Lu Tong, Lu Miao, Liu Haonan, Song Daqing, Wang Zhengzheng, Guo Yahui, Fang Yu, Chen Qi, Li Tao
Department of Emergency Medicine, Jining No.1 People's Hospital, Jining, China.
Wuxi Mental Health Center, Wuxi, China.
Front Oncol. 2024 Apr 11;13:1282042. doi: 10.3389/fonc.2023.1282042. eCollection 2023.
Gastric cancer is a prevalent gastrointestinal malignancy worldwide. In this study, a prognostic model was developed for gastric cancer patients who underwent radical gastrectomy using machine learning, employing advanced computational techniques to investigate postoperative mortality risk factors in such patients.
Data of 295 patients with gastric cancer who underwent radical gastrectomy at the Department of General Surgery of Affiliated Hospital of Xuzhou Medical University (Xuzhou, China) between March 2016 and November 2019 were retrospectively analyzed as the training group. Additionally, 109 patients who underwent radical gastrectomy at the Department of General Surgery Affiliated to Jining First People's Hospital (Jining, China) were included for external validation. Four machine learning models, including logistic regression (LR), decision tree (DT), random forest (RF), and gradient boosting machine (GBM), were utilized. Model performance was assessed by comparing the area under the curve (AUC) for each model. An LR-based nomogram model was constructed to assess patients' clinical prognosis.
Lasso regression identified eight associated factors: age, sex, maximum tumor diameter, nerve or vascular invasion, TNM stage, gastrectomy type, lymphocyte count, and carcinoembryonic antigen (CEA) level. The performance of these models was evaluated using the AUC. In the training group, the AUC values were 0.795, 0.759, 0.873, and 0.853 for LR, DT, RF, and GBM, respectively. In the validation group, the AUC values were 0.734, 0.708, 0.746, and 0.707 for LR, DT, RF, and GBM, respectively. The nomogram model, constructed based on LR, demonstrated excellent clinical prognostic evaluation capabilities.
Machine learning algorithms are robust performance assessment tools for evaluating the prognosis of gastric cancer patients who have undergone radical gastrectomy. The LR-based nomogram model can aid clinicians in making more reliable clinical decisions.
胃癌是全球常见的胃肠道恶性肿瘤。在本研究中,利用机器学习为接受根治性胃切除术的胃癌患者开发了一种预后模型,采用先进的计算技术研究此类患者术后的死亡风险因素。
回顾性分析2016年3月至2019年11月在徐州医科大学附属医院(中国徐州)普通外科接受根治性胃切除术的295例胃癌患者的数据作为训练组。此外,纳入了在济宁市第一人民医院(中国济宁)普通外科接受根治性胃切除术的109例患者进行外部验证。使用了四种机器学习模型,包括逻辑回归(LR)、决策树(DT)、随机森林(RF)和梯度提升机(GBM)。通过比较每个模型的曲线下面积(AUC)来评估模型性能。构建了基于LR的列线图模型以评估患者的临床预后。
套索回归确定了八个相关因素:年龄、性别、最大肿瘤直径、神经或血管侵犯、TNM分期、胃切除类型、淋巴细胞计数和癌胚抗原(CEA)水平。使用AUC评估这些模型的性能。在训练组中,LR、DT、RF和GBM的AUC值分别为0.795、0.759、0.873和0.853。在验证组中,LR、DT、RF和GBM的AUC值分别为0.734、0.708、0.746和0.707。基于LR构建的列线图模型显示出出色的临床预后评估能力。
机器学习算法是评估接受根治性胃切除术的胃癌患者预后的强大性能评估工具。基于LR的列线图模型可以帮助临床医生做出更可靠的临床决策。