Data Driven Approaches for Healthcare Machine learning for Identifying High Utilizers, 1st edition

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...

詳細記述

保存先:
書誌詳細
主要な著者: Yang, Chengliang, Delcher, Chris, Shenkman, Elizabeth, Ranka, Sanjay
フォーマット: 図書
言語:English
出版事項: Chapman and Hall/CRC 2020
主題:
オンライン・アクセス:https://scholar.dlu.edu.vn/thuvienso/handle/DLU123456789/93542
https://doi.org/10.1201/9780429342769
タグ: タグ追加
タグなし, このレコードへの初めてのタグを付けませんか!
Thư viện lưu trữ: Thư viện Trường Đại học Đà Lạt
その他の書誌記述
要約: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