Estimators and Tests in the Analysis of Multiple Nonindependent 2 X 2 Tables with Partially Missing Observations

Publication Description
We present methods for the analysis of a K-variate binary measure for two independent groups where some observations may be incomplete, as in the case of K repeated measures in a comparative trial. For the K 2 X 2 tables, let θ = (θ , ..., θ ) be a vector of association parameters where θ is a measure of association that is a continuous function of the probabilities π in each group (i = 1, 2; k = 1, ..., K), such as the log odds ratio or log relative risk. The asymptotic distribution of the estimates θ = ( ) is derived. Under the assumption that θ = θ for all k, we describe the maximally efficient linear estimator θ of the common parameter θ. Tests of contrasts on the θ are presented which provide a test of homogeneity H : θ = θ for all k ≠ l. We then present maximally efficient tests of aggregate as sociation H : θ = θ , where θ is a given value. It is shown that the test of aggregate association H is asymptotically independent of the preliminary test of homogeneity H . These methods generalize the efficient estimators of Gart (1962, Biometrics 18, 601-610), and the Cochran (1954, Biometrics 10, 417-451), Mantel-Haenszel (1959, Journal of the National Cancer Institute 22, 719-748), and Radhakrishna (1965, Biometrics 21, 86-98) tests to nonindependent tables. The methods are illustrated with an analysis of repeated morphologic evaluations of liver biopsies obtained in the National Cooperative Gallstone Study.

Primary Author
John M. Lachin
L. J. Wei

Volume
44

Issue
2

Start Page
513

Other Pages
528

Publisher
Biometrics Society

URL
https://www.jstor.org/stable/2531864

PMID
3291958



Reference Type
Journal Article

Periodical Full
Biometrics

Publication Year
1988

Publication Date
Jun 1,

Place of Publication
United States

ISSN/ISBN
0006-341X

Document Object Index
10.2307/2531864