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Real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic CKD

BACKGROUND: Heart failure (HF) is a major cause of cardiovascular morbidity and mortality. Despite recent advances in diagnosis and management of HF, the prognosis remains poor. HF and chronic kidney disease (CKD) are interlinked chronic health conditions. The availability of large volume of patient...

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Autores principales: Kleinjung, F, Schuchhardt, J, Bauer, C, Lindemann, S, Brinker, M, Kong, S, Horvat-Broecker, A, Vaitsiakhovich, T, Wanner, C
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9708012/
http://dx.doi.org/10.1093/ehjdh/ztab104.3057
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author Kleinjung, F
Schuchhardt, J
Bauer, C
Lindemann, S
Brinker, M
Kong, S
Horvat-Broecker, A
Vaitsiakhovich, T
Wanner, C
author_facet Kleinjung, F
Schuchhardt, J
Bauer, C
Lindemann, S
Brinker, M
Kong, S
Horvat-Broecker, A
Vaitsiakhovich, T
Wanner, C
author_sort Kleinjung, F
collection PubMed
description BACKGROUND: Heart failure (HF) is a major cause of cardiovascular morbidity and mortality. Despite recent advances in diagnosis and management of HF, the prognosis remains poor. HF and chronic kidney disease (CKD) are interlinked chronic health conditions. The availability of large volume of patient data and modern analytic techniques opens new opportunities for identification of individuals at elevated risk of HF. PURPOSE: Develop risk prediction model for HF hospitalizations (HHF) in patients with non-diabetic CKD by applying data-driven computational intelligence techniques to a US population-based administrative claims database. METHODS: Individual-level data from the US Optum Clinformatics Data Mart for years 2008–2018 were analysed. To be eligible for inclusion, adult individuals were required to have non-diabetic CKD stage 3 or 4 (index event) and one year continuous insurance coverage prior to the index date (baseline period). Selection criteria and the main clinical outcome, hospitalisation for heart failure (HHF), were identified by using laboratory tests results and/or specific codes from common clinical coding systems. Risk prediction model for HHF was built on patient data in the baseline period composed to more than 6,000 variables. Computational intelligence method based on ant colony optimization was used to develop a time-to-first-event risk prediction model for HHF. RESULTS: Of the 64 million individuals in the database, 504,924 satisfied the selection criteria. Median age was 75 years, 60% were female. Among most common baseline comorbidities were hypertension (85%) and hyperlipidaemia (68%). Coronary artery disease, HF, atrial fibrillation and peripheral artery disease were recorded in 24%, 16%, 15% and 14% of individuals. Over a median follow-up of 744 days, 53,282 (11%) patients had recorded HHF, the corresponding incidence rate was 3.95 events/100 patient-years. The developed risk prediction model for HHF in non-diabetic CKD contained 20 risk factors. The five strongest risk factors were history of HF, intake of loop diuretics, severely increased albuminuria, atrial fibrillation or flutter and CKD 4 as observed “yes/no” in the baseline period. Fig. 1 depicts the final risk prediction model. To assess model performance, all patients in the cohort were stratified into five HHF risk groups. For each group, a Kaplan-Meier curve was built based on the HHF outcome data in the database. Fig. 2 shows clear separation between the curves, demonstrating high performance of the developed risk prediction model. CONCLUSION: Despite many existing scores to predict HHF, their use is limited. Some scores rely on availability of rarely collected information, some are applicable for specific patient populations only. Risk prediction model for HHF in non-diabetic CKD is presented, which contains risk factors routinely collected by healthcare providers. Therefore, it might be applicable for HHF risk estimation in various settings. FUNDING ACKNOWLEDGEMENT: Type of funding sources: Other. Main funding source(s): Bayer AG
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spelling pubmed-97080122023-01-27 Real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic CKD Kleinjung, F Schuchhardt, J Bauer, C Lindemann, S Brinker, M Kong, S Horvat-Broecker, A Vaitsiakhovich, T Wanner, C Eur Heart J Digit Health Abstracts BACKGROUND: Heart failure (HF) is a major cause of cardiovascular morbidity and mortality. Despite recent advances in diagnosis and management of HF, the prognosis remains poor. HF and chronic kidney disease (CKD) are interlinked chronic health conditions. The availability of large volume of patient data and modern analytic techniques opens new opportunities for identification of individuals at elevated risk of HF. PURPOSE: Develop risk prediction model for HF hospitalizations (HHF) in patients with non-diabetic CKD by applying data-driven computational intelligence techniques to a US population-based administrative claims database. METHODS: Individual-level data from the US Optum Clinformatics Data Mart for years 2008–2018 were analysed. To be eligible for inclusion, adult individuals were required to have non-diabetic CKD stage 3 or 4 (index event) and one year continuous insurance coverage prior to the index date (baseline period). Selection criteria and the main clinical outcome, hospitalisation for heart failure (HHF), were identified by using laboratory tests results and/or specific codes from common clinical coding systems. Risk prediction model for HHF was built on patient data in the baseline period composed to more than 6,000 variables. Computational intelligence method based on ant colony optimization was used to develop a time-to-first-event risk prediction model for HHF. RESULTS: Of the 64 million individuals in the database, 504,924 satisfied the selection criteria. Median age was 75 years, 60% were female. Among most common baseline comorbidities were hypertension (85%) and hyperlipidaemia (68%). Coronary artery disease, HF, atrial fibrillation and peripheral artery disease were recorded in 24%, 16%, 15% and 14% of individuals. Over a median follow-up of 744 days, 53,282 (11%) patients had recorded HHF, the corresponding incidence rate was 3.95 events/100 patient-years. The developed risk prediction model for HHF in non-diabetic CKD contained 20 risk factors. The five strongest risk factors were history of HF, intake of loop diuretics, severely increased albuminuria, atrial fibrillation or flutter and CKD 4 as observed “yes/no” in the baseline period. Fig. 1 depicts the final risk prediction model. To assess model performance, all patients in the cohort were stratified into five HHF risk groups. For each group, a Kaplan-Meier curve was built based on the HHF outcome data in the database. Fig. 2 shows clear separation between the curves, demonstrating high performance of the developed risk prediction model. CONCLUSION: Despite many existing scores to predict HHF, their use is limited. Some scores rely on availability of rarely collected information, some are applicable for specific patient populations only. Risk prediction model for HHF in non-diabetic CKD is presented, which contains risk factors routinely collected by healthcare providers. Therefore, it might be applicable for HHF risk estimation in various settings. FUNDING ACKNOWLEDGEMENT: Type of funding sources: Other. Main funding source(s): Bayer AG Oxford University Press 2021-12-29 /pmc/articles/PMC9708012/ http://dx.doi.org/10.1093/ehjdh/ztab104.3057 Text en Reproduced from: European Heart Journal, Volume 42, Issue Supplement_1, October 2021, ehab724.3057, https://doi.org/10.1093/eurheartj/ehab724.3057 by permission of Oxford University Press on behalf of the European Society of Cardiology. The opinions expressed in the Journal item reproduced as this reprint are those of the authors and contributors, and do not necessarily reflect those of the European Society of Cardiology, the editors, the editorial board, Oxford University Press or the organization to which the authors are affiliated. The mention of trade names, commercial products or organizations, and the inclusion of advertisements in this reprint do not imply endorsement by the Journal, the editors, the editorial board, Oxford University Press or the organization to which the authors are affiliated. The editors and publishers have taken all reasonable precautions to verify drug names and doses, the results of experimental work and clinical findings published in the Journal. The ultimate responsibility for the use and dosage of drugs mentioned in this reprint and in interpretation of published material lies with the medical practitioner, and the editors and publisher cannot accept liability for damages arising from any error or omissions in the Journal or in this reprint. Please inform the editors of any errors. © The Author(s) 2021. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Abstracts
Kleinjung, F
Schuchhardt, J
Bauer, C
Lindemann, S
Brinker, M
Kong, S
Horvat-Broecker, A
Vaitsiakhovich, T
Wanner, C
Real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic CKD
title Real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic CKD
title_full Real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic CKD
title_fullStr Real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic CKD
title_full_unstemmed Real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic CKD
title_short Real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic CKD
title_sort real-world data-driven risk prediction of hospitalization for heart failure in non-diabetic ckd
topic Abstracts
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9708012/
http://dx.doi.org/10.1093/ehjdh/ztab104.3057
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