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首页> 外文期刊>Acta Cardiologica >Cardiovascular prevention in general practice: development and validation of an algorithm.
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Cardiovascular prevention in general practice: development and validation of an algorithm.

机译:一般实践中的心血管预防:算法的开发和验证。

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摘要

OBJECTIVE: General practice visits are a unique opportunity to identify and treat individuals with a high cardiovascular (CV) risk. However, a case-finding strategy suited to the daily general practice is not provided in the CV prevention guidelines.We wanted to create, validate and test an algorithm for global CV risk assessment and management. METHODS: The algorithm was 1) developed based on evidence from epidemiological studies and clinical trials, 2) validated in a population-based cohort and 3) tested by randomly selected general practitioners (GPs) who rated its usefulness and applicability. RESULTS: 1) Screening for seven clinical risk factors (RF) allowed a quick classification of patients in four CV risk typologies: obvious high risk (previous CV event and/or type 2 diabetes) in 17%, obvious low risk (no RF) in 14%, smoking-related risk (single RF) in 6%, or undetermined risk (any other RF) to further evaluate in 63% patients. Inter-physician reproducibility for risk prediction was excellent. Overall, predicted risk was high, moderate and low in 25, 17 and 58% of the patients, respectively. 2) These risk predictions were validated in a cohort of 962 men followed over 10 years. 3) Most GPs reported that the algorithm was applicable and useful, while half of them started using it frequently in their daily practice. CONCLUSION: This algorithm is a new, pragmatic and evidence-based strategy for systematic and global CV risk management. It was validated at the population level, and shown to be applicable and useful in the daily general practice.
机译:目的:全科就诊是识别和治疗心血管高风险患者的独特机会。但是,《简历预防》未提供适合日常常规操作的案例发现策略,我们希望创建,验证和测试用于全球简历风险评估和管理的算法。方法:该算法是1)基于流行病学研究和临床试验的证据开发的; 2)在基于人群的队列中进行验证的方法; 3)由随机选择的全科医生(GP)对其效果和适用性进行了评估。结果:1)通过筛查七个临床风险因素(RF),可以对患者进行四种CV风险类型的快速分类:明显的高风险(先前的CV事件和/或2型糖尿病)占17%,明显的低风险(无RF) 14%的患者有吸烟相关风险(单一RF),另有63%的患者有未确定的风险(任何其他RF)需要进一步评估。医师间的风险预测可重复性非常好。总体而言,分别有25%,17%和58%的患者的预测风险为高,中和低。 2)这些风险预测在10年后的962名男性队列中得到了验证。 3)大多数GP都报告说该算法是适用且有用的,而其中有一半的人在日常实践中开始频繁使用它。结论:该算法是一种新的,务实的,基于证据的策略,用于系统和全局的简历风险管理。它已在总体水平上得到验证,并在日常通用实践中显示出适用性和有用性。

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