Kobayashi Yosuke, Suzuki Yoshiyuki, Seishima Ryo, Chikaishi Yuko, Matsuoka Hiroshi, Nakamura Kohei, Shigeta Kohei, Okabayashi Koji, Hiro Junichiro, Otsuka Koki, Uyama Ichiro, Saya Hideyuki, Nishihara Hiroshi, Suda Koichi, Kitagawa Yuko
Department of Surgery, Fujita Health University, 1-98 Dengakugakubo, Kutsukake, Toyoake, Aichi, 470-1192, Japan.
Matsushima Hospital, Kanagawa, 220-0041, Japan.
Int J Clin Oncol. 2025 May;30(5):926-934. doi: 10.1007/s10147-025-02722-4. Epub 2025 Mar 17.
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.
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.
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).
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.
对II期和III期结直肠癌(CRC)患者进行准确的复发风险评估仍然具有挑战性。传统的组织病理学方法在预测辅助化疗后的预后方面常常存在不足。本研究旨在评估综合基因组分析结合机器学习在CRC患者预后风险分层中的应用。
使用来自藤田保健大学医院的52例接受根治性手术的II/III期CRC患者的训练队列开发了一种机器学习模型。从福尔马林固定、石蜡包埋的组织切片中分离基因组DNA,并使用160个癌症相关基因panel进行分析。采用随机森林算法确定影响无复发生存的关键基因。通过对包括来自庆应义塾大学医院的44例患者在内的内部和外部队列建立风险评分来验证该模型。
确定了六个关键基因(KRAS、KIT、SMAD4、ARID2、NF1和FBXW7)作为显著的预后风险预测因子。将这些基因与临床病理因素相结合的风险评分系统在内部队列(p < 0.001)和外部队列(p = 0.017)中均有效地对患者进行了分层。
本研究表明,机器学习结合综合基因组分析可显著改善II/III期CRC患者辅助化疗后的预后风险分层。这种方法为个体化治疗策略提供了一种有前景的工具,值得在更大的队列中进一步验证。