Clinical Prediction Models for Heart Failure Hospitalization in Type 2 Diabetes: A Systematic Review and Meta‐Analysis

Author:

Razaghizad Amir123ORCID,Oulousian Emily3,Randhawa Varinder Kaur4ORCID,Ferreira João Pedro56ORCID,Brophy James M.12ORCID,Greene Stephen J.78ORCID,Guida Julian3,Felker G. Michael78ORCID,Fudim Marat78ORCID,Tsoukas Michael9,Peters Tricia M.910,Mavrakanas Thomas A.11ORCID,Giannetti Nadia2ORCID,Ezekowitz Justin12ORCID,Sharma Abhinav123ORCID

Affiliation:

1. Centre for Outcomes Research and Evaluation Research Institute of the McGill University Health Centre Montreal QC Canada

2. Division of Cardiology McGill University Health CentreMcGill University Montreal Quebec Canada

3. DREAM‐CV Laboratory McGill University Health CentreMcGill University Montreal Quebec Canada

4. Department of Cardiovascular Medicine Kaufman Center for Heart Failure and Recovery Heart, Vascular and Thoracic Institute Cleveland Clinic Cleveland OH

5. University of LorraineInserm, Centre d'Investigations Cliniques, ‐ Plurithématique 14‐33, Inserm U1116CHRUF‐CRIN INI‐CRCT (Cardiovascular and Renal Clinical Trialists) Nancy France

6. Department of Surgery and Physiology Cardiovascular Research and Development Center Faculty of Medicine of the University of PortoPorto Portugal

7. Division of Cardiology Duke University School of Medicine Durham NC

8. Duke Clinical Research Institute Durham NC

9. Division of Endocrinology Department of Medicine McGill University Montreal QC Canada

10. Centre for Clinical Epidemiology Lady Davis Institute for Medical Research Montreal QC Canada

11. Division of Nephrology Department of Medicine McGill University Health Centre and Research Institute Montreal Canada

12. Division of Cardiology University of Alberta Edmonton Alberta Canada

Abstract

Background Clinical prediction models have been developed for hospitalization for heart failure in type 2 diabetes. However, a systematic evaluation of these models’ performance, applicability, and clinical impact is absent. Methods and Results We searched Embase, MEDLINE, Web of Science, Google Scholar, and Tufts’ clinical prediction registry through February 2021. Studies needed to report the development, validation, clinical impact, or update of a prediction model for hospitalization for heart failure in type 2 diabetes with measures of model performance and sufficient information for clinical use. Model assessment was done with the Prediction Model Risk of Bias Assessment Tool, and meta‐analyses of model discrimination were performed. We included 15 model development and 3 external validation studies with data from 999 167 people with type 2 diabetes. Of the 15 models, 6 had undergone external validation and only 1 had low concern for risk of bias and applicability (Risk Equations for Complications of Type 2 Diabetes). Seven models were presented in a clinically useful manner (eg, risk score, online calculator) and 2 models were classified as the most suitable for clinical use based on study design, external validity, and point‐of‐care usability. These were Risk Equations for Complications of Type 2 Diabetes (meta‐analyzed c‐statistic, 0.76) and the Thrombolysis in Myocardial Infarction Risk Score for Heart Failure in Diabetes (meta‐analyzed c‐statistic, 0.78), which was the simplest model with only 5 variables. No studies reported clinical impact. Conclusions Most prediction models for hospitalization for heart failure in patients with type 2 diabetes have potential concerns with risk of bias or applicability, and uncertain external validity and clinical impact. Future research is needed to address these knowledge gaps.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

Cardiology and Cardiovascular Medicine

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