Literature DB >> 33441908

Comparison of deep learning with traditional models to predict preventable acute care use and spending among heart failure patients.

Maor Lewis1, Guy Elad2, Moran Beladev2, Gal Maor2, Kira Radinsky2, Dor Hermann2, Yoav Litani2, Tal Geller2, Jesse M Pines2,3, Nathan L Shapiro2,4,5, Jose F Figueroa6,7,8.   

Abstract

Recent health reforms have created incentives for cardiologists and accountable care organizations to participate in value-based care models for heart failure (HF). Accurate risk stratification of HF patients is critical to efficiently deploy interventions aimed at reducing preventable utilization. The goal of this paper was to compare deep learning approaches with traditional logistic regression (LR) to predict preventable utilization among HF patients. We conducted a prognostic study using data on 93,260 HF patients continuously enrolled for 2-years in a large U.S. commercial insurer to develop and validate prediction models for three outcomes of interest: preventable hospitalizations, preventable emergency department (ED) visits, and preventable costs. Patients were split into training, validation, and testing samples. Outcomes were modeled using traditional and enhanced LR and compared to gradient boosting model and deep learning models using sequential and non-sequential inputs. Evaluation metrics included precision (positive predictive value) at k, cost capture, and Area Under the Receiver operating characteristic (AUROC). Deep learning models consistently outperformed LR for all three outcomes with respect to the chosen evaluation metrics. Precision at 1% for preventable hospitalizations was 43% for deep learning compared to 30% for enhanced LR. Precision at 1% for preventable ED visits was 39% for deep learning compared to 33% for enhanced LR. For preventable cost, cost capture at 1% was 30% for sequential deep learning, compared to 18% for enhanced LR. The highest AUROCs for deep learning were 0.778, 0.681 and 0.727, respectively. These results offer a promising approach to identify patients for targeted interventions.

Entities:  

Year:  2021        PMID: 33441908      PMCID: PMC7806727          DOI: 10.1038/s41598-020-80856-3

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  25 in total

1.  Using information on clinical conditions to predict high-cost patients.

Authors:  John A Fleishman; Joel W Cohen
Journal:  Health Serv Res       Date:  2010-01-27       Impact factor: 3.402

2.  Long short-term memory.

Authors:  S Hochreiter; J Schmidhuber
Journal:  Neural Comput       Date:  1997-11-15       Impact factor: 2.026

3.  Machine Learning Prediction of Mortality and Hospitalization in Heart Failure With Preserved Ejection Fraction.

Authors:  Suveen Angraal; Bobak J Mortazavi; Aakriti Gupta; Rohan Khera; Tariq Ahmad; Nihar R Desai; Daniel L Jacoby; Frederick A Masoudi; John A Spertus; Harlan M Krumholz
Journal:  JACC Heart Fail       Date:  2019-10-09       Impact factor: 12.035

Review 4.  Deep EHR: A Survey of Recent Advances in Deep Learning Techniques for Electronic Health Record (EHR) Analysis.

Authors:  Benjamin Shickel; Patrick James Tighe; Azra Bihorac; Parisa Rashidi
Journal:  IEEE J Biomed Health Inform       Date:  2017-10-27       Impact factor: 5.772

Review 5.  Machine Learning in Medicine.

Authors:  Rahul C Deo
Journal:  Circulation       Date:  2015-11-17       Impact factor: 29.690

6.  Potentially Preventable Intensive Care Unit Admissions in the United States, 2006-2015.

Authors:  Gary E Weissman; Meeta Prasad Kerlin; Yihao Yuan; Rachel Kohn; George L Anesi; Peter W Groeneveld; Rachel M Werner; Scott D Halpern
Journal:  Ann Am Thorac Soc       Date:  2020-01

7.  Characteristics and spending patterns of high cost, non-elderly adults in Massachusetts.

Authors:  Jose F Figueroa; Austin B Frakt; Zoe M Lyon; Xiner Zhou; Ashish K Jha
Journal:  Healthc (Amst)       Date:  2017-07-01

8.  Predicting potentially avoidable hospitalizations.

Authors:  Jian Gao; Eileen Moran; Yu-Fang Li; Peter L Almenoff
Journal:  Med Care       Date:  2014-02       Impact factor: 2.983

9.  Predicting patient 'cost blooms' in Denmark: a longitudinal population-based study.

Authors:  Suzanne Tamang; Arnold Milstein; Henrik Toft Sørensen; Lars Pedersen; Lester Mackey; Jean-Raymond Betterton; Lucas Janson; Nigam Shah
Journal:  BMJ Open       Date:  2017-01-11       Impact factor: 2.692

10.  Predictive Modeling of the Hospital Readmission Risk from Patients' Claims Data Using Machine Learning: A Case Study on COPD.

Authors:  Xu Min; Bin Yu; Fei Wang
Journal:  Sci Rep       Date:  2019-02-20       Impact factor: 4.379

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  1 in total

Review 1.  Decision Support Systems in HF based on Deep Learning Technologies.

Authors:  Marco Penso; Sarah Solbiati; Sara Moccia; Enrico G Caiani
Journal:  Curr Heart Fail Rep       Date:  2022-02-10
  1 in total

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