abstract = "The detection of gene-gene and gene-interactions in
genetic association studies is an important challenge
in human genetics. The detection of such interactive
models presents a difficult computational and
statistical challenge, especially as advances in
genotyping technology have rapidly expanded the number
of potential genetic predictors in such studies. The
scale of these studies makes exhaustive search
approaches infeasible, inspiring the application of
evolutionary computation algorithms to perform variable
selection and build classification models. Recently, an
application of grammatical evolution to evolve decision
trees (GEDT) has been introduced for detecting
interaction models. Initial results were promising, but
the previous applications of GEDT have been limited to
case-control studies with unrelated individuals. While
this study design is popular in human genetics, other
designs with related individuals offer distinct
advantages. Specifically, a trio-based design (with
genetic data for an affected individual and their
parents collected) can be a powerful approach to
mapping that is robust to population heterogeneity and
other potential confounders. In the current study, we
extend the GEDT approach to be able to handle trio data
(trioGEDT), and demonstrate its potential in simulated
data with gene-gene interactions that underlie disease
risk.",
notes = "Also known as \cite{2330873} Distributed at
GECCO-2012.