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利用电子健康记录(包含或不包含标准化心电图诊断)开发和验证 3 年房颤预测模型,并对模型间的性能进行比较。

Development and Validation of 3-Year Atrial Fibrillation Prediction Models Using Electronic Health Record With or Without Standardized Electrocardiogram Diagnosis and a Performance Comparison Among Models.

机构信息

Department of Biostatistics Korea University College of Medicine Seoul Republic of Korea.

Cardiovascular and Arrhythmia Center Chung-Ang University Hospital Seoul Republic of Korea.

出版信息

J Am Heart Assoc. 2022 Jun 21;11(12):e024045. doi: 10.1161/JAHA.121.024045. Epub 2022 Jun 14.

Abstract

Background Improved prediction of atrial fibrillation (AF) may allow for earlier interventions for stroke prevention, as well as mortality and morbidity from other AF-related complications. We developed a clinically feasible and accurate AF prediction model using electronic health records and computerized ECG interpretation. Methods and Results A total of 671 318 patients were screened from 3 tertiary hospitals. After careful exclusion of cases with missing values and a prior AF diagnosis, AF prediction models were developed from the derivation cohort of 25 584 patients without AF at baseline. In the internal/external validation cohort of 117 523 patients, the model using 6 clinical features and 5 ECG diagnoses showed the highest performance for 3-year new-onset AF prediction (C-statistic, 0.796 [95% CI, 0.785-0.806]). A more simplified model using age, sex, and 5 ECG diagnoses (atrioventricular block, fusion beats, marked sinus arrhythmia, supraventricular premature complex, and wide QRS complex) had comparable predictive power (C-statistic, 0.777 [95% CI, 0.766-0.788]). The simplified model showed a similar or better predictive performance than the previous models. In the subgroup analysis, the models performed relatively better in patients without risk factors. Specifically, the predictive power was lower in patients with heart failure or decreased renal function. Conclusions Although the 3-year AF prediction model using both clinical and ECG variables showed the highest performance, the simplified model using age, sex, and 5 ECG diagnoses also had a comparable prediction power with broad applicability for incident AF.

摘要

背景

改善心房颤动 (AF) 的预测可能有助于更早地进行预防中风的干预,以及降低其他与 AF 相关并发症的死亡率和发病率。我们使用电子健康记录和计算机化心电图解释开发了一种临床可行且准确的 AF 预测模型。

方法和结果

从 3 家三级医院筛选了 671318 名患者。在仔细排除有缺失值和既往 AF 诊断的病例后,从基线时无 AF 的 25584 名患者的推导队列中开发了 AF 预测模型。在 117523 名内部/外部验证队列患者中,使用 6 个临床特征和 5 个心电图诊断的模型在预测 3 年内新发 AF 方面表现出最高性能(C 统计量,0.796 [95%CI,0.785-0.806])。使用年龄、性别和 5 个心电图诊断(房室传导阻滞、融合波、明显窦性心律失常、室上性早搏和宽 QRS 波群)的更简化模型具有可比的预测能力(C 统计量,0.777 [95%CI,0.766-0.788])。简化模型的预测性能与之前的模型相似或更好。在亚组分析中,该模型在无危险因素的患者中表现出相对更好的性能。具体来说,在心力衰竭或肾功能下降的患者中,预测能力较低。

结论

虽然使用临床和心电图变量的 3 年 AF 预测模型表现出最高性能,但使用年龄、性别和 5 个心电图诊断的简化模型也具有可比的预测能力,适用于新发 AF。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8fa5/9238645/ac3f5f753dc7/JAH3-11-e024045-g003.jpg

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