Literature DB >> 29898852

Incorporating patient-centered factors into heart failure readmission risk prediction: A mixed-methods study.

Faraz S Ahmad1, Benjamin French2, Kathryn H Bowles2, Jonathan Sevilla-Cazes2, Anne Jaskowiak-Barr2, Thomas R Gallagher2, Shreya Kangovi2, Lee R Goldberg2, Frances K Barg2, Stephen E Kimmel3.   

Abstract

BACKGROUND: Capturing and incorporating patient-centered factors into 30-day readmission risk prediction after hospitalized heart failure (HF) could improve the modest performance of current models.
METHODS: Using a mixed-methods approach, we developed a patient-centered survey and evaluated the additional predictive utility of the survey compared to a traditional readmission risk model (the Krumholz et al. model). Area under the receiver operating characteristic curve (AUC) and the Hosmer-Lemeshow goodness-of-fit statistic quantified the performance of both models. We measured the amount of model improvement with the addition of patient-centered factors to the Krumholz et al. model with the integrated discrimination improvement (IDI). In an exploratory analysis, we used hierarchical clustering algorithms to identify groups with similar survey responses and tested for differences between clusters using standard descriptive statistics.
RESULTS: From 3/24/2014 to 3/12/2015, 183 patients hospitalized with HF were enrolled from an urban, academic health system and followed for 30days after discharge. The Krumholz et al. plus patient-centered factors model had similar-to-slightly lower performance (AUC [95%CI]:0.62 [0.52, 0.71]; goodness-of-fit P=.10) than the Krumholz et al. model (AUC [95%CI]:0.66 [0.57, 0.76]; goodness-of-fit P=.19). The IDI (95%CI) was 0.003 (-0.014,0.020). We identified three patient clusters based on patient-centered survey responses. The clusters differed with respect to gender, self-rated health, employment status, and prior hospitalization frequency (all P<.05).
CONCLUSIONS: The addition of patient-centered factors did not improve 30-day readmission model performance. Rather than designing interventions based on predicted readmission risk, tailoring interventions to all patients, based on their characteristics, could inform the design of targeted, readmission reduction strategies.
Copyright © 2018 Elsevier Inc. All rights reserved.

Entities:  

Mesh:

Year:  2018        PMID: 29898852      PMCID: PMC6004826          DOI: 10.1016/j.ahj.2018.03.002

Source DB:  PubMed          Journal:  Am Heart J        ISSN: 0002-8703            Impact factor:   4.749


  22 in total

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

Authors:  Ruben Amarasingham; 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
Journal:  Med Care       Date:  2010-11       Impact factor: 2.983

Review 2.  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

3.  Evaluating the added predictive ability of a new marker: from area under the ROC curve to reclassification and beyond.

Authors:  Michael J Pencina; Ralph B D'Agostino; Ralph B D'Agostino; Ramachandran S Vasan
Journal:  Stat Med       Date:  2008-01-30       Impact factor: 2.373

4.  Rehospitalizations among patients in the Medicare fee-for-service program.

Authors:  Stephen F Jencks; Mark V Williams; Eric A Coleman
Journal:  N Engl J Med       Date:  2009-04-02       Impact factor: 91.245

5.  Phenomapping for novel classification of heart failure with preserved ejection fraction.

Authors:  Sanjiv J Shah; Daniel H Katz; Senthil Selvaraj; Michael A Burke; Clyde W Yancy; Mihai Gheorghiade; Robert O Bonow; Chiang-Ching Huang; Rahul C Deo
Journal:  Circulation       Date:  2014-11-14       Impact factor: 29.690

Review 6.  Health policy and cardiovascular medicine: rapid changes, immense opportunities.

Authors:  Karen E Joynt
Journal:  Circulation       Date:  2015-03-24       Impact factor: 29.690

7.  Patient, Caregiver, and Physician Work in Heart Failure Disease Management: A Qualitative Study of Issues That Undermine Wellness.

Authors:  Steven A Farmer; Susan Magasi; Phoebe Block; Megan J Whelen; Luke O Hansen; Robert O Bonow; Philip Schmidt; Ami Shah; Kathleen L Grady
Journal:  Mayo Clin Proc       Date:  2016-08       Impact factor: 7.616

8.  Patients Commonly Believe Their Heart Failure Hospitalizations Are Preventable and Identify Worsening Heart Failure, Nonadherence, and a Knowledge Gap as Reasons for Admission.

Authors:  Nisha A Gilotra; Adam Shpigel; Ike S Okwuosa; Ruth Tamrat; Deirdre Flowers; Stuart D Russell
Journal:  J Card Fail       Date:  2016-10-11       Impact factor: 5.712

9.  A method of comparing the areas under receiver operating characteristic curves derived from the same cases.

Authors:  J A Hanley; B J McNeil
Journal:  Radiology       Date:  1983-09       Impact factor: 11.105

10.  Development and evaluation of multi-marker risk scores for clinical prognosis.

Authors:  Benjamin French; Paramita Saha-Chaudhuri; Bonnie Ky; Thomas P Cappola; Patrick J Heagerty
Journal:  Stat Methods Med Res       Date:  2012-07-05       Impact factor: 3.021

View more
  1 in total

1.  A novel nomogram to predict all-cause readmission or death risk in Chinese elderly patients with heart failure.

Authors:  Mengxi Yang; Liyuan Tao; Hui An; Gang Liu; Qiang Tu; Hu Zhang; Li Qin; Zhu Xiao; Yu Wang; Jiaxai Fan; Dongping Feng; Yan Liang; Jingyi Ren
Journal:  ESC Heart Fail       Date:  2020-04-21
  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.