Department of Epidemiology and Statistics, College of Public Health, Zhengzhou University, Zhengzhou, Henan, 450001, China.
Department of Clinical Nutrition, Daping Hospital, Army Medical University (Third Military Medical University), Chongqing, 400042, China.
BMC Cancer. 2024 Jun 10;24(1):711. doi: 10.1186/s12885-024-12483-4.
Inflammatory factors have increasingly become a more cost-effective prognostic indicator for gastric cancer (GC). The goal of this study was to develop a prognostic score system for gastric cancer patients based on inflammatory indicators.
Patients' baseline characteristics and anthropometric measures were used as predictors, and independently screened by multiple machine learning(ML) algorithms. We constructed risk scores to predict overall survival in the training cohort and tested risk scores in the validation. The predictors selected by the model were used in multivariate Cox regression analysis and developed a nomogram to predict the individual survival of GC patients.
A 13-variable adaptive boost machine (ADA) model mainly comprising tumor stage and inflammation indices was selected in a wide variety of machine learning models. The ADA model performed well in predicting survival in the validation set (AUC = 0.751; 95% CI: 0.698, 0.803). Patients in the study were split into two sets - "high-risk" and "low-risk" based on 0.42, the cut-off value of the risk score. We plotted the survival curves using Kaplan-Meier analysis.
The proposed model performed well in predicting the prognosis of GC patients and could help clinicians apply management strategies for better prognostic outcomes for patients.
炎症因子已日益成为评估胃癌(GC)更具成本效益的预后指标。本研究旨在基于炎症指标为胃癌患者开发一种预后评分系统。
以患者的基线特征和人体测量学指标作为预测因素,采用多种机器学习(ML)算法进行独立筛选。我们构建了风险评分来预测训练队列中的总生存期,并在验证中测试风险评分。对模型筛选出的预测因子进行多变量 Cox 回归分析,并开发列线图来预测 GC 患者的个体生存情况。
自适应增强机(ADA)模型选择了一个主要由肿瘤分期和炎症指标组成的 13 变量模型。该 ADA 模型在验证集中预测生存情况的表现良好(AUC=0.751;95%CI:0.698,0.803)。根据风险评分的 0.42 截断值,将研究中的患者分为“高风险”和“低风险”两组。我们使用 Kaplan-Meier 分析绘制了生存曲线。
所提出的模型在预测 GC 患者的预后方面表现良好,可帮助临床医生应用管理策略,为患者带来更好的预后结果。