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幽门螺杆菌感染是胃切除术后胃癌复发的主要高危因素:一项8年多中心回顾性研究

 

Authors Liu Y , Shang X, Du W, Shen W, Zhu Y

Received 3 July 2024

Accepted for publication 24 October 2024

Published 29 October 2024 Volume 2024:17 Pages 4999—5014

DOI https://doi.org/10.2147/IJGM.S485347

Checked for plagiarism Yes

Review by Single anonymous peer review

Peer reviewer comments 2

Editor who approved publication: Prof. Dr. Héctor Mora-Montes

Yuan Liu,1,2,* Xingchen Shang,1,* Wenyi Du,1,* Wei Shen,1 Yanfei Zhu1 

1Department of General Surgery, Wuxi Medical Center of Nanjing Medical University, Wuxi, People’s Republic of China; 2Department of General Surgery, Tengzhou Central People’s Hospital, Jining Medical College, Shandong, People’s Republic of China

*These authors contributed equally to this work

Correspondence: Wei Shen; Yanfei Zhu, Department of General Surgery, Wuxi Medical Center of Nanjing Medical University, Wuxi, People’s Republic of China, Tel +8613385110723 ; +8617852061572, Email shenweiijs@outlook.com; wxsrmyy@outlook.com

Purpose: The reappearance of gastric cancer, a frequent postoperative complication following radical gastric cancer surgery, substantially impacts the near-term and far-reaching medical outlook of patients. The objective of this research was to create a machine learning algorithm that could recognize high-risk factors for gastric cancer recurrence and anticipate the correlation between gastric cancer recurrence and Helicobacter pylori (H. pylori) infection.
Patients and Methods: This investigation comprised 1234 patients diagnosed with gastric cancer, and 37 characteristic variables were obtained. Four machine learning algorithms, namely, extreme gradient boosting (XGBoost), random forest (RF), k-nearest neighbor algorithm (KNN), and multilayer perceptron (MLP), were implemented to develop the models. The k-fold cross-validation technique was utilized to perform internal validation of the four models, while independent datasets were employed for external validation of the models.
Results: In contrast to the other machine learning models, the XGBoost algorithm demonstrated superior predictive ability regarding high-risk factors for gastric cancer recurrence. The outcomes of Shapley additive explanation (SHAP) analysis revealed that tumor invasion depth, tumor lymph node metastasis, H. pylori infection, postoperative carcinoembryonic antigen (CEA), tumor size, and tumor number were risk elements for gastric cancer recurrence in patients, with H. pylori infection being the primary high-risk factor.
Conclusion: Out of the four machine learning models, the XGBoost algorithm exhibited superior performance in predicting the recurrence of gastric cancer. In addition, machine learning models can help clinicians identify key prognostic factors that are clinically meaningful for the application of personalized patient monitoring and immunotherapy.

Keywords: gastric tumor, gastrectomy, helicobacter pylori, immunotherapy, risk factor, machine learning