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Background: Patients with heart failure (HF) are the most commonly readmitted group of adult patients in Germany. Most patients with HF are readmitted for noncardiovascular reasons. Understanding the relevance of HF management outside the hospital setting is critical to understanding HF and factors that lead to readmission. Application of machine learning (ML) on data from statutory health insurance (SHI) allows the evaluation of large longitudinal data sets representative of the general population to support clinical decision-making.
Objective: This study aims to evaluate the ability of ML methods to predict 1-year all-cause and HF-specific readmission after initial HF-related admission of patients with HF in outpatient SHI data and identify important predictors.
Methods: We identified individuals with HF using outpatient data from 2012 to 2018 from the AOK Baden-Württemberg SHI in Germany. We then trained and applied regression and ML algorithms to predict the first all-cause and HF-specific readmission in the year after the first admission for HF. We fitted a random forest, an elastic net, a stepwise regression, and a logistic regression to predict readmission by using diagnosis codes, drug exposures, demographics (age, sex, nationality, and type of coverage within SHI), degree of rurality for residence, and participation in disease management programs for common chronic conditions (diabetes mellitus type 1 and 2, breast cancer, chronic obstructive pulmonary disease, and coronary heart disease). We then evaluated the predictors of HF readmission according to their importance and direction to predict readmission.
Results: Our final data set consisted of 97,529 individuals with HF, and 78,044 (80%) were readmitted within the observation period. Of the tested modeling approaches, the random forest approach best predicted 1-year all-cause and HF-specific readmission with a C-statistic of 0.68 and 0.69, respectively. Important predictors for 1-year all-cause readmission included prescription of pantoprazole, chronic obstructive pulmonary disease, atherosclerosis, sex, rurality, and participation in disease management programs for type 2 diabetes mellitus and coronary heart disease. Relevant features for HF-specific readmission included a large number of canonical HF comorbidities.
Conclusions: While many of the predictors we identified were known to be relevant comorbidities for HF, we also uncovered several novel associations. Disease management programs have widely been shown to be effective at managing chronic disease; however, our results indicate that in the short term they may be useful for targeting patients with HF with comorbidity at increased risk of readmission. Our results also show that living in a more rural location increases the risk of readmission. Overall, factors beyond comorbid disease were relevant for risk of HF readmission. This finding may impact how outpatient physicians identify and monitor patients at risk of HF readmission.
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http://dx.doi.org/10.2196/54994 | DOI Listing |
Qual Manag Health Care
September 2025
Author Affiliations: Department of Medicine, University of Miami Health System, Miami, Florida (Dr Yan); University of Miami Miller School of Medicine, Miami, Florida (Mr Erben); Clinical Care Transformation, University of Miami Health System, Miami, Florida (Ms Sarmiento, Ms Kelly); Division of Car
Background: Heart failure (HF) readmission rates at our institution were often higher than the expected levels for our institution type. Social work post-discharge telephone calls were identified as an opportunity to address reasons for HF therapy noncompliance, a major reason for readmissions identified among HF patients at our institution.
Methods: Our study aimed to improve existing post-discharge telephone outreach performed by social workers to reduce 30-day all-cause readmission rates in traditional Medicare patients with HF at a single academic tertiary care hospital.
Am J Manag Care
July 2025
Coreva Scientific GmbH & Co KG, Im Muehlenbruch 1, 53639 Koenigswinter, Germany. Email:
Objective: To understand clinical and health economic outcomes in patients receiving standard-of-care (SOC), out-of-hospital management for recently diagnosed heart failure (HF) in the US.
Study Design: Systematic literature review with a subsequent pooled rates analysis.
Methods: Researchers reviewed randomized controlled trials (RCTs) indexed in PubMed and EMBASE between 2008 and 2023.
JMIR Cardio
July 2024
Department of General Internal Medicine and Psychosomatics, Heidelberg University Hospital, Heidelberg University, Heidelberg, Germany.
Background: Patients with heart failure (HF) are the most commonly readmitted group of adult patients in Germany. Most patients with HF are readmitted for noncardiovascular reasons. Understanding the relevance of HF management outside the hospital setting is critical to understanding HF and factors that lead to readmission.
View Article and Find Full Text PDFJ Card Fail
March 2025
Division of Cardiology, David Geffen School of Medicine at UCLA, Los Angeles, CA; VA Health Service Research and Development Center for the Study of Healthcare Innovation, Implementation, and Policy, VA Greater Los Angeles Healthcare System, Los Angeles, CA.
Background: How housing insecurity might affect patients with heart failure (HF) is not well characterized. Housing insecurity increases risks related to both communicable and noncommunicable diseases. For patients with HF, housing insecurity is likely to increase the risk for worse outcomes and rehospitalizations.
View Article and Find Full Text PDFJACC Adv
October 2023
Division of Cardiothoracic Surgery, Department of Surgery, Rhode Island Hospital, Alpert Medical School of Brown University, Providence, Rhode Island, USA.