even at the same N stage, the outcome of patients varies dramatically. Here, we propose a deep-learning framework for analyzing lymph node whole-slide images (WSIs) to identify lymph nodes and tumor regions, and then to uncover tumor-area-to-MLN-area ratio (T/MLN). After training, our model’s tumor detection performance was comparable to that of experienced pathologists and achieved similar performance on two independent gastric cancer validation cohorts. Further, we demonstrate that T/MLN is an interpretable independent prognostic factor. These findings indicate that deep-learning models could assist not only pathologists in detecting lymph nodes with metastases but also oncologists in exploring new prognostic factors, especially those that are difficult to calculate manually.

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Wang, X., Chen, Y., Gao, Y., Zhang, H., Guan, Z., Dong, Z., … Yu, G. (2021). Predicting gastric cancer outcome from resected lymph node histopathology images using deep learning. Nature Communications, 12(1). https://doi.org/10.1038/s41467-021-21674-7

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