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A Machine Learning Approach to Predict Deep Venous Thrombosis Among Hospitalized Patients

机译:一种机器学习方法来预测住院患者治疗患者深静脉血栓形成

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Deep venous thrombosis (DVT) is associated with significant morbidity, mortality, and increased healthcare costs. Standard scoring systems for DVT risk stratification often provide insufficient stratification of hospitalized patients and are unable to accurately predict which inpatients are most likely to present with DVT. There is a continued need for tools which can predict DVT in hospitalized patients. We performed a retrospective study on a database collected from a large academic hospital, comprised of 99,237 total general ward or ICU patients, 2,378 of whom experienced a DVT during their hospital stay. Gradient boosted machine learning algorithms were developed to predict a patient’s risk of developing DVT at 12- and 24-hour windows prior to onset. The primary outcome of interest was diagnosis of in-hospital DVT. The machine learning predictors obtained AUROCs of 0.83 and 0.85 for DVT risk prediction on hospitalized patients at 12- and 24-hour windows, respectively. At both 12 and 24 hours before DVT onset, the most important features for prediction of DVT were cancer history, VTE history, and internal normalized ratio (INR). Improved risk stratification may prevent unnecessary invasive testing in patients for whom DVT cannot be ruled out using existing methods. Improved risk stratification may also allow for more targeted use of prophylactic anticoagulants, as well as earlier diagnosis and treatment, preventing the development of pulmonary emboli and other sequelae of DVT.
机译:深静脉血栓形成(DVT)与显着的发病率,死亡率和医疗成本增加有关。用于DVT风险分层的标准评分系统通常提供住院患者的不充分分层,无法准确预测哪些住院患者最有可能存在DVT。持续需要在住院患者中预测DVT的工具。我们对由大型学术医院收集的数据库进行了回顾性研究,该数据库由99,237普通的病房或ICU患者组成,其中2,378名在其住院期间经历了DVT。开发了梯度提升机学习算法,以预测患者在开始之前在12窗口中开发DVT的风险。兴趣的主要结果是诊断医院DVT。机器学习预测器分别获得了在12-小时和24小时窗口的住院患者的DVT风险预测0.83和0.85的AUROC。在DVT发作前12和24小时,DVT预测最重要的特征是癌症历史,VTE历史和内部归一化比率(INR)。提高风险分层可能会防止在DVT不能使用现有方法排除的患者中的不必要的侵入性测试。改善的风险分层也可以允许更靶向使用预防性抗凝血剂,以及早期的诊断和治疗,预防肺部栓塞和其他DVT的其他后遗症的开发。

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