Isolating cost drivers in interstitial lung disease treatment using nonparametric Bayesian methods.
Biom. J. 62, 1896-1908 (2020)
Mixture modeling is a popular approach to accommodate overdispersion, skewness, and multimodality features that are very common for health care utilization data. However, mixture modeling tends to rely on subjective judgment regarding the appropriate number of mixture components or some hypothesis about how to cluster the data. In this work, we adopt a nonparametric, variational Bayesian approach to allow the model to select the number of components while estimating their parameters. Our model allows for a probabilistic classification of observations into clusters and simultaneous estimation of a Gaussian regression model within each cluster. When we apply this approach to data on patients with interstitial lung disease, we find distinct subgroups of patients with differences in means and variances of health care costs, health and treatment covariates, and relationships between covariates and costs. The subgroups identified are readily interpretable, suggesting that this nonparametric variational approach to inference can discover valid insights into the factors driving treatment costs. Moreover, the learning algorithm we employed is very fast and scalable, which should make the technique accessible for a broad range of applications.
Impact Factor
Scopus SNIP
Web of Science
Times Cited
Scopus
Cited By
Altmetric
Publication type
Article: Journal article
Document type
Scientific Article
Thesis type
Editors
Keywords
Bayesian Statistics ; Health Care Costs ; Lung Disease ; Mixture Model ; Nonparametric Models ; Variational Bayes; Variational Inference; Mixture; Medicine; Models; Care
Keywords plus
Language
english
Publication Year
2020
Prepublished in Year
HGF-reported in Year
2020
ISSN (print) / ISBN
0323-3847
e-ISSN
1521-4036
ISBN
Book Volume Title
Conference Title
Conference Date
Conference Location
Proceedings Title
Quellenangaben
Volume: 62,
Issue: 8,
Pages: 1896-1908
Article Number: ,
Supplement: ,
Series
Publisher
Wiley
Publishing Place
Weinheim
Day of Oral Examination
0000-00-00
Advisor
Referee
Examiner
Topic
University
University place
Faculty
Publication date
0000-00-00
Application date
0000-00-00
Patent owner
Further owners
Application country
Patent priority
Reviewing status
Peer reviewed
POF-Topic(s)
30202 - Environmental Health
Research field(s)
Genetics and Epidemiology
PSP Element(s)
G-505300-002
Grants
Copyright
Erfassungsdatum
2020-11-06