Hu Xiandou, Yang Zixuan, Ma Yuhu, Wang Mengqi, Liu Weijie, Qu Gaoya, Zhong Cuiping
The First School of Clinical Medicine, Gansu University of Chinese Medicine, Lanzhou, China.
Otolaryngology Head and Neck Surgery, The 940th Hospital of Joint Logistics Support Force of Chinese People's Liberation Army, Lanzhou, China.
Front Surg. 2023 Feb 7;10:1114922. doi: 10.3389/fsurg.2023.1114922. eCollection 2023.
The main obstacle to a patient's recovery following a tonsillectomy is complications, and bleeding is the most frequent culprit. Predicting post-tonsillectomy hemorrhage (PTH) allows for accurate identification of high-risk populations and the implementation of protective measures. Our study aimed to investigate how well machine learning models predict the risk of PTH.
Data were obtained from 520 patients who underwent a tonsillectomy at The 940th Hospital of Joint Logistics Support Force of Chinese People's Liberation Army. The age range of the patients was 2-57 years, and 364 (70%) were male. The prediction models were developed using five machine learning models: decision tree, support vector machine (SVM), extreme gradient boosting (XGBoost), random forest, and logistic regression. The performance of the models was evaluated using the area under the receiver operating characteristic curve (AUC). Shapley additive explanation (SHAP) was used to interpret the results of the best-performing model.
The frequency of PTH was 11.54% among the 520 patients, with 10.71% in the training group and 13.46% in the validation set. Age, BMI, season, smoking, blood type, INR, combined secretory otitis media, combined adenoidectomy, surgical wound, and use of glucocorticoids were selected by mutual information (MI) method. The XGBoost model had best AUC (0.812) and Brier score (0.152). Decision curve analysis (DCA) showed that the model had a high clinical utility. The SHAP method revealed the top 10 variables of MI according to the importance ranking, and the average of the age was recognized as the most important predictor variable.
This study built a PTH risk prediction model using machine learning. The XGBoost model is a tool with potential to facilitate population management strategies for PTH.
扁桃体切除术后患者恢复的主要障碍是并发症,而出血是最常见的原因。预测扁桃体切除术后出血(PTH)有助于准确识别高危人群并实施保护措施。我们的研究旨在调查机器学习模型预测PTH风险的能力。
数据来自中国人民解放军联勤保障部队第九四〇医院接受扁桃体切除术的520例患者。患者年龄范围为2至57岁,其中364例(70%)为男性。使用五种机器学习模型开发预测模型:决策树、支持向量机(SVM)、极端梯度提升(XGBoost)、随机森林和逻辑回归。使用受试者操作特征曲线(AUC)下的面积评估模型性能。使用Shapley加法解释(SHAP)来解释表现最佳模型的结果。
520例患者中PTH的发生率为11.54%,训练组为10.71%,验证集为13.46%。通过互信息(MI)方法选择了年龄、BMI、季节、吸烟、血型、国际标准化比值(INR)、合并分泌性中耳炎、合并腺样体切除术、手术伤口和糖皮质激素的使用情况。XGBoost模型的AUC最佳(0.812),Brier评分最佳(0.152)。决策曲线分析(DCA)表明该模型具有较高的临床实用性。SHAP方法根据重要性排名揭示了MI的前10个变量,年龄平均值被认为是最重要的预测变量。
本研究使用机器学习建立了PTH风险预测模型。XGBoost模型是一种有潜力促进PTH人群管理策略的工具。