Skip to main content
Taylor & Francis Group Logo
Advanced Search

Click here to search books using title name,author name and keywords.

  • Login
  • Hi, User  
    • Your Account
    • Logout
Advanced Search

Click here to search books using title name,author name and keywords.

Breadcrumbs Section. Click here to navigate to respective pages.

Book

Data-Driven Approaches for Health care

Book

Data-Driven Approaches for Health care

DOI link for Data-Driven Approaches for Health care

Data-Driven Approaches for Health care book

Machine Learning for Identifying High Utilizers

Data-Driven Approaches for Health care

DOI link for Data-Driven Approaches for Health care

Data-Driven Approaches for Health care book

Machine Learning for Identifying High Utilizers
ByChengliang Yang, Chris Delcher, Elizabeth Shenkman, Sanjay Ranka
Edition 1st Edition
First Published 2019
eBook Published 24 October 2019
Pub. Location Boca Raton
Imprint Chapman and Hall/CRC
DOI https://doi.org/10.1201/9780429342769
Pages 118
eBook ISBN 9780429342769
Subjects Computer Science, Economics, Finance, Business & Industry, Engineering & Technology, Health and Social Care, Information Science
Share
Share

Get Citation

Yang, C., Delcher, C., Shenkman, E., & Ranka, S. (2019). Data-Driven Approaches for Health care: Machine Learning for Identifying High Utilizers (1st ed.). CRC Press. https://doi.org/10.1201/9780429342769

ABSTRACT

Health care utilization routinely generates vast amounts of data from sources ranging from electronic medical records, insurance claims, vital signs, and patient-reported outcomes. Predicting health outcomes using data modeling approaches is an emerging field that can reveal important insights into disproportionate spending patterns. This book presents data driven methods, especially machine learning, for understanding and approaching the high utilizers problem, using the example of a large public insurance program. It describes important goals for data driven approaches from different aspects of the high utilizer problem, and identifies challenges uniquely posed by this problem.

Key Features:

  • Introduces basic elements of health care data, especially for administrative claims data, including disease code, procedure codes, and drug codes
  • Provides tailored supervised and unsupervised machine learning approaches for understanding and predicting the high utilizers
  • Presents descriptive data driven methods for the high utilizer population
  • Identifies a best-fitting linear and tree-based regression model to account for patients’ acute and chronic condition loads and demographic characteristics
  • TABLE OF CONTENTS

    chapter Chapter 1|6 pages

    Introduction

    chapter Chapter 2|8 pages

    Overview of Health Care Data

    chapter Chapter 3|13 pages

    Machine Learning Modeling from Health Care Data

    chapter Chapter 4|18 pages

    Descriptive Analysis of High Utilizers

    chapter Chapter 5|18 pages

    Residuals Analysis for Identifying High Utilizers

    chapter Chapter 6|21 pages

    Machine Learning Results for High Utilizers

    chapter Chapter 7|2 pages

    Conclusions

    T&F logoTaylor & Francis Group logo
    • Policies
      • Privacy Policy
      • Terms & Conditions
      • Cookie Policy
      • Privacy Policy
      • Terms & Conditions
      • Cookie Policy
    • Journals
      • Taylor & Francis Online
      • CogentOA
      • Taylor & Francis Online
      • CogentOA
    • Corporate
      • Taylor & Francis Group
      • Taylor & Francis Group
      • Taylor & Francis Group
      • Taylor & Francis Group
    • Help & Contact
      • Students/Researchers
      • Librarians/Institutions
      • Students/Researchers
      • Librarians/Institutions
    • Connect with us

    Connect with us

    Registered in England & Wales No. 3099067
    5 Howick Place | London | SW1P 1WG © 2021 Informa UK Limited