Gao Lei, Liu Zi-Xuan, Wang Jiang-Ning
Department of Orthopedics Surgery, Beijing Shijitan Hospital Affiliated to Capital Medical University, Beijing 100038, China.
Department of Clinical Medicine, Capital Medical University, Beijing 100038, China.
World J Diabetes. 2025 Jul 15;16(7):104789. doi: 10.4239/wjd.v16.i7.104789.
Diabetic foot ulcer (DFU) is a serious and destructive complication of diabetes, which has a high amputation rate and carries a huge social burden. Early detection of risk factors and intervention are essential to reduce amputation rates. With the development of artificial intelligence technology, efficient interpretable predictive models can be generated in clinical practice to improve DFU care.
To develop and validate an interpretable model for predicting amputation risk in DFU patients.
This retrospective study collected basic data from 599 patients with DFU in Beijing Shijitan Hospital between January 2015 and June 2024. The data set was randomly divided into a training set and test set with fivefold cross-validation. Three binary variable models were built with the eXtreme Gradient Boosting (XGBoost) algorithm to input risk factors that predict amputation probability. The model performance was optimized by adjusting the super parameters. The predictive performance of the three models was expressed by sensitivity, specificity, positive predictive value, negative predictive value and area under the curve (AUC). Visualization of the prediction results was realized through SHapley Additive exPlanation (SHAP).
A total of 157 (26.2%) patients underwent minor amputation during hospitalization and 50 (8.3%) had major amputation. All three XGBoost models demonstrated good discriminative ability, with AUC values > 0.7. The model for predicting major amputation achieved the highest performance [AUC = 0.977, 95% confidence interval (CI): 0.956-0.998], followed by the minor amputation model (AUC = 0.800, 95%CI: 0.762-0.838) and the non-amputation model (AUC = 0.772, 95%CI: 0.730-0.814). Feature importance ranking of the three models revealed the risk factors for minor and major amputation. Wagner grade 4/5, osteomyelitis, and high C-reactive protein were all considered important predictive variables.
XGBoost effectively predicts diabetic foot amputation risk and provides interpretable insights to support personalized treatment decisions.
糖尿病足溃疡(DFU)是糖尿病一种严重且具有破坏性的并发症,截肢率高,社会负担巨大。早期发现危险因素并进行干预对于降低截肢率至关重要。随着人工智能技术的发展,在临床实践中可以生成高效可解释的预测模型,以改善DFU护理。
开发并验证一种用于预测DFU患者截肢风险的可解释模型。
这项回顾性研究收集了2015年1月至2024年6月期间北京世纪坛医院599例DFU患者的基础数据。数据集通过五折交叉验证随机分为训练集和测试集。使用极端梯度提升(XGBoost)算法构建三个二元变量模型,输入预测截肢概率的危险因素。通过调整超参数优化模型性能。三个模型的预测性能用灵敏度、特异度、阳性预测值、阴性预测值和曲线下面积(AUC)表示。通过夏普利值附加解释(SHAP)实现预测结果的可视化。
共有157例(26.2%)患者在住院期间接受了小截肢,50例(8.3%)接受了大截肢。所有三个XGBoost模型均显示出良好的判别能力,AUC值>0.7。预测大截肢的模型性能最高[AUC = 0.977,95%置信区间(CI):0.956 - 0.998],其次是小截肢模型(AUC = 0.800,95%CI:0.762 - 0.838)和非截肢模型(AUC = 0.772,95%CI:0.730 - 0.814)。三个模型的特征重要性排序揭示了小截肢和大截肢的危险因素。瓦格纳分级4/5、骨髓炎和高C反应蛋白均被认为是重要的预测变量。
XGBoost能有效预测糖尿病足截肢风险,并提供可解释的见解以支持个性化治疗决策。