Journal article
Statistical models for respiratory disease diagnosis and prognosis
R Wolfe, J Carlin
Respirology | WILEY | Published : 2015
DOI: 10.1111/resp.12519
Abstract
Risk prediction equations are used in a variety of healthcare settings to provide prognosis for patients with various respiratory conditions. This article provides a review of statistical methods for the development, evaluation and implementation of respiratory disease prediction models. We also consider a second, closely related application of these methods: the creation of equations that describe normal lung function in a particular population and the use of such equations in the diagnosis of abnormal lung function. The methods are illustrated with examples of models that have been developed for use in respiratory medicine and research.
Grants
Awarded by NHMRC Centre of Research Excellence grant
Funding Acknowledgements
This work was supported under a NHMRC Centre of Research Excellence grant, ID#1035261, awarded to the Victorian Centre for Biostatistics (ViCBiostat). We thank Michael Abramson and Christian Schindler for providing comments that helped to improve this article.