Literature DB >> 24777832

Ensemble of trees approaches to risk adjustment for evaluating a hospital's performance.

Yang Liu1, Mikhail Traskin, Scott A Lorch, Edward I George, Dylan Small.   

Abstract

A commonly used method for evaluating a hospital's performance on an outcome is to compare the hospital's observed outcome rate to the hospital's expected outcome rate given its patient (case) mix and service. The process of calculating the hospital's expected outcome rate given its patient mix and service is called risk adjustment (Iezzoni 1997). Risk adjustment is critical for accurately evaluating and comparing hospitals' performances since we would not want to unfairly penalize a hospital just because it treats sicker patients. The key to risk adjustment is accurately estimating the probability of an Outcome given patient characteristics. For cases with binary outcomes, the method that is commonly used in risk adjustment is logistic regression. In this paper, we consider ensemble of trees methods as alternatives for risk adjustment, including random forests and Bayesian additive regression trees (BART). Both random forests and BART are modern machine learning methods that have been shown recently to have excellent performance for prediction of outcomes in many settings. We apply these methods to carry out risk adjustment for the performance of neonatal intensive care units (NICU). We show that these ensemble of trees methods outperform logistic regression in predicting mortality among babies treated in NICU, and provide a superior method of risk adjustment compared to logistic regression.

Entities:  

Mesh:

Year:  2014        PMID: 24777832     DOI: 10.1007/s10729-014-9272-4

Source DB:  PubMed          Journal:  Health Care Manag Sci        ISSN: 1386-9620


  17 in total

1.  Predicting in vitro drug sensitivity using Random Forests.

Authors:  Gregory Riddick; Hua Song; Susie Ahn; Jennifer Walling; Diego Borges-Rivera; Wei Zhang; Howard A Fine
Journal:  Bioinformatics       Date:  2010-12-05       Impact factor: 6.937

2.  The differential impact of delivery hospital on the outcomes of premature infants.

Authors:  Scott A Lorch; Michael Baiocchi; Corinne E Ahlberg; Dylan S Small
Journal:  Pediatrics       Date:  2012-07-09       Impact factor: 7.124

3.  Random forests for classification in ecology.

Authors:  D Richard Cutler; Thomas C Edwards; Karen H Beard; Adele Cutler; Kyle T Hess; Jacob Gibson; Joshua J Lawler
Journal:  Ecology       Date:  2007-11       Impact factor: 5.499

4.  On the accuracy of classifying hospitals on their performance measures.

Authors:  Yulei He; Frederic Selck; Sharon-Lise T Normand
Journal:  Stat Med       Date:  2013-10-13       Impact factor: 2.373

5.  Detecting and visualizing outliers in provider profiling via funnel plots and mixed effect models.

Authors:  Francesca Ieva; Anna Maria Paganoni
Journal:  Health Care Manag Sci       Date:  2014-01-10

6.  Outlier detection for a hierarchical Bayes model in a study of hospital variation in surgical procedures.

Authors:  Patrick J Farrell; Susan Groshen; Brenda Macgibbon; Thomas J Tomberlin
Journal:  Stat Methods Med Res       Date:  2010-03-11       Impact factor: 3.021

7.  Percentile-based Empirical Distribution Function Estimates for Performance Evaluation of Healthcare Providers.

Authors:  Susan M Paddock; Thomas A Louis
Journal:  J R Stat Soc Ser C Appl Stat       Date:  2011-08       Impact factor: 1.864

8.  Level and volume of neonatal intensive care and mortality in very-low-birth-weight infants.

Authors:  Ciaran S Phibbs; Laurence C Baker; Aaron B Caughey; Beate Danielsen; Susan K Schmitt; Roderic H Phibbs
Journal:  N Engl J Med       Date:  2007-05-24       Impact factor: 91.245

9.  Gene selection and classification of microarray data using random forest.

Authors:  Ramón Díaz-Uriarte; Sara Alvarez de Andrés
Journal:  BMC Bioinformatics       Date:  2006-01-06       Impact factor: 3.169

10.  Bayes rules for optimally using Bayesian hierarchical regression models in provider profiling to identify high-mortality hospitals.

Authors:  Peter C Austin
Journal:  BMC Med Res Methodol       Date:  2008-05-12       Impact factor: 4.615

View more
  10 in total

1.  Calibration Drift Among Regression and Machine Learning Models for Hospital Mortality.

Authors:  Sharon E Davis; Thomas A Lasko; Guanhua Chen; Michael E Matheny
Journal:  AMIA Annu Symp Proc       Date:  2018-04-16

2.  Bayesian additive regression trees and the General BART model.

Authors:  Yaoyuan Vincent Tan; Jason Roy
Journal:  Stat Med       Date:  2019-08-28       Impact factor: 2.373

3.  Foreward to special issue on health analytics.

Authors:  Farrokh Alemi
Journal:  Health Care Manag Sci       Date:  2014-10-09

4.  A comparison of rule-based and machine learning approaches for classifying patient portal messages.

Authors:  Robert M Cronin; Daniel Fabbri; Joshua C Denny; S Trent Rosenbloom; Gretchen Purcell Jackson
Journal:  Int J Med Inform       Date:  2017-06-23       Impact factor: 4.046

5.  National Veterans Health Administration inpatient risk stratification models for hospital-acquired acute kidney injury.

Authors:  Robert M Cronin; Jacob P VanHouten; Edward D Siew; Svetlana K Eden; Stephan D Fihn; Christopher D Nielson; Josh F Peterson; Clifton R Baker; T Alp Ikizler; Theodore Speroff; Michael E Matheny
Journal:  J Am Med Inform Assoc       Date:  2015-06-23       Impact factor: 4.497

6.  Improving Hospital Performance Rankings Using Discrete Patient Diagnoses for Risk Adjustment of Outcomes.

Authors:  Brendan DeCenso; Herbert C Duber; Abraham D Flaxman; Shane M Murphy; Michael Hanlon
Journal:  Health Serv Res       Date:  2017-03-13       Impact factor: 3.402

7.  Use of machine learning to analyse routinely collected intensive care unit data: a systematic review.

Authors:  Duncan Shillan; Jonathan A C Sterne; Alan Champneys; Ben Gibbison
Journal:  Crit Care       Date:  2019-08-22       Impact factor: 9.097

8.  An Efficient and Effective Model to Handle Missing Data in Classification.

Authors:  Kamran Mehrabani-Zeinabad; Marziyeh Doostfatemeh; Seyyed Mohammad Taghi Ayatollahi
Journal:  Biomed Res Int       Date:  2020-11-25       Impact factor: 3.411

9.  Machine Learning Models for Predicting Neonatal Mortality: A Systematic Review.

Authors:  Cheyenne Mangold; Sarah Zoretic; Keerthi Thallapureddy; Axel Moreira; Kevin Chorath; Alvaro Moreira
Journal:  Neonatology       Date:  2021-07-14       Impact factor: 4.035

10.  Machine Learning Models for Predicting Mortality in 7472 Very Low Birth Weight Infants Using Data from a Nationwide Neonatal Network.

Authors:  Hyun Jeong Do; Kyoung Min Moon; Hyun-Seung Jin
Journal:  Diagnostics (Basel)       Date:  2022-03-03
  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.