Literature DB >> 20940649

An automated model to identify heart failure patients at risk for 30-day readmission or death using electronic medical record data.

Ruben Amarasingham1, Billy J Moore, Ying P Tabak, Mark H Drazner, Christopher A Clark, Song Zhang, W Gary Reed, Timothy S Swanson, Ying Ma, Ethan A Halm.   

Abstract

BACKGROUND: A real-time electronic predictive model that identifies hospitalized heart failure (HF) patients at high risk for readmission or death may be valuable to clinicians and hospitals who care for these patients.
METHODS: An automated predictive model for 30-day readmission and death was derived and validated from clinical and nonclinical risk factors present on admission in 1372 HF hospitalizations to a major urban hospital between January 2007 and August 2008. Data were extracted from an electronic medical record. The performance of the electronic model was compared with mortality and readmission models developed by the Center for Medicaid and Medicare Services (CMS models) and a HF mortality model derived from the Acute Decompensated Heart Failure Registry (ADHERE model).
RESULTS: The 30-day mortality and readmission rates were 3.1% and 24.1% respectively. The electronic model demonstrated good discrimination for 30 day mortality (C statistic 0.86) and readmission (C statistic 0.72) and performed as well, or better than, the ADHERE model and CMS models for both outcomes (C statistic ranges: 0.72-0.73 and 0.56-0.66 for mortality and readmissions respectively; P < 0.05 in all comparisons). Markers of social instability and lower socioeconomic status improved readmission prediction in the electronic model (C statistic 0.72 vs. 0.61, P < 0.05).
CONCLUSIONS: Clinical and social factors available within hours of hospital presentation and extractable from an EMR predicted mortality and readmission at 30 days. Incorporating complex social factors increased the model's accuracy, suggesting that such factors could enhance risk adjustment models designed to compare hospital readmission rates.

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Year:  2010        PMID: 20940649     DOI: 10.1097/MLR.0b013e3181ef60d9

Source DB:  PubMed          Journal:  Med Care        ISSN: 0025-7079            Impact factor:   2.983


  164 in total

1.  Analysis of Machine Learning Techniques for Heart Failure Readmissions.

Authors:  Bobak J Mortazavi; Nicholas S Downing; Emily M Bucholz; Kumar Dharmarajan; Ajay Manhapra; Shu-Xia Li; Sahand N Negahban; Harlan M Krumholz
Journal:  Circ Cardiovasc Qual Outcomes       Date:  2016-11-08

2.  Characterizing Physicians Practice Phenotype from Unstructured Electronic Health Records.

Authors:  Sanjoy Dey; Yajuan Wang; Roy J Byrd; Kenney Ng; Steven R Steinhubl; Christopher deFilippi; Walter F Stewart
Journal:  AMIA Annu Symp Proc       Date:  2017-02-10

3.  Impact of prior admissions on 30-day readmissions in medicare heart failure inpatients.

Authors:  Scott L Hummel; Prashanth Katrapati; Brenda W Gillespie; Anthony C Defranco; Todd M Koelling
Journal:  Mayo Clin Proc       Date:  2014-03-29       Impact factor: 7.616

Review 4.  Risk prediction models for hospital readmission: a systematic review.

Authors:  Devan Kansagara; Honora Englander; Amanda Salanitro; David Kagen; Cecelia Theobald; Michele Freeman; Sunil Kripalani
Journal:  JAMA       Date:  2011-10-19       Impact factor: 56.272

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6.  Half of 30-Day Hospital Readmissions Among HIV-Infected Patients Are Potentially Preventable.

Authors:  Ank E Nijhawan; Ellen Kitchell; Sarah Shelby Etherton; Piper Duarte; Ethan A Halm; Mamta K Jain
Journal:  AIDS Patient Care STDS       Date:  2015-07-08       Impact factor: 5.078

7.  Risk stratification for death and all-cause hospitalization in heart failure clinic outpatients.

Authors:  Scott L Hummel; Hussam H Ghalib; David Ratz; Todd M Koelling
Journal:  Am Heart J       Date:  2013-10-07       Impact factor: 4.749

8.  The association of discharge decisions after deceased donor kidney transplantation with the risk of early readmission: Results from the deceased donor study.

Authors:  Meera Nair Harhay; Yaqi Jia; Heather Thiessen-Philbrook; Behdad Besharatian; Ramnika Gumber; Francis L Weng; Isaac E Hall; Mona Doshi; Bernd Schroppel; Chirag R Parikh; Peter P Reese
Journal:  Clin Transplant       Date:  2018-03-03       Impact factor: 2.863

9.  Describing pediatric acute kidney injury in children admitted from the emergency department.

Authors:  Holly R Hanson; Lynn Babcock; Terri Byczkowski; Stuart L Goldstein
Journal:  Pediatr Nephrol       Date:  2018-03-17       Impact factor: 3.714

10.  Do Non-Clinical Factors Improve Prediction of Readmission Risk?: Results From the Tele-HF Study.

Authors:  Harlan M Krumholz; Sarwat I Chaudhry; John A Spertus; Jennifer A Mattera; Beth Hodshon; Jeph Herrin
Journal:  JACC Heart Fail       Date:  2015-12-02       Impact factor: 12.035

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