Literature DB >> 31246499

Improving Prediction of High-Cost Health Care Users with Medical Check-Up Data.

Yeonkook J Kim1, Hayoung Park2.   

Abstract

Studies found that a small portion of the population spent the majority of health care resources, and they highlighted the importance of predicting high-cost users in the health care management and policy. Most prior research on high-cost user prediction models are based on diagnosis data with additional cost and health care utilization data to improve prediction accuracy. To further improve the prediction of high-cost users, researchers have been testing various new data sources such as self-reported health status data. In this study, we use three categories of medical check-up data, laboratory tests, self-reported medical history, and self-reported health behavior data to build high-cost user prediction models, and to assess the medical check-up features as predictors of high-cost users. Using three data-mining models, logistic regression, random forest, and neural network models, we show that under the diagnosis-based approach, medical check-up data marginally improve diagnosis-based prediction models. Under the cost-based approach, we find that medical check-up data improve cost-based prediction models marginally and medical check-up data can be a viable alternate data source to diagnosis data in predicting high-cost users.

Keywords:  health care cost; health insurance; high-cost users; medical check-up; predictive models

Mesh:

Year:  2019        PMID: 31246499     DOI: 10.1089/big.2018.0096

Source DB:  PubMed          Journal:  Big Data        ISSN: 2167-6461            Impact factor:   2.128


  8 in total

1.  Identifying patterns of clinical conditions among high-cost older adult health care users using claims data: a latent class approach.

Authors:  Xiaolin He; Danjin Li; Wenyi Wang; Hong Liang; Yan Liang
Journal:  Int J Equity Health       Date:  2022-06-20

2.  Machine learning versus regression modelling in predicting individual healthcare costs from a representative sample of the nationwide claims database in France.

Authors:  Alexandre Vimont; Henri Leleu; Isabelle Durand-Zaleski
Journal:  Eur J Health Econ       Date:  2021-08-09

3.  Machine-learning-based prediction models for high-need high-cost patients using nationwide clinical and claims data.

Authors:  Itsuki Osawa; Tadahiro Goto; Yuji Yamamoto; Yusuke Tsugawa
Journal:  NPJ Digit Med       Date:  2020-11-11

4.  Association between serum uric acid and obesity in Chinese adults: a 9-year longitudinal data analysis.

Authors:  Jie Zeng; Wayne R Lawrence; Jun Yang; Junzhang Tian; Cheng Li; Wanmin Lian; Jingjun He; Hongying Qu; Xiaojie Wang; Hongmei Liu; Guanming Li; Guowei Li
Journal:  BMJ Open       Date:  2021-02-05       Impact factor: 2.692

5.  Predicting Future Service Use in Dutch Mental Healthcare: A Machine Learning Approach.

Authors:  Kasper van Mens; Sascha Kwakernaak; Richard Janssen; Wiepke Cahn; Joran Lokkerbol; Bea Tiemens
Journal:  Adm Policy Ment Health       Date:  2021-08-31

6.  Assessing the Value of Unsupervised Clustering in Predicting Persistent High Health Care Utilizers: Retrospective Analysis of Insurance Claims Data.

Authors:  Raghav Ramachandran; Michael J McShea; Stephanie N Howson; Howard S Burkom; Hsien-Yen Chang; Jonathan P Weiner; Hadi Kharrazi
Journal:  JMIR Med Inform       Date:  2021-11-25

7.  An integrated model for medical expense system optimization during diagnosis process based on artificial intelligence algorithm.

Authors:  He Huang; Po-Chou Shih; Yuelan Zhu; Wei Gao
Journal:  J Comb Optim       Date:  2021-06-26       Impact factor: 1.262

8.  Characteristics and resource utilization of high-cost users in the intensive care unit: a population-based cohort study.

Authors:  Claudia Dziegielewski; Robert Talarico; Haris Imsirovic; Danial Qureshi; Yasmeen Choudhri; Peter Tanuseputro; Laura H Thompson; Kwadwo Kyeremanteng
Journal:  BMC Health Serv Res       Date:  2021-12-06       Impact factor: 2.655

  8 in total

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