Keywords

hierarchical model, multilevel analysis, outcomes research

 

Authors

  1. Cho, Sung-Hyun

Abstract

Background: Outcomes research often compares patient and organizational outcomes across institutions, dealing with variables measured at different hierarchical levels. A traditional approach to analyzing multilevel data has been to aggregate individual-level variables at the institutional level.

 

Objectives: To introduce the conceptual and statistical background of multilevel analysis and provide an example of multilevel analysis that was used to examine the relationship between nurse staffing and patient outcome.

 

Methods: A two-level model was presented employing multilevel logistic regression analysis.

 

Results: Outputs from multilevel analysis were interpreted. Other statistics were presented for model specification and testing.

 

Conclusion: Researchers should consider multilevel modeling at the study design stage to select theoretically and statistically sound research methods.