iScience (Oct 2023)

Deep learning-derived spatial organization features on histology images predicts prognosis in colorectal liver metastasis patients after hepatectomy

  • Lin Qi,
  • Jie-ying Liang,
  • Zhong-wu Li,
  • Shao-yan Xi,
  • Yu-ni Lai,
  • Feng Gao,
  • Xian-rui Zhang,
  • De-shen Wang,
  • Ming-tao Hu,
  • Yi Cao,
  • Li-jian Xu,
  • Ronald C.K. Chan,
  • Bao-cai Xing,
  • Xin Wang,
  • Yu-hong Li

Journal volume & issue
Vol. 26, no. 10
p. 107702

Abstract

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Summary: Histopathological images of colorectal liver metastases (CRLM) contain rich morphometric information that may predict patients’ outcomes. However, to our knowledge, no study has reported any practical deep learning framework based on the histology images of CRLM, and their direct association with prognosis remains largely unknown. In this study, we developed a deep learning-based framework for fully automated tissue classification and quantification of clinically relevant spatial organization features (SOFs) in H&E-stained images of CRLM. The SOFs based risk-scoring system demonstrated a strong and robust prognostic value that is independent of the current clinical risk score (CRS) system in independent clinical cohorts. Our framework enables fully automated tissue classification of H&E images of CRLM, which could significantly reduce assessment subjectivity and the workload of pathologists. The risk-scoring system provides a time- and cost-efficient tool to assist clinical decision-making for patients with CRLM, which could potentially be implemented in clinical practice.

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