Department of Gastrointestinal and Pediatric Surgery, Tokyo Medical University, Tokyo, Japan.
Department of Molecular Pathology, Tokyo Medical University, Tokyo, Japan.
Mod Pathol. 2024 Oct;37(10):100562. doi: 10.1016/j.modpat.2024.100562. Epub 2024 Jul 15.
Reducing recurrence following radical resection of colon cancer without overtreatment or undertreatment remains a challenge. Postoperative adjuvant chemotherapy (Adj) is currently administered based solely on pathologic TNM stage. However, prognosis can vary significantly among patients with the same disease stage. Therefore, novel classification systems in addition to the TNM are necessary to inform decision-making regarding postoperative treatment strategies, especially stage II and III disease, and minimize overtreatment and undertreatment with Adj. We developed a prognostic prediction system for colorectal cancer using a combined convolutional neural network and support vector machine approach to extract features from hematoxylin and eosin staining images. We combined the TNM and our artificial intelligence (AI)-based classification system into a modified TNM-AI classification system with high discriminative power for recurrence-free survival. Furthermore, the cancer cell population recognized by this system as low risk of recurrence exhibited the mutational signature SBS87 as a genetic phenotype. The novel AI-based classification system developed here is expected to play an important role in prognostic prediction and personalized treatment selection in oncology.
降低结肠癌根治性切除术后的复发率,既不过度治疗也不治疗不足,仍然是一个挑战。术后辅助化疗(Adj)目前仅基于病理 TNM 分期进行。然而,具有相同疾病阶段的患者预后可能有显著差异。因此,除了 TNM 之外,还需要新的分类系统来为术后治疗策略的决策提供信息,特别是 II 期和 III 期疾病,并最大限度地减少 Adj 的过度治疗和治疗不足。我们使用卷积神经网络和支持向量机方法开发了一种结直肠癌预后预测系统,从苏木精和伊红染色图像中提取特征。我们将 TNM 与我们基于人工智能的分类系统相结合,形成了一种改良的 TNM-AI 分类系统,具有较高的无复发生存率判别能力。此外,该系统识别的癌症细胞群体表现出复发风险低的 SBS87 突变特征作为遗传表型。这里开发的新的基于人工智能的分类系统有望在肿瘤学中的预后预测和个性化治疗选择中发挥重要作用。