British Heart Foundation/University Centre for Cardiovascular Science, University of Edinburgh, Edinburgh, UK.
Usher Institute, University of Edinburgh, Edinburgh, UK.
Nat Med. 2023 May;29(5):1201-1210. doi: 10.1038/s41591-023-02325-4. Epub 2023 May 11.
Although guidelines recommend fixed cardiac troponin thresholds for the diagnosis of myocardial infarction, troponin concentrations are influenced by age, sex, comorbidities and time from symptom onset. To improve diagnosis, we developed machine learning models that integrate cardiac troponin concentrations at presentation or on serial testing with clinical features and compute the Collaboration for the Diagnosis and Evaluation of Acute Coronary Syndrome (CoDE-ACS) score (0-100) that corresponds to an individual's probability of myocardial infarction. The models were trained on data from 10,038 patients (48% women), and their performance was externally validated using data from 10,286 patients (35% women) from seven cohorts. CoDE-ACS had excellent discrimination for myocardial infarction (area under curve, 0.953; 95% confidence interval, 0.947-0.958), performed well across subgroups and identified more patients at presentation as low probability of having myocardial infarction than fixed cardiac troponin thresholds (61 versus 27%) with a similar negative predictive value and fewer as high probability of having myocardial infarction (10 versus 16%) with a greater positive predictive value. Patients identified as having a low probability of myocardial infarction had a lower rate of cardiac death than those with intermediate or high probability 30 days (0.1 versus 0.5 and 1.8%) and 1 year (0.3 versus 2.8 and 4.2%; P < 0.001 for both) from patient presentation. CoDE-ACS used as a clinical decision support system has the potential to reduce hospital admissions and have major benefits for patients and health care providers.
虽然指南建议使用固定的心脏肌钙蛋白阈值来诊断心肌梗死,但肌钙蛋白浓度会受到年龄、性别、合并症和症状发作时间的影响。为了提高诊断准确性,我们开发了机器学习模型,这些模型将就诊时或连续检测时的心脏肌钙蛋白浓度与临床特征相结合,并计算出对应的 CoDE-ACS 评分(0-100 分),该评分代表个体发生心肌梗死的概率。这些模型在来自 10038 名患者(48%为女性)的数据中进行了训练,并在来自来自七个队列的 10286 名患者(35%为女性)的数据中进行了外部验证。CoDE-ACS 对心肌梗死具有出色的鉴别能力(曲线下面积为 0.953;95%置信区间为 0.947-0.958),在各个亚组中表现良好,并在就诊时识别出更多低概率发生心肌梗死的患者(61%比 27%),其阴性预测值相似,而识别出更多高概率发生心肌梗死的患者(10%比 16%),阳性预测值更高。被识别为低概率发生心肌梗死的患者在 30 天(0.1%比 0.5%和 1.8%;P<0.001)和 1 年(0.3%比 2.8%和 4.2%;P<0.001)时发生心脏性死亡的比率低于中或高概率的患者。将 CoDE-ACS 用作临床决策支持系统有可能减少住院人数,并为患者和医疗保健提供者带来重大益处。