3.8 Article

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

Journal

OPEN HEART
Volume 8, Issue 1, Pages -

Publisher

BMJ PUBLISHING GROUP
DOI: 10.1136/openhrt-2020-001554

Keywords

ventricular fibrillation; heart arrest; electronic health records; diabetes mellitus; epidemiology

Funding

  1. European Union's Horizon 2020 research and innovation programme under acronym ESCAPE-NET [733381]
  2. COST Action PARC - COST (European Cooperation in Science and Technology [CA19137]
  3. Netherlands CardioVascular Research Initiative
  4. Dutch Heart Foundation
  5. Dutch Federation of University Medical Centres [CVON2017-15 RESCUED, CVON2018-30 Predict2]
  6. Redmond WA, USA
  7. VUMC, Dutch Federation of University Medical Centres
  8. Dutch Science Organisation NWO
  9. Dutch Organisation for Health Research and Development ZonMw, Dutch Diabetes Foundation
  10. European Foundation for the Study of Diabetes, International Diabetes Federation
  11. European Innovative Medicine Initiative
  12. European Union
  13. Netherlands Organisation for Health Research and Development
  14. Royal Netherlands Academy of Sciences

Ask authors/readers for more resources

The RESCUED project aims to identify clinical, genetic, and metabolic factors contributing to SCA risk in individuals with T2D and develop a prognostic model for the risk of SCA. It combines data from dedicated SCA and T2D cohorts, as well as GP data, and utilizes classical analysis techniques and machine learning methods to create the prognostic model. The project is designed to improve early recognition of elevated SCA risk by focusing on GP data and employing a multidimensional methodology including clinical, genetic, and metabolic analyses.
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.

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