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Utility of comprehensive genomic profiling combined with machine learning for prognostic stratification in stage II/III colorectal cancer after adjuvant chemotherapy

  • Yosuke Kobayashi
  • , Yoshiyuki Suzuki
  • , Ryo Seishima
  • , Yuko Chikaishi
  • , Hiroshi Matsuoka
  • , Kohei Nakamura
  • , Kohei Shigeta
  • , Koji Okabayashi
  • , Junichiro Hiro
  • , Koki Otsuka
  • , Ichiro Uyama
  • , Hideyuki Saya
  • , Hiroshi Nishihara
  • , Koichi Suda
  • , Yuko Kitagawa

研究成果: ジャーナルへの寄稿学術論文査読

抄録

Background and purpose: Accurate recurrence risk evaluation in patients with stage II and III colorectal cancer (CRC) remains difficult. Traditional histopathological methods frequently fall short in predicting outcomes after adjuvant chemotherapy. This study aims to evaluate the use of comprehensive genomic profiling combined with machine learning for prognostic risk stratification in patients with CRC. Methods: A machine learning model was developed using a training cohort of 52 patients with stage II/III CRC who underwent curative surgery at Fujita Health University Hospital. Genomic DNA was isolated from formalin-fixed, paraffin-embedded tissue sections and analyzed with a 160 cancer-related gene panel. The random forest algorithm was used to determine key genes affecting recurrence-free survival. The model was validated by developing a risk score with internal and external cohorts, including 44 patients from Keio University Hospital. Results: Six key genes (KRAS, KIT, SMAD4, ARID2, NF1, and FBXW7) were determined as significant prognostic risk predictors. A risk score system integrating these genes with clinicopathological factors effectively stratified patients in both internal (p < 0.001) and external cohorts (p = 0.017). Conclusions: This study reveals that machine learning, combined with comprehensive genomic profiling, significantly improves prognostic risk stratification in patients with stage II/III CRC after adjuvant chemotherapy. This approach provides a promising tool for individualized treatment strategies, warranting further validation with larger cohorts.

本文言語英語
論文番号103065
ページ(範囲)926-934
ページ数9
ジャーナルInternational Journal of Clinical Oncology
30
5
DOI
出版ステータス出版済み - 05-2025

UN SDG

この成果は、次の持続可能な開発目標に貢献しています

  1. SDG 3 - すべての人に健康と福祉を
    SDG 3 すべての人に健康と福祉を

All Science Journal Classification (ASJC) codes

  • 外科
  • 血液学
  • 腫瘍学

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