Department of Colorectal Surgery, Fujian Medical University Union Hospital, Fuzhou, Fujian, People's Republic of China.
Cancer Med. 2024 Jul;13(14):e7416. doi: 10.1002/cam4.7416.
In this study, we aimed to evaluate the predictive value of circulating lymphocyte subsets and inflammatory indexes in response to neoadjuvant chemoradiotherapy (NCRT) in patients with rectal mucinous adenocarcinomas (MACs).
Rectal MAC patients who underwent NCRT and curative resection at Fujian Medical University Union Hospital's Department of Colorectal Surgery between 2016 and 2020 were included in the study. Patients were categorized into good and poor response groups based on their pathological response to NCRT. An independent risk factor-based nomogram model was constructed by utilizing multivariate logistic regression analysis. Additionally, the extreme gradient boosting (XGB) algorithm was applied to build a machine learning (ML)-based predictive model. Feature importance was quantified using the Shapley additive explanations method.
Out of the 283 participants involved in this research, 190 (67.1%) experienced an unfavorable outcome. To identify the independent risk factors, logistic regression analysis was performed, considering variables such as tumor length, pretreatment clinical T stage, PNI, and Th/Tc ratio. Subsequently, a nomogram model was constructed, achieving a C-index of 0.756. The ML model exhibited higher prediction accuracy than the nomogram model, achieving an AUROC of 0.824 in the training set and 0.762 in the tuning set. The top five important parameters of the ML model were identified as the Th/Tc ratio, neutrophil to lymphocyte, Th lymphocytes, Gross type, and T lymphocytes.
Radiochemotherapy sensitivity is markedly influenced by systemic inflammation and lymphocyte-mediated immune responses in rectal MAC patients. Our ML model integrating clinical characteristics, circulating lymphocyte subsets, and inflammatory indexes is a potential assessment tool that can provide a reference for individualized treatment for rectal MAC patients.
本研究旨在评估循环淋巴细胞亚群和炎症指标对接受新辅助放化疗(NCRT)的直肠黏液腺癌(MAC)患者的预测价值。
纳入 2016 年至 2020 年在福建医科大学附属协和医院结直肠外科接受 NCRT 及根治性切除术的直肠 MAC 患者。根据 NCRT 病理反应将患者分为治疗反应良好和不良两组。采用多因素 logistic 回归分析构建基于独立风险因素的列线图模型。此外,还应用极端梯度提升(XGB)算法构建机器学习(ML)预测模型。采用 Shapley 加性解释方法量化特征重要性。
本研究共纳入 283 例患者,其中 190 例(67.1%)预后不良。为了确定独立风险因素,进行了 logistic 回归分析,考虑了肿瘤长度、术前临床 T 分期、PNI 和 Th/Tc 比值等变量。随后构建了一个列线图模型,其 C 指数为 0.756。ML 模型的预测准确性高于列线图模型,在训练集和调谐集的 AUC 分别为 0.824 和 0.762。ML 模型的前五个重要参数为 Th/Tc 比值、中性粒细胞与淋巴细胞比值、Th 淋巴细胞、大体类型和 T 淋巴细胞。
直肠 MAC 患者的放射化疗敏感性受全身炎症和淋巴细胞介导的免疫反应的显著影响。我们的 ML 模型整合了临床特征、循环淋巴细胞亚群和炎症指标,是一种潜在的评估工具,可为直肠 MAC 患者的个体化治疗提供参考。