Li Ben, Eisenberg Naomi, Beaton Derek, Lee Douglas S, Al-Omran Leen, Wijeysundera Duminda N, Hussain Mohamad A, Rotstein Ori D, de Mestral Charles, Mamdani Muhammad, Roche-Nagle Graham, Al-Omran Mohammed
Department of Surgery, University of Toronto, Toronto, Canada.
Division of Vascular Surgery, St. Michael's Hospital, Unity Health Toronto, Toronto, Canada.
Sci Rep. 2025 Jan 31;15(1):3924. doi: 10.1038/s41598-024-81625-2.
Transcarotid artery revascularization (TCAR) is a relatively new and technically challenging procedure that carries a non-negligible risk of complications. Risk prediction tools may help guide clinical decision-making but remain limited. We developed machine learning (ML) algorithms that predict 1-year outcomes following TCAR. The Vascular Quality Initiative (VQI) database was used to identify patients who underwent TCAR between 2016 and 2023. We identified 115 features from the index hospitalization (82 pre-operative [demographic/clinical], 14 intra-operative [procedural], and 19 post-operative [in-hospital course/complications]). The primary outcome was 1-year post-procedural stroke or death. The data was divided into training (70%) and test (30%) sets. Six ML models were trained using pre-operative features with tenfold cross-validation. Overall, 38,325 patients were included (mean age 73.1 [SD 9.0] years, 14,248 [37.2%] female) and 2,672 (7.0%) developed 1-year stroke or death. The best pre-operative prediction model was XGBoost, achieving an AUROC of 0.91 (95% CI 0.90-0.92). In comparison, logistic regression had an AUROC of 0.68 (95% CI 0.66-0.70). The XGBoost model maintained excellent performance at the intra- and post-operative stages, with AUROC's (95% CI's) of 0.92 (0.91-0.93) and 0.94 (0.93-0.95), respectively. Our ML algorithm has potential for important utility in guiding peri-operative risk-mitigation strategies to prevent adverse outcomes following TCAR.
经颈动脉血管重建术(TCAR)是一种相对较新且技术上具有挑战性的手术,存在不可忽视的并发症风险。风险预测工具可能有助于指导临床决策,但仍有局限性。我们开发了预测TCAR术后1年结局的机器学习(ML)算法。利用血管质量倡议(VQI)数据库识别2016年至2023年间接受TCAR的患者。我们从首次住院期间确定了115个特征(82个术前[人口统计学/临床]特征、14个术中[手术过程]特征和19个术后[住院过程/并发症]特征)。主要结局是术后1年发生中风或死亡。数据分为训练集(70%)和测试集(30%)。使用术前特征通过十折交叉验证训练了六个ML模型。总体而言,共纳入38325例患者(平均年龄73.1[标准差9.0]岁,14248例[37.2%]为女性),2672例(7.0%)发生术后1年中风或死亡。最佳术前预测模型是XGBoost,曲线下面积(AUROC)为0.91(95%置信区间0.90 - 0.92)。相比之下,逻辑回归的AUROC为0.68(95%置信区间0.66 - 0.70)。XGBoost模型在术中和术后阶段均保持了出色的性能,AUROC(95%置信区间)分别为0.92(0.91 - 0.93)和0.94(0.93 - 0.95)。我们的ML算法在指导围手术期风险缓解策略以预防TCAR术后不良结局方面具有重要应用潜力。