| Literature DB >> 17401454 |
Nicholas J Horton1, Ken P Kleinman.
Abstract
Missing data are a recurring problem that can cause bias or lead to inefficient analyses. Development of statistical methods to address missingness have been actively pursued in recent years, including imputation, likelihood and weighting approaches. Each approach is more complicated when there are many patterns of missing values, or when both categorical and continuous random variables are involved. Implementations of routines to incorporate observations with incomplete variables in regression models are now widely available. We review these routines in the context of a motivating example from a large health services research dataset. While there are still limitations to the current implementations, and additional efforts are required of the analyst, it is feasible to incorporate partially observed values, and these methods should be utilized in practice.Year: 2007 PMID: 17401454 PMCID: PMC1839993 DOI: 10.1198/000313007X172556
Source DB: PubMed Journal: Am Stat ISSN: 0003-1305 Impact factor: 8.710