Literature DB >> 33125706

Predicting preventable hospital readmissions with causal machine learning.

Ben J Marafino1, Alejandro Schuler2, Vincent X Liu2,3, Gabriel J Escobar2, Mike Baiocchi4.   

Abstract

OBJECTIVE: To assess both the feasibility and potential impact of predicting preventable hospital readmissions using causal machine learning applied to data from the implementation of a readmissions prevention intervention (the Transitions Program). DATA SOURCES: Electronic health records maintained by Kaiser Permanente Northern California (KPNC). STUDY
DESIGN: Retrospective causal forest analysis of postdischarge outcomes among KPNC inpatients. Using data from both before and after implementation, we apply causal forests to estimate individual-level treatment effects of the Transitions Program intervention on 30-day readmission. These estimates are used to characterize treatment effect heterogeneity and to assess the notional impacts of alternative targeting strategies in terms of the number of readmissions prevented. DATA COLLECTION: 1 539 285 index hospitalizations meeting the inclusion criteria and occurring between June 2010 and December 2018 at 21 KPNC hospitals. PRINCIPAL
FINDINGS: There appears to be substantial heterogeneity in patients' responses to the intervention (omnibus test for heterogeneity p = 2.23 × 10-7 ), particularly across levels of predicted risk. Notably, predicted treatment effects become more positive as predicted risk increases; patients at somewhat lower risk appear to have the largest predicted effects. Moreover, these estimates appear to be well calibrated, yielding the same estimate of annual readmissions prevented in the actual treatment subgroup (1246, 95% confidence interval [CI] 1110-1381) as did a formal evaluation of the Transitions Program (1210, 95% CI 990-1430). Estimates of the impacts of alternative targeting strategies suggest that as many as 4458 (95% CI 3925-4990) readmissions could be prevented annually, while decreasing the number needed to treat from 33 to 23, by targeting patients with the largest predicted effects rather than those at highest risk.
CONCLUSIONS: Causal machine learning can be used to identify preventable hospital readmissions, if the requisite interventional data are available. Moreover, our results suggest a mismatch between risk and treatment effects. © Health Research and Educational Trust.

Entities:  

Keywords:  clinical decision rules; machine learning; patient readmission; risk assessment

Mesh:

Year:  2020        PMID: 33125706      PMCID: PMC7704477          DOI: 10.1111/1475-6773.13586

Source DB:  PubMed          Journal:  Health Serv Res        ISSN: 0017-9124            Impact factor:   3.402


  37 in total

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Review 2.  Personalized evidence based medicine: predictive approaches to heterogeneous treatment effects.

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3.  The number needed to benefit: estimating the value of predictive analytics in healthcare.

Authors:  Vincent X Liu; David W Bates; Jenna Wiens; Nigam H Shah
Journal:  J Am Med Inform Assoc       Date:  2019-12-01       Impact factor: 4.497

4.  Predicting preventable hospital readmissions with causal machine learning.

Authors:  Ben J Marafino; Alejandro Schuler; Vincent X Liu; Gabriel J Escobar; Mike Baiocchi
Journal:  Health Serv Res       Date:  2020-10-30       Impact factor: 3.402

5.  Focusing on High-Cost Patients - The Key to Addressing High Costs?

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Journal:  Clin Trials       Date:  2015-09-15       Impact factor: 2.486

7.  Identification of patients likely to benefit from care management programs.

Authors:  Tobias Freund; Cornelia Mahler; Antje Erler; Jochen Gensichen; Dominik Ose; Joachim Szecsenyi; Frank Peters-Klimm
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8.  Metalearners for estimating heterogeneous treatment effects using machine learning.

Authors:  Sören R Künzel; Jasjeet S Sekhon; Peter J Bickel; Bin Yu
Journal:  Proc Natl Acad Sci U S A       Date:  2019-02-15       Impact factor: 11.205

9.  Identifying potentially preventable readmissions.

Authors:  Norbert I Goldfield; Elizabeth C McCullough; John S Hughes; Ana M Tang; Beth Eastman; Lisa K Rawlins; Richard F Averill
Journal:  Health Care Financ Rev       Date:  2008

10.  Association of a Care Coordination Model With Health Care Costs and Utilization: The Johns Hopkins Community Health Partnership (J-CHiP).

Authors:  Scott A Berkowitz; Shriram Parashuram; Kathy Rowan; Lindsay Andon; Eric B Bass; Michele Bellantoni; Daniel J Brotman; Amy Deutschendorf; Linda Dunbar; Samuel C Durso; Anita Everett; Katherine D Giuriceo; Lindsay Hebert; Debra Hickman; Douglas E Hough; Eric E Howell; Xuan Huang; Diane Lepley; Curtis Leung; Yanyan Lu; Constantine G Lyketsos; Shannon M E Murphy; Tracy Novak; Leon Purnell; Carol Sylvester; Albert W Wu; Ray Zollinger; Kevin Koenig; Roy Ahn; Paul B Rothman; Patricia M C Brown
Journal:  JAMA Netw Open       Date:  2018-11-02
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  5 in total

1.  Predicting preventable hospital readmissions with causal machine learning.

Authors:  Ben J Marafino; Alejandro Schuler; Vincent X Liu; Gabriel J Escobar; Mike Baiocchi
Journal:  Health Serv Res       Date:  2020-10-30       Impact factor: 3.402

2.  Correction to "Predicting preventable hospital readmissions with causal machine learning".

Authors:  Ben J Marafino; Alejandro Schuler; Vincent X Liu; Gabriel J Escobar; Mike Baiocchi
Journal:  Health Serv Res       Date:  2021-02       Impact factor: 3.734

3.  Evaluation of an intervention targeted with predictive analytics to prevent readmissions in an integrated health system: observational study.

Authors:  Ben J Marafino; Gabriel J Escobar; Michael T Baiocchi; Vincent X Liu; Colleen C Plimier; Alejandro Schuler
Journal:  BMJ       Date:  2021-08-11

4.  Predicting hospitalisations related to ambulatory care sensitive conditions with machine learning for population health planning: derivation and validation cohort study.

Authors:  Seung Eun Yi; Vinyas Harish; Jahir Gutierrez; Mathieu Ravaut; Kathy Kornas; Tristan Watson; Tomi Poutanen; Marzyeh Ghassemi; Maksims Volkovs; Laura C Rosella
Journal:  BMJ Open       Date:  2022-04-01       Impact factor: 2.692

5.  Prospective evaluation of social risks, physical function, and cognitive function in prediction of non-elective rehospitalization and post-discharge mortality.

Authors:  Heather A Clancy; Zheng Zhu; Nancy P Gordon; Patricia Kipnis; Vincent X Liu; Gabriel J Escobar
Journal:  BMC Health Serv Res       Date:  2022-04-29       Impact factor: 2.908

  5 in total

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