使用当代 UNOS 数据的可解释机器学习方法,识别无法通过桥梁进行心脏移植的患者

M. Mardini, Chen Bai, Maisara Bledsoe, Benjamin Shickel, Mohammad A. Al-Ani
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引用次数: 0

摘要

作为心脏移植(HTx)的桥梁,主动脉内球囊反搏泵(IABP)和Impella设备的使用近来大幅增加。本研究旨在创建并验证一个可解释的机器学习(ML)模型,该模型可预测状态二列表的失败,并确定对这一结果有显著影响的临床特征。我们使用 UNOS 注册数据库来识别 2018 年至 2022 年期间列为 UNOS 状态二的 HTx 候选者,并支持 Impella(5.0 或 5.5)或 IABP。我们使用梯度提升(XGBoost)算法来构建和验证 ML 模型。我们开发了两个模型:(1) 包含队列中所有患者的综合模型;(2) 为 11 个 UNOS 地区分别设计的单独模型。我们分析了 4,178 名列为状态 2 的患者的数据,其中 12% 的主要结果显示状态 2 失败。我们的 ML 模型基于 UNOS 数据中的 19 个变量。综合模型的曲线下面积(AUC)为 0.71(±0.03),不同地区的范围在 0.44(±0.08)和 0.74(±0.01)之间。模型的特异性介于 0.75 和 0.96 之间。最重要的前五个预测因素分别是肌注次数、肌酐、钠、体重指数和血型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An explainable machine learning approach using contemporary UNOS data to identify patients who fail to bridge to heart transplantation
The use of Intra-aortic Balloon Pump (IABP) and Impella devices as a bridge to heart transplantation (HTx) has increased significantly in recent times. This study aimed to create and validate an explainable machine learning (ML) model that can predict the failure of status two listings and identify the clinical features that significantly impact this outcome.We used the UNOS registry database to identify HTx candidates listed as UNOS Status 2 between 2018 and 2022 and supported with either Impella (5.0 or 5.5) or IABP. We used the eXtreme Gradient Boosting (XGBoost) algorithm to build and validate ML models. We developed two models: (1) a comprehensive model that included all patients in our cohort and (2) separate models designed for each of the 11 UNOS regions.We analyzed data from 4,178 patients listed as Status 2. Out of them, 12% had primary outcomes indicating Status 2 failure. Our ML models were based on 19 variables from the UNOS data. The comprehensive model had an area under the curve (AUC) of 0.71 (±0.03), with a range between 0.44 (±0.08) and 0.74 (±0.01) across different regions. The models' specificity ranged from 0.75 to 0.96. The top five most important predictors were the number of inotropes, creatinine, sodium, BMI, and blood group.Using ML is clinically valuable for highlighting patients at risk, enabling healthcare providers to offer intensified monitoring, optimization, and care escalation selectively.
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