Modeling categorical variables by logistic regression

Citation
Cyj. Peng et al., Modeling categorical variables by logistic regression, AM J HEAL B, 25(3), 2001, pp. 278-284
Citations number
16
Categorie Soggetti
Public Health & Health Care Science
Journal title
AMERICAN JOURNAL OF HEALTH BEHAVIOR
ISSN journal
10873244 → ACNP
Volume
25
Issue
3
Year of publication
2001
Pages
278 - 284
Database
ISI
SICI code
1087-3244(200105/06)25:3<278:MCVBLR>2.0.ZU;2-6
Abstract
Objective: To demonstrate the use of logistic regression in health care res earch. Method: Forward and backward stepwise logistic regression algorithms were systematically applied to a real-world data set comprising 301 cancer patients and a set of explanatory variables. Results: Four variables were identified as effective predictors of pain reporting by cancer patients dur ing chemotherapy: fatigue, depression, severity of colds or viral infection s, and insomnia. The 4-predictor model was validated by (a) significance te sts of regression coefficients at p<0.05, (b) significant improvement of th is model over competing models, and (c) goodness of fit indices. Conclusion s: Logistic regression is useful for health-related research in which outco mes of interest are often categorical.