Faculty of Medicine, Newcastle University, United Kingdom.
School of Data Science, City University of Hong Kong, Hong Kong, PR China.
Atherosclerosis. 2020 May;301:30-36. doi: 10.1016/j.atherosclerosis.2020.03.004. Epub 2020 Mar 9.
Risk stratification in acute myocardial infarction (AMI) is important for guiding clinical management. Current risk scores are mostly derived from clinical trials with stringent patient selection. We aimed to establish and evaluate a composite scoring system to improve short-term mortality classification after index episodes of AMI, independent of electrocardiography (ECG) pattern, in a large real-world cohort.
Using electronic health records, patients admitted to our regional teaching hospital (derivation cohort, n = 1747) and an independent tertiary care center (validation cohort, n = 1276), with index acute myocardial infarction between January 2013 and December 2017, as confirmed by principal diagnosis and laboratory findings, were identified retrospectively.
Univariate logistic regression was used as the primary model to identify potential contributors to mortality. Stepwise forward likelihood ratio logistic regression revealed that neutrophil-to-lymphocyte ratio, peripheral vascular disease, age, and serum creatinine (NPAC) were significant for 90-day mortality (Hosmer- Lemeshow test, p = 0.21). Each component of the NPAC score was weighted by beta-coefficients in multivariate analysis. The C-statistic of the NPAC score was 0.75, which was higher than the conventional Charlson's score (C-statistic = 0.63). Judicious application of a deep learning model to our dataset improved the accuracy of classification with a C-statistic of 0.81.
The NPAC score comprises four items from routine laboratory parameters to basic clinical information and can facilitate early identification of cases at risk of short-term mortality following index myocardial infarction. Deep learning model can serve as a gatekeeper to facilitate clinical decision-making.
急性心肌梗死(AMI)的风险分层对于指导临床管理非常重要。目前的风险评分主要来自于临床试验,这些临床试验对患者的选择非常严格。我们旨在建立和评估一种综合评分系统,以改善指数 AMI 后短期死亡率的分类,该系统独立于心电图(ECG)模式,适用于大型真实世界队列。
使用电子健康记录,回顾性地确定了 2013 年 1 月至 2017 年 12 月期间在我们的区域教学医院(推导队列,n=1747)和一个独立的三级保健中心(验证队列,n=1276)因确诊的 AMI 入院的患者。
单变量逻辑回归被用作识别死亡相关因素的主要模型。逐步向前似然比逻辑回归显示,中性粒细胞与淋巴细胞比值、外周血管疾病、年龄和血清肌酐(NPAC)对 90 天死亡率有显著影响(Hosmer-Lemeshow 检验,p=0.21)。在多变量分析中,NPAC 评分的每个组成部分都由β系数加权。NPAC 评分的 C 统计量为 0.75,高于传统的 Charlson 评分(C 统计量=0.63)。明智地将深度学习模型应用于我们的数据集,提高了分类的准确性,C 统计量为 0.81。
NPAC 评分由常规实验室参数、基本临床信息的四个项目组成,可以帮助早期识别指数性心肌梗死后短期死亡风险的病例。深度学习模型可以作为一个守门员,以促进临床决策。