Li Ben, Eisenberg Naomi, Beaton Derek, Lee Douglas S, Aljabri Badr, Wijeysundera Duminda N, Rotstein Ori D, de Mestral Charles, Mamdani Muhammad, Roche-Nagle Graham, Al-Omran Mohammed
Department of Surgery, University of Toronto, Toronto, ON, Canada; Division of Vascular Surgery, St. Michael's Hospital, Unity Health Toronto, Toronto, ON, Canada; Institute of Medical Science, University of Toronto, Toronto, ON, Canada; Temerty Centre for Artificial Intelligence Research and Education in Medicine (T-CAIREM), University of Toronto, Toronto, ON, Canada.
Division of Vascular Surgery, Peter Munk Cardiac Centre, University Health Network, Toronto, ON, Canada.
J Vasc Surg. 2024 Mar;79(3):593-608.e8. doi: 10.1016/j.jvs.2023.09.037. Epub 2023 Oct 5.
Suprainguinal bypass for peripheral artery disease (PAD) carries important surgical risks; however, outcome prediction tools remain limited. We developed machine learning (ML) algorithms that predict outcomes following suprainguinal bypass.
The Vascular Quality Initiative database was used to identify patients who underwent suprainguinal bypass for PAD between 2003 and 2023. We identified 100 potential predictor variables from the index hospitalization (68 preoperative [demographic/clinical], 13 intraoperative [procedural], and 19 postoperative [in-hospital course/complications]). The primary outcomes were major adverse limb events (MALE; composite of untreated loss of patency, thrombectomy/thrombolysis, surgical revision, or major amputation) or death at 1 year following suprainguinal bypass. Our data were split into training (70%) and test (30%) sets. Using 10-fold cross-validation, we trained six ML models using preoperative features (Extreme Gradient Boosting [XGBoost], random forest, Naïve Bayes classifier, support vector machine, artificial neural network, and logistic regression). The primary model evaluation metric was area under the receiver operating characteristic curve (AUROC). The best performing algorithm was further trained using intra- and postoperative data. Model robustness was evaluated using calibration plots and Brier scores. Performance was assessed on subgroups based on age, sex, race, ethnicity, rurality, median Area Deprivation Index, symptom status, procedure type, prior intervention for PAD, concurrent interventions, and urgency.
Overall, 16,832 patients underwent suprainguinal bypass, and 3136 (18.6%) developed 1-year MALE or death. Patients with 1-year MALE or death were older (mean age, 64.9 vs 63.5 years; P < .001) with more comorbidities, had poorer functional status (65.7% vs 80.9% independent at baseline; P < .001), and were more likely to have chronic limb-threatening ischemia (67.4% vs 47.6%; P < .001) than those without an outcome. Despite being at higher cardiovascular risk, they were less likely to receive acetylsalicylic acid or statins preoperatively and at discharge. Our best performing prediction model at the preoperative stage was XGBoost, achieving an AUROC of 0.92 (95% confidence interval [CI], 0.91-0.93). In comparison, logistic regression had an AUROC of 0.67 (95% CI, 0.65-0.69). Our XGBoost model maintained excellent performance at the intra- and postoperative stages, with AUROCs of 0.93 (95% CI, 0.92-0.94) and 0.98 (95% CI, 0.97-0.99), respectively. Calibration plots showed good agreement between predicted and observed event probabilities with Brier scores of 0.12 (preoperative), 0.11 (intraoperative), and 0.10 (postoperative). Of the top 10 predictors, nine were preoperative features including chronic limb-threatening ischemia, previous procedures, comorbidities, and functional status. Model performance remained robust on all subgroup analyses.
We developed ML models that accurately predict outcomes following suprainguinal bypass, performing better than logistic regression. Our algorithms have potential for important utility in guiding perioperative risk mitigation strategies to prevent adverse outcomes following suprainguinal bypass.
股动脉上旁路手术治疗外周动脉疾病(PAD)存在重大手术风险;然而,结局预测工具仍然有限。我们开发了机器学习(ML)算法来预测股动脉上旁路手术后的结局。
利用血管质量倡议数据库识别2003年至2023年间接受股动脉上旁路手术治疗PAD的患者。我们从首次住院期间确定了100个潜在预测变量(68个术前变量[人口统计学/临床变量]、13个术中变量[手术变量]和19个术后变量[住院过程/并发症])。主要结局为股动脉上旁路手术后1年的主要肢体不良事件(MALE;包括未处理的通畅丧失、血栓切除术/溶栓、手术翻修或大截肢的复合事件)或死亡。我们的数据被分为训练集(70%)和测试集(30%)。使用10折交叉验证,我们使用术前特征训练了六个ML模型(极端梯度提升[XGBoost]、随机森林、朴素贝叶斯分类器、支持向量机、人工神经网络和逻辑回归)。主要模型评估指标是受试者操作特征曲线下面积(AUROC)。使用术中和术后数据对表现最佳的算法进行进一步训练。使用校准图和Brier评分评估模型稳健性。根据年龄、性别、种族、民族、农村地区、中位地区贫困指数、症状状态、手术类型、PAD既往干预措施、同期干预措施和紧急程度对亚组的表现进行评估。
总体而言,16832例患者接受了股动脉上旁路手术,3136例(18.6%)发生了1年MALE或死亡。发生1年MALE或死亡的患者年龄更大(平均年龄,分别为64.9岁和63.5岁;P <.001),合并症更多,功能状态较差(基线时独立的比例分别为65.7%和80.9%;P <.001),与未出现结局的患者相比,更有可能患有慢性肢体威胁性缺血(分别为67.4%和47.6%;P <.001)。尽管心血管风险较高,但他们术前和出院时接受阿司匹林或他汀类药物治疗的可能性较小。我们在术前阶段表现最佳的预测模型是XGBoost,AUROC为0.92(95%置信区间[CI],0.91 - 0.93)。相比之下,逻辑回归的AUROC为0.67(95%CI,0.65 - 0.69)。我们的XGBoost模型在术中和术后阶段保持了优异的表现,AUROC分别为0.93(95%CI,0.92 - 0.94)和0.98(95%CI,0.97 - 0.99)。校准图显示预测和观察到的事件概率之间具有良好的一致性,Brier评分为0.12(术前)、0.11(术中)和0.10(术后)。在前10个预测因素中,9个是术前特征,包括慢性肢体威胁性缺血、既往手术、合并症和功能状态。在所有亚组分析中,模型表现仍然稳健。
我们开发了能够准确预测股动脉上旁路手术后结局的ML模型,其表现优于逻辑回归。我们的算法在指导围手术期风险缓解策略以预防股动脉上旁路手术后的不良结局方面具有重要应用潜力。