| Literature DB >> 17595237 |
Craig D Newgard1, Jason S Haukoos.
Abstract
In part 1 of this series, the authors describe the importance of incomplete data in clinical research, and provide a conceptual framework for handling incomplete data by describing typical mechanisms and patterns of censoring, and detailing a variety of relatively simple methods and their limitations. In part 2, the authors will explore multiple imputation (MI), a more sophisticated and valid method for handling incomplete data in clinical research. This article will provide a detailed conceptual framework for MI, comparative examples of MI versus naive methods for handling incomplete data (and how different methods may impact subsequent study results), plus a practical user's guide to implementing MI, including sample statistical software MI code and a deidentified precoded database for use with the sample code.Mesh:
Year: 2007 PMID: 17595237 DOI: 10.1197/j.aem.2006.11.038
Source DB: PubMed Journal: Acad Emerg Med ISSN: 1069-6563 Impact factor: 3.451