Integration of Genetic Familial Dependence Structure in Latent Class Models
One of the main reasons for the slow progress in detecting susceptibility genes in complex diseases may be that the clinical diagnoses used as phenotypes are genetically heterogeneous. The general objective of this paper is to develop a latent class model to identify homogeneous disease sub-types based on multivariate disease measurements in pedigrees from genetic studies. Our hypothesis is that the resulting disease sub-types will be influenced by a small number of genes, that will thus be more easily detectable. Specifically, we extended latent class analysis to allow dependence between the latent disease class status of relatives within nuclear families as a function of their kinship. Such a dependence model is expected to capture the underlying Mendelian transmission of alleles within families. An EM algorithm maximizes the likelihood and a cross-validation approach selects the optimal model. Through a simulation study under a genetic disease class model, we show that taking into account familial dependence improves the classification of the individuals in their true classes, compared to a traditional model assuming independence. An application of our approach to a dataset from the Autism Genetics Research Exchange is also presented.
Year of publication: |
2009
|
---|---|
Authors: | Aurelie, Labbe ; Alexandre, Bureau ; Chantal, Merette |
Published in: |
The International Journal of Biostatistics. - De Gruyter, ISSN 1557-4679. - Vol. 5.2009, 1, p. 1-30
|
Publisher: |
De Gruyter |
Saved in:
Saved in favorites
Similar items by person
-
An Integrated Hierarchical Bayesian Model for Multivariate eQTL Mapping
Pier, Scott-Boyer Marie, (2012)
-
Principal Components of Heritability for High Dimension Quantitative Traits and General Pedigrees
Karim, Oualkacha, (2012)
-
Hierarchical Inverse Gaussian Models and Multiple Testing: Application to Gene Expression Data
Aurelie, Labbe, (2005)
- More ...