Abstract
BACKGROUND: Delayed wound healing is a common clinical complication following gastric cancer radical surgery, adversely affecting patient prognosis. With advances in artificial intelligence, machine learning offers a promising approach for developing predictive models that can identify high-risk patients and support early clinical intervention. AIM: To construct machine learning-based risk prediction models for delayed wound healing after gastric cancer surgery to support clinical decision-making. METHODS: We reviewed a total of 514 patients who underwent gastric cancer radical surgery under general anesthesia from January 1, 2014 to December 30, 2023. Seventy percent of the dataset was selected as the training set and 30% as the validation set. Decision trees, support vector machines, and logistic regression were used to construct a risk prediction model. The performance of the model was evaluated using accuracy, recall, precision, F1 index, and area under the receiver operating characteristic curve and decision curve. RESULTS: This study included five variables: Sex, elderly, duration of abdominal drainage, preoperative white blood cell (WBC) count, and absolute value of neutrophils. These variables were selected based on their clinical relevance and statistical significance in predicting delayed wound healing. The results showed that the decision tree model outperformed the logistic regression and support vector machine models in both the training and validation sets. Specifically, the decision tree model achieved higher accuracy, F1 index, recall, and area under the curve (AUC) values. The support vector machine model also demonstrated better performance than logistic regression, with higher accuracy, recall, and F1 index, but a slightly lower AUC. The key variables of sex, elderly, duration of abdominal drainage, preoperative WBC count, and absolute value of neutrophils were found to be strong predictors of delayed wound healing. Patients with longer duration of abdominal drainage had a significantly higher risk of delayed wound healing, with a risk ratio of 1.579 compared to those with shorter duration of abdominal drainage. Similarly, preoperative WBC count, sex, elderly, and absolute value of neutrophils were associated with a higher risk of delayed wound healing, highlighting the importance of these variables in the model. CONCLUSION: The model is able to identify high-risk patients based on sex, elderly, duration of abdominal drainage, preoperative WBC count, and absolute value of neutrophils can provide valuable insights for clinical decision-making.