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使用机器学习预测静脉曲张消融术后临床改善不佳的情况。

Predicting lack of clinical improvement following varicose vein ablation using machine learning.

作者信息

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

机构信息

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.

出版信息

J Vasc Surg Venous Lymphat Disord. 2025 May;13(3):102162. doi: 10.1016/j.jvsv.2024.102162. Epub 2024 Dec 26.

Abstract

OBJECTIVE

Varicose vein ablation is generally indicated in patients with active/healed venous ulcers. However, patient selection for intervention in individuals without venous ulcers is less clear. Tools that predict lack of clinical improvement (LCI) after vein ablation may help guide clinical decision-making but remain limited. We developed machine learning (ML) algorithms that predict 1-year LCI after varicose vein ablation.

METHODS

The Vascular Quality Initiative database was used to identify patients who underwent endovenous or surgical varicose vein treatment for Clinical-Etiological-Anatomical-Pathophysiological (CEAP) C2 to C4 disease between 2014 and 2024. We identified 226 predictive features (111 preoperative [demographic/clinical], 100 intraoperative [procedural], and 15 postoperative [immediate postoperative course/complications]). The primary outcome was 1-year LCI, defined as a preoperative Venous Clinical Severity Score (VCSS) minus postoperative VCSS of ≤0, indicating no clinical improvement after vein ablation. The data were divided into training (70%) and test (30%) sets. Six ML models were trained using preoperative features with 10-fold cross-validation (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 algorithm with the best performance was further trained using intraoperative and postoperative features. The focus was on preoperative features, whereas intraoperative and postoperative features were of secondary importance, because preoperative predictions offer the most potential to mitigate risk, such as deciding whether to proceed with intervention. Model calibration was assessed using calibration plots, and the accuracy of probabilistic predictions was evaluated with Brier scores. Performance was evaluated across subgroups based on age, sex, race, ethnicity, rurality, median Area Deprivation Index, prior ipsilateral varicose vein ablation, location of primary vein treated, and treatment type.

RESULTS

Overall, 33,924 patients underwent varicose vein treatment (30,602 endovenous [90.2%] and 3322 surgical [9.8%]) during the study period and 5619 (16.6%) experienced 1-year LCI. Patients who developed the primary outcome were older, more likely to be socioeconomically disadvantaged, and less likely to use compression therapy routinely. They also had less severe disease as characterized by lower preoperative VCSS, Varicose Vein Symptom Questionnaire scores, and CEAP classifications. The best preoperative prediction model was XGBoost, achieving an AUROC of 0.94 (95% confidence interval [CI], 0.93-0.95). In comparison, logistic regression had an AUROC of 0.71 (95% CI, 0.70-0.73). The XGBoost model had marginally improved performance at the intraoperative and postoperative stages, both achieving an AUROC of 0.97 (95% CI, 0.96-0.98). 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, 7 were preoperative features including VCSS, Varicose Vein Symptom Questionnaire score, CEAP classification, prior varicose vein ablation, thrombus in the greater saphenous vein, and reflux in the deep veins. Model performance remained robust across all subgroups.

CONCLUSIONS

We developed ML models that can accurately predict outcomes after endovenous and surgical varicose vein treatment for CEAP C2 to C4 disease, performing better than logistic regression. These algorithms have potential for important utility in guiding patient counseling and perioperative risk mitigation strategies to prevent LCI after varicose vein ablation.

摘要

目的

静脉曲张消融术通常适用于患有活动性/已愈合静脉溃疡的患者。然而,对于没有静脉溃疡的个体,干预的患者选择尚不清楚。预测静脉消融术后临床改善不足(LCI)的工具可能有助于指导临床决策,但仍很有限。我们开发了机器学习(ML)算法来预测静脉曲张消融术后1年的LCI。

方法

使用血管质量倡议数据库来识别2014年至2024年间因临床-病因-解剖-病理生理(CEAP)C2至C4疾病接受静脉内或手术治疗静脉曲张的患者。我们确定了226个预测特征(111个术前[人口统计学/临床]、100个术中[手术过程]和15个术后[术后即刻病程/并发症])。主要结局是1年LCI,定义为术前静脉临床严重程度评分(VCSS)减去术后VCSS≤0,表明静脉消融术后无临床改善。数据分为训练集(70%)和测试集(30%)。使用术前特征通过10倍交叉验证训练了六个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)。使用术中及术后特征对性能最佳的算法进行进一步训练。重点是术前特征,而术中及术后特征次要,因为术前预测最有潜力降低风险,例如决定是否进行干预。使用校准图评估模型校准,并使用Brier评分评估概率预测的准确性。根据年龄、性别、种族、民族、农村地区、中位地区剥夺指数、既往同侧静脉曲张消融术、治疗的主要静脉位置和治疗类型在亚组中评估性能。

结果

总体而言,在研究期间有33924例患者接受了静脉曲张治疗(30602例静脉内治疗[90.2%]和3322例手术治疗[9.8%]),5619例(16.6%)出现1年LCI。发生主要结局的患者年龄较大,社会经济地位较低,且较少常规使用压迫疗法。他们的疾病也不太严重,表现为术前VCSS、静脉曲张症状问卷评分和CEAP分类较低。最佳术前预测模型是XGBoost,AUROC为0.94(95%置信区间[CI],0.93 - 0.95)。相比之下,逻辑回归的AUROC为0.71(95%CI,0.70 - 0.73)。XGBoost模型在术中及术后阶段性能略有改善,两者的AUROC均为0.97(95%CI,0.96 - 0.98)。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评分术前为0.12、术中为0.11、术后为0.10。在前10个预测因素中,7个是术前特征,包括VCSS、静脉曲张症状问卷评分、CEAP分类、既往静脉曲张消融术、大隐静脉血栓和深静脉反流。模型性能在所有亚组中均保持稳健。

结论

我们开发的ML模型可以准确预测CEAP C2至C4疾病的静脉内和手术静脉曲张治疗后的结局,性能优于逻辑回归。这些算法在指导患者咨询和围手术期风险降低策略以预防静脉曲张消融术后的LCI方面具有重要应用潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e735/11803835/d2503851dd57/gr1.jpg

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