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Discovery of predictors of sudden cardiac arrest in diabetes: rationale and outline of the RESCUED (REcognition of Sudden Cardiac arrest vUlnErability in Diabetes) project

机译:糖尿病突发心脏骤停的预测因子的发现:救助的理由和概述(糖尿病患者心脏骤停脆弱性的概述)项目

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摘要

Introduction Early recognition of individuals with increased risk of sudden cardiac arrest (SCA) remains challenging. SCA research so far has used data from cardiologist care, but missed most SCA victims, since they were only in general practitioner (GP) care prior to SCA. Studying individuals with type 2 diabetes (T2D) in GP care may help solve this problem, as they have increased risk for SCA, and rich clinical datasets, since they regularly visit their GP for check-up measurements. This information can be further enriched with extensive genetic and metabolic information.Aim To describe the study protocol of the REcognition of Sudden Cardiac arrest vUlnErability in Diabetes (RESCUED) project, which aims at identifying clinical, genetic and metabolic factors contributing to SCA risk in individuals with T2D, and to develop a prognostic model for the risk of SCA.Methods The RESCUED project combines data from dedicated SCA and T2D cohorts, and GP data, from the same region in the Netherlands. Clinical data, genetic data (common and rare variant analysis) and metabolic data (metabolomics) will be analysed (using classical analysis techniques and machine learning methods) and combined into a prognostic model for risk of SCA.Conclusion The RESCUED project is designed to increase our ability at early recognition of elevated SCA risk through an innovative strategy of focusing on GP data and a multidimensional methodology including clinical, genetic and metabolic analyses.
机译:简介早期识别个人与心脏骤停(SCA)的风险增加仍然具有挑战性。 SCA的研究,到目前为止已经使用来自心脏保健的数据,但错过了大部分SCA的受害者,因为他们只是在全科医生(GP)关心SCA之前。同类型的个人研究2型糖尿病(T2D)在GP护理可以帮助解决这个问题,因为他们已经增加了对SCA的风险,和丰富的临床数据集,因为他们经常拜访他们的GP进行体检测量。这些信息可以广泛的遗传和代谢information.Aim为了描述心脏骤停的脆弱性糖尿病识别(营救)项目的研究方案,将进一步丰富其目的是识别个人贡献SCA风险临床,遗传和代谢因素与T2D,并制定SCA.Methods的风险预测模型从专用SCA和T2D同伙,和GP数据,来自荷兰的同一区域获救项目结合数据。临床资料,基因数据(常见和稀有变异分析)和代谢数据(代谢物)进行分析(使用传统的分析技术和机器学习方法),并组合成SCA.Conclusion的风险获救项目旨在增加预后模型在早期识别的升高SCA风险通过专注于GP数据和多维方法包括临床,遗传和代谢分析的创新战略,我们的能力。

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