Tabari Azadeh, Ma Yu, Alfonso Jesus, Gebran Anthony, Kaafarani Haytham, Bertsimas Dimitris, Daye Dania
Department of Radiology, Massachusetts General Hospital, Boston, MA; Harvard Medical School, Boston, MA.
Operations Research Center, Massachusetts Institute of Technology, Cambridge, MA.
J Vasc Surg Venous Lymphat Disord. 2025 Apr 30;13(5):102253. doi: 10.1016/j.jvsv.2025.102253.
Endovenous thermal ablation (EVTA) stands as one of the primary treatments for superficial venous insufficiency. Concern exists about the potential for thromboembolic complications following this procedure. Although rare, those complications can be severe, necessitating early identification of patients prone to increased thrombotic risks. This study aims to leverage artificial intelligence-based algorithms to forecast patients' likelihood of developing deep vein thrombosis (DVT) within 30 days following EVTA.
From 2007 to 2017, all patients who underwent EVTA were identified using the American College of Surgeons National Surgical Quality Improvement Program database. We developed and validated four machine learning models using demographics, comorbidities, and laboratory values to predict the risk of postoperative DVT: Classification and Regression Trees (CART), Optimal Classification Trees (OCT), Random Forests, and Extreme Gradient Boosting (XGBoost). The models were trained using all the available variables. SHapley Additive exPlanations analysis was adopted to interpret model outcomes and offer medical insights into feature importance and interactions.
A total of 21,549 patients were included (mean age, 54 ± 14 years; 67% female). In this cohort, 1.59% developed DVT. The XGBoost model had good discriminative power for predicting DVT risk with area under the curve of 0.711 in the hold-out test set for the all-variable model. Stratification of the test set by age, body mass index, preoperative white blood cell count, and platelet count shows that the model performs equally well across these groups.
We developed and validated an interpretable model that enables physicians to predict which patients with superficial venous insufficiency has higher risk of developing DVT within 30 days following EVTA.
静脉内热消融术(EVTA)是治疗浅静脉功能不全的主要方法之一。人们担心该手术后有发生血栓栓塞并发症的可能性。尽管这些并发症很少见,但可能很严重,因此需要尽早识别血栓形成风险增加的患者。本研究旨在利用基于人工智能的算法预测接受EVTA治疗后30天内发生深静脉血栓形成(DVT)的可能性。
从2007年到2017年,使用美国外科医师学会国家外科质量改进计划数据库识别所有接受EVTA治疗的患者。我们开发并验证了四种使用人口统计学、合并症和实验室值来预测术后DVT风险的机器学习模型:分类与回归树(CART)、最优分类树(OCT)、随机森林和极端梯度提升(XGBoost)。使用所有可用变量对模型进行训练。采用SHapley加性解释分析来解释模型结果,并提供有关特征重要性和相互作用的医学见解。
共纳入21549例患者(平均年龄54±14岁;67%为女性)。在这个队列中,有1.59%发生了DVT。XGBoost模型在全变量模型的验证测试集中对DVT风险具有良好的判别能力,曲线下面积为0.711。按年龄、体重指数、术前白细胞计数和血小板计数对测试集进行分层显示,该模型在这些组中表现同样良好。
我们开发并验证了一个可解释的模型,该模型能够让医生预测哪些浅静脉功能不全的患者在接受EVTA治疗后30天内发生DVT的风险更高。