Cardiology Department, Complejo Hospitalario Universitario de Santiago de Compostela, Santiago de Compostela, Spain.
Critical Patient Translational Research Group, Department of Anesthesiology, Intensive Care and Pain Management, Complejo Hospitalario Universitario, Santiago de Compostela, Spain.
Diab Vasc Dis Res. 2020 Jan-Feb;17(1):1479164119892137. doi: 10.1177/1479164119892137. Epub 2019 Dec 16.
The risk of major adverse cardiac and cerebrovascular events following acute coronary syndrome is increased in people with diabetes. Predicting out-of-hospital outcomes upon follow-up remains difficult, and no simple, well-validated tools exist for this population at present. We aim to evaluate several factors in a competing risks model for actionable evaluation of the incidence of major adverse cardiac and cerebrovascular events in diabetic outpatients following acute coronary syndrome.
Retrospective analysis of consecutive patients admitted for acute coronary syndrome in two centres. A Fine-Gray competing risks model was adjusted to predict major adverse cardiac and cerebrovascular events and all-cause mortality. A point-based score is presented that is based on this model.
Out of the 1400 patients, there were 783 (55.9%) with at least one major adverse cardiac and cerebrovascular event (417 deaths). Of them, 143 deaths were due to non-major adverse cardiac and cerebrovascular events. Predictive Fine-Gray models show that the 'PG-HACKER' risk factors (gender, age, peripheral arterial disease, left ventricle function, previous congestive heart failure, Killip class and optimal medical therapy) were associated to major adverse cardiac and cerebrovascular events.
The PG-HACKER score is a simple and effective tool that is freely available and easily accessible to physicians and patients. The PG-HACKER score can predict major adverse cardiac and cerebrovascular events following acute coronary syndrome in patients with diabetes.
患有糖尿病的人在发生急性冠状动脉综合征后发生主要不良心脑血管事件的风险增加。预测随访期间的院外结局仍然很困难,目前针对该人群尚无简单、经过充分验证的工具。我们旨在评估竞争风险模型中的几个因素,以便对急性冠状动脉综合征后糖尿病门诊患者发生主要不良心脑血管事件的风险进行可操作的评估。
对两个中心连续收治的急性冠状动脉综合征患者进行回顾性分析。采用 Fine-Gray 竞争风险模型来预测主要不良心脑血管事件和全因死亡率。基于该模型提出了一个基于点的评分。
在 1400 名患者中,有 783 名(55.9%)至少发生了一次主要不良心脑血管事件(417 例死亡)。其中,143 例死亡是非主要不良心脑血管事件所致。预测性 Fine-Gray 模型显示,“PG-HACKER”危险因素(性别、年龄、外周动脉疾病、左心室功能、既往充血性心力衰竭、Killip 分级和最佳药物治疗)与主要不良心脑血管事件相关。
PG-HACKER 评分是一种简单有效的工具,它是免费的,医生和患者都可以轻松获得和使用。PG-HACKER 评分可预测糖尿病患者发生急性冠状动脉综合征后的主要不良心脑血管事件。