Data-driven approaches for health care : machine learning for identifying high utilizers / Chengliang Yang, Chris Delcher, Elizabeth Shenkman, Sanjay Ranka.

By: Yang, Chengliang (Of University of Florida) [author.]Contributor(s): Delcher, Chris [author.] | Shenkman, Elizabeth [author.] | Ranka, Sanjay [author.]Material type: TextTextSeries: Chapman & Hall/CRC big data series: Publisher: Boca Raton : CRC Press, [2020]Description: ix, 107 pages : illustrations ; 26 cmContent type: text Media type: unmediated Carrier type: volumeISBN: 9780367342906; 0367342901Subject(s): Medical care -- Utilization -- Mathematical models | Machine learning | Medical Overuse -- prevention & control | Medical Overuse -- statistics & numerical data | Models, Theoretical | Machine Learning | Machine learning | Medical care -- Utilization -- Mathematical models | United StatesAdditional physical formats: Electronic version:: Data driven approaches for healthcare.DDC classification: 362.1068 LOC classification: RA410.6 | .Y36 2020
Contents:
Introduction. Overview of Healthcare Data. Machine Learning Modeling from Healthcare Data. Machine Learning Modeling from Healthcare Data. Descriptive Analysis of High Utlizers. Residuals Analysis for Identifying High Utilizers. Machine Learning Results for High Utilizers.
Summary: 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.-- Source other than the Library of Congress.
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Item type Current location Home library Shelving location Call number Status Date due Barcode Item holds
Book Book School of Mechanical & Manufacturing Engineering (SMME)
School of Mechanical & Manufacturing Engineering (SMME)
General Stacks 362.1068 YAN (Browse shelf) Available SMME-4394
Total holds: 0

"A Chapman & Hall book."

Introduction. Overview of Healthcare Data. Machine Learning Modeling from Healthcare Data. Machine Learning Modeling from Healthcare Data. Descriptive Analysis of High Utilizers. Residuals Analysis for Identifying High Utilizers. Machine Learning Results for High Utilizers.

Includes bibliographical references and index.

Introduction. Overview of Healthcare Data. Machine Learning Modeling from Healthcare Data. Machine Learning Modeling from Healthcare Data. Descriptive Analysis of High Utlizers. Residuals Analysis for Identifying High Utilizers. Machine Learning Results for High Utilizers.

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.-- Source other than the Library of Congress.

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