重症监护室新发房颤临床预测模型的开发和外部验证:一项多中心、回顾性队列研究。

IF 24.1 1区 医学 Q1 MEDICAL INFORMATICS
Jonathan P Bedford, Oliver Redfern, Stephen Gerry, Robert Hatch, Liza Keating, David Clifton, Gary S Collins, Peter J Watkinson
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引用次数: 0

摘要

背景:新发心房颤动是一种与短期和长期不良后果相关的疾病,在重症监护病房(icu)住院患者中很常见。识别高风险患者可以为预防性干预措施的试验提供信息,并有助于确定此类干预措施的目标。我们的目的是开发和外部验证一个预测模型的新发心房颤动入住icu的患者。方法:我们在英国的3个icu和美国的4个icu中进行了一项多中心、回顾性队列研究。年龄在16岁及以上且无明显心律失常病史或临床表现的患者入住ICU超过3小时符合入选条件。我们分析了临床变量,以研究预定候选变量与新发房颤风险之间的关系,并建立了一个模型来估计这些风险。我们开发了METRIC-AF模型,这是一个包含动态变量的机器学习模型。模型性能通过模型开发期间的内部-外部交叉验证进行评估,并通过使用来自英国各地icu的多中心数据进行外部验证。然后,我们使用三个重要的预测因子开发了一个简单的图形预测工具。研究结果:在2008年至2019年期间入住ICU的39084例符合条件的患者中,2797例(7.2%)在入住ICU的前7天内发生了新发心房颤动。我们确定了候选变量与新发房颤风险之间的多个非线性关联,包括血清浓度低于0.70 mmol/L的低镁血症。最终的METRIC-AF模型包含10个常规收集的临床变量。与已发表的logistic回归模型相比,METRIC-AF模型显示出更好的校准、临床相关风险阈值的净收益和判别性能(C统计量0.812 [95% CI 0.805 - 0.822] vs 0.786 [0.778 - 0.801]; p= 0.0003)。在外部验证数据集中,简单的图形工具在归因新发房颤风险方面表现良好(C统计量0.727 [95% CI 0.716 - 0.739])。解释:METRIC-AF模型及其伴随的图形工具可以支持识别ICU入院期间新发房颤风险增加的患者,通过使用常规临床数据提供有针对性的预防策略和试验丰富。作为研究的一部分,还开发了一个在线应用程序,用于探索个体之间的预测生成和前瞻性研究的外部验证。资助:国家卫生与保健研究所(NIHR)和NIHR牛津生物医学研究中心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and external validation of a clinical prediction model for new-onset atrial fibrillation in intensive care: a multicentre, retrospective cohort study.

Background: New-onset atrial fibrillation, a condition associated with adverse outcomes in the short and long term, is common in patients admitted to intensive care units (ICUs). Identifying patients at high risk could inform trials of preventive interventions and help to target such interventions. We aimed to develop and externally validate a prediction model for new-onset atrial fibrillation in patients admitted to ICUs.

Methods: We conducted a multicentre, retrospective cohort study in three ICUs across the UK and four ICUs across the USA. Patients aged 16 years and older admitted to an ICU for more than 3 h without a history or presentation of clinically significant arrhythmia were eligible for inclusion. We analysed clinical variables to investigate the associations between predetermined candidate variables and risk of new-onset atrial fibrillation and to develop a model to estimate these risks. We developed the METRIC-AF model, a machine learning model incorporating dynamic variables. Model performance was assessed through internal-external cross-validation during model development and externally validated by use of multicentre data from ICUs across the UK. We then developed a simple graphical prediction tool using three important predictors.

Findings: Among 39 084 eligible patients admitted to an ICU between 2008 and 2019, 2797 (7·2%) developed new-onset atrial fibrillation during the first 7 days of their ICU stay. We identified multiple non-linear associations between candidate variables and risk of new-onset atrial fibrillation, including hypomagnesaemia at serum concentrations below 0·70 mmol/L. The final METRIC-AF model contained ten routinely collected clinical variables. Compared with a published logistic regression model, the METRIC-AF model showed superior calibration, net benefit across clinically relevant risk thresholds, and discriminative performance (C statistic 0·812 [95% CI 0·805-0·822] vs 0·786 [0·778-0·801]; p=0·0003). The simple graphical tool performed well in attributing the risk of new-onset atrial fibrillation in the external validation dataset (C statistic 0·727 [95% CI 0·716-0·739]).

Interpretation: The METRIC-AF model and its companion graphical tool could support the identification of patients at increased risk of developing new-onset atrial fibrillation during ICU admission, informing targeted prophylactic strategies and trial enrichment by use of routinely available clinical data. An online app also developed as part of the study allows for the exploration of prediction generation among individuals and external validation in prospective studies.

Funding: National Institute for Health and Care Research (NIHR) and NIHR Oxford Biomedical Research Centre.

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来源期刊
CiteScore
41.20
自引率
1.60%
发文量
232
审稿时长
13 weeks
期刊介绍: The Lancet Digital Health publishes important, innovative, and practice-changing research on any topic connected with digital technology in clinical medicine, public health, and global health. The journal’s open access content crosses subject boundaries, building bridges between health professionals and researchers.By bringing together the most important advances in this multidisciplinary field,The Lancet Digital Health is the most prominent publishing venue in digital health. We publish a range of content types including Articles,Review, Comment, and Correspondence, contributing to promoting digital technologies in health practice worldwide.
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