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机器学习风险评分可预测左心室射血分数谱中的死亡率。

A machine learning risk score predicts mortality across the spectrum of left ventricular ejection fraction.

机构信息

Department of Cardiology, University of California, San Diego, CA, USA.

Department of Physics, University of California, Santa Barbara, CA, USA.

出版信息

Eur J Heart Fail. 2021 Jun;23(6):995-999. doi: 10.1002/ejhf.2155. Epub 2021 Apr 6.

DOI:10.1002/ejhf.2155
PMID:33724626
Abstract

AIMS

Heart failure (HF) guideline recommendations categorize patients according to left ventricular ejection (LVEF). Mortality risk, however, varies considerably within each category and the likelihood of death in an individual patient is often uncertain. Accurate assessment of mortality risk is an important component in the decision-making process for many therapies. In this report, we assess the accuracy of MARKER-HF, a recently described machine learning-based risk score, in predicting mortality of patients in the three guideline-defined HF categories and its ability to distinguish risk of death for patients within each category.

METHODS AND RESULTS

MARKER-HF was used to calculate mortality risk in a hospital-based cohort of 4064 patients categorized into groups with reduced, mid-range, or preserved LVEF. MARKER-HF was substantially more accurate than LVEF in predicting mortality and was highly accurate in all three HF categories, with c-statistics ranging between 0.83 to 0.89. Moreover, MARKER-HF accurately discriminated between patients at high, intermediate and low levels of mortality risk within each of the three categories of HF used by guidelines.

CONCLUSIONS

MARKER-HF accurately predicts mortality in patients within the three categories of HF used in guidelines for management recommendations and it discriminates between magnitude of risk of patients in each category. MARKER-HF mortality risk prediction should be helpful to providers in making recommendations regarding the advisability of therapies designed to mitigate this risk, particularly when they are costly or associated with adverse events, and for patients and their families in making future plans.

摘要

目的

心力衰竭(HF)指南建议根据左心室射血分数(LVEF)对患者进行分类。然而,在每个类别中,死亡率风险差异很大,个体患者死亡的可能性通常不确定。准确评估死亡率风险是许多治疗方法决策过程中的重要组成部分。在本报告中,我们评估了最近描述的基于机器学习的风险评分 MARKER-HF 在预测指南定义的三个 HF 类别中患者死亡率的准确性及其区分每个类别中患者死亡风险的能力。

方法和结果

使用 MARKER-HF 计算了一个基于医院的 4064 例患者队列的死亡率风险,这些患者被分为 LVEF 降低、中等范围或保留的组。MARKER-HF 在预测死亡率方面明显优于 LVEF,并且在所有三个 HF 类别中都具有很高的准确性,C 统计介于 0.83 至 0.89 之间。此外,MARKER-HF 还可以准确区分指南中使用的三个 HF 类别中处于高、中、低死亡风险水平的患者。

结论

MARKER-HF 可以准确预测指南中用于管理建议的三个 HF 类别中患者的死亡率,并且可以区分每个类别中患者风险的程度。MARKER-HF 死亡率风险预测有助于提供者就旨在减轻这种风险的治疗方法的适宜性提出建议,特别是当这些治疗方法昂贵或与不良事件相关时,并且有助于患者及其家属制定未来计划。

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