Chinese Medical Journal (Feb 2024)

Artificial intelligence-based analysis of tumor-infiltrating lymphocyte spatial distribution for colorectal cancer prognosis

  • Ming Cai,
  • Ke Zhao,
  • Lin Wu,
  • Yanqi Huang,
  • Minning Zhao,
  • Qingru Hu,
  • Qicong Chen,
  • Su Yao,
  • Zhenhui Li,
  • Xinjuan Fan,
  • Zaiyi Liu,
  • Ting Gao,
  • Xiuyuan Hao

DOI
https://doi.org/10.1097/CM9.0000000000002964
Journal volume & issue
Vol. 137, no. 4
pp. 421 – 430

Abstract

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Abstract. Background:. Artificial intelligence (AI) technology represented by deep learning has made remarkable achievements in digital pathology, enhancing the accuracy and reliability of diagnosis and prognosis evaluation. The spatial distribution of CD3+ and CD8+ T cells within the tumor microenvironment has been demonstrated to have a significant impact on the prognosis of colorectal cancer (CRC). This study aimed to investigate CD3CT (CD3+ T cells density in the core of the tumor [CT]) prognostic ability in patients with CRC by using AI technology. Methods:. The study involved the enrollment of 492 patients from two distinct medical centers, with 358 patients assigned to the training cohort and an additional 134 patients allocated to the validation cohort. To facilitate tissue segmentation and T-cells quantification in whole-slide images (WSIs), a fully automated workflow based on deep learning was devised. Upon the completion of tissue segmentation and subsequent cell segmentation, a comprehensive analysis was conducted. Results:. The evaluation of various positive T cell densities revealed comparable discriminatory ability between CD3CT and CD3-CD8 (the combination of CD3+ and CD8+ T cells density within the CT and invasive margin) in predicting mortality (C-index in training cohort: 0.65 vs. 0.64; validation cohort: 0.69 vs. 0.69). The CD3CT was confirmed as an independent prognostic factor, with high CD3CT density associated with increased overall survival (OS) in the training cohort (hazard ratio [HR] = 0.22, 95% confidence interval [CI]: 0.12–0.38, P <0.001) and validation cohort (HR = 0.21, 95% CI: 0.05–0.92, P = 0.037). Conclusions:. We quantify the spatial distribution of CD3+ and CD8+ T cells within tissue regions in WSIs using AI technology. The CD3CT confirmed as a stage-independent predictor for OS in CRC patients. Moreover, CD3CT shows promise in simplifying the CD3-CD8 system and facilitating its practical application in clinical settings.