Principal Investigator: Zhaohai Li, Ph.D.
this research project proposes to develop, implement and
test random effects (RE) models (continuous and binary) to
improve analysis of correlated data encountered in clinical
oncology research. Correlated clinical data are common in meta
analyses, family studies, and risk assessments. For example two
summary statistics (e.g. means) from the same study are
correlated data. Measurements of cancer risk for members within
a family tend to be more alike than cancer risk measurements from
members of different families. Assumption of a common random
component shared by outcomes of the same study or members of the
same family is proposed. Two types of random effects models
based on whether outcomes are continuous or binary (yes/no) will
be developed theoretically and numerically. These statistical
methods will be compared with the existing methods through
analysis and simulation. The new methods will be applied to
epidemiological and clinical oncology research data sets. Grant
from NCI 5-R29-CA64363, 1997-2000.
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