利用机器学习模型预测PAD患者血运重建后血栓形成。

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Frontiers in Artificial Intelligence Pub Date : 2025-05-07 eCollection Date: 2025-01-01 DOI:10.3389/frai.2025.1540503
Samir Ghandour, Adriana A Rodriguez Alvarez, Isabella F Cieri, Shiv Patel, Mounika Boya, Rahul Chaudhary, Anna Poucey, Anahita Dua
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引用次数: 0

摘要

背景:下肢血管重建术(LER)后移植物/支架血栓形成是外周动脉疾病(PAD)患者的严重并发症,常导致截肢。因此,预测动脉血栓事件(ATE)在1年内是至关重要的。鉴于血运重建术后血栓形成的高发生率,本研究旨在开发一种结合粘弹性测试和患者特异性变量的机器学习模型(MLM)来预测LER后ATE。方法:我们前瞻性地招募了2020年至2024年期间接受LER治疗的PAD患者,收集了人口统计学、临床和干预相关数据,以及血运重建术后12个 月以上的围手术期血栓弹性成像和血小板制图(eg - pm)值。单因素分析从52个候选变量中确定了预测因子。多个传销,包括逻辑回归,XGBoost和决策树算法,开发和评估使用70-30训练测试分裂和五倍交叉验证。采用合成少数过采样技术(SMOTE)来解决主要结果(ATE与无ATE)之间的类别不平衡。通过曲线下面积(AUC)、准确性、敏感性、特异性、阴性预测值和阳性预测值来评估模型的性能。结果:308例患者中,66%为男性,84%为白人,18.3%在血运重建术后随访1年期间发生ATE。logistic回归MLM表现出最佳的描述性和校准性能,特别是当TEG-PM参数与患者特异性基线特征结合使用时,AUC为0.76,分类准确率为70%,灵敏度为68%,特异性为71%。结论:将患者特异性特征与MLMs的TEG-PM值相结合,可以有效预测PAD患者LER后ATE,增强高危患者识别,实现量身定制的血栓预防。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using machine learning models to predict post-revascularization thrombosis in PAD.

Background: Graft/ stent thrombosis after lower extremity revascularization (LER) is a serious complication in patients with peripheral arterial disease (PAD), often leading to amputation. Thus, predicting arterial thrombotic events (ATE) within 1 year is crucial. Given the high rates of thrombosis post-revascularization, this study aimed to develop a machine learning model (MLM) incorporating viscoelastic testing and patient-specific variables to predict ATE following LER.

Methods: We prospectively enrolled PAD patients undergoing LER from 2020 to 2024, collecting demographic, clinical, and intervention-related data alongside perioperative thromboelastography with platelet mapping (TEG-PM) values over 12 months post-revascularization. Univariate analysis identified predictors from 52 candidate variables. Multiple MLMs, including logistic regression, XGBoost, and decision tree algorithms, were developed and evaluated using a 70-30 train-test split and five-fold cross-validation. The Synthetic Minority Oversampling Technique (SMOTE) was employed to address the class imbalance between the primary outcomes (ATE vs. no ATE). Model performance was assessed by area under the curve (AUC), accuracy, sensitivity, specificity, negative predictive value, and positive predictive value.

Results: Of the 308 patients analyzed, 66% were male, 84% were White, and 18.3% experienced an ATE during the one-year post-revascularization follow-up period. The logistic regression MLM demonstrated the best combined descriptive and calibration performance, especially when TEG-PM parameters were used in combination with patient-specific baseline characteristics, with an AUC of 0.76, classification accuracy of 70%, sensitivity of 68%, and specificity of 71%.

Conclusion: Combining patient-specific characteristics with TEG-PM values in MLMs can effectively predict ATE following LER in PAD patients, enhancing high-risk patient identification and enabling tailored thromboprophylaxis.

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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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