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Predictive models for identifying risk of readmission after index hospitalization for heart failure: A systematic review
- Source :
- European journal of cardiovascular nursing : journal of the Working Group on Cardiovascular Nursing of the European Society of Cardiology, vol 17, iss 8, European journal of cardiovascular nursing, vol 17, iss 8
- Publication Year :
- 2018
- Publisher :
- eScholarship, University of California, 2018.
-
Abstract
- AimsReadmission rates for patients with heart failure have consistently remained high over the past two decades. As more electronic data, computing power, and newer statistical techniques become available, data-driven care could be achieved by creating predictive models for adverse outcomes such as readmissions. We therefore aimed to review models for predicting risk of readmission for patients admitted for heart failure. We also aimed to analyze and possibly group the predictors used across the models.MethodsMajor electronic databases were searched to identify studies that examined correlation between readmission for heart failure and risk factors using multivariate models. We rigorously followed the review process using PRISMA methodology and other established criteria for quality assessment of the studies.ResultsWe did a detailed review of 334 papers and found 25 multivariate predictive models built using data from either health system or trials. A majority of models was built using multiple logistic regression followed by Cox proportional hazards regression. Some newer studies ventured into non-parametric and machine learning methods. Overall predictive accuracy with C-statistics ranged from 0.59 to 0.84. We examined significant predictors across the studies using clinical, administrative, and psychosocial groups.ConclusionsComplex disease management and correspondingly increasing costs for heart failure are driving innovations in building risk prediction models for readmission. Large volumes of diverse electronic data and new statistical methods have improved the predictive power of the models over the past two decades. More work is needed for calibration, external validation, and deployment of such models for clinical use.
- Subjects :
- Adult
Male
Heart Failure
and over
Nursing
Middle Aged
statistical models
Cardiorespiratory Medicine and Haematology
Cardiovascular
Patient Readmission
Risk Assessment
Hospitalization
Heart Disease
Logistic Models
Theoretical
Risk Factors
Models
80 and over
Public Health and Health Services
Humans
Female
Patient Safety
Forecasting
Aged
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- European journal of cardiovascular nursing : journal of the Working Group on Cardiovascular Nursing of the European Society of Cardiology, vol 17, iss 8, European journal of cardiovascular nursing, vol 17, iss 8
- Accession number :
- edsair.dedup.wf.001..046932c4068e0237c4cad5f83c13e7b2