Forging links between human mental retardation-associated CNVs and mouse gene knockout models.
Publication year
2009Source
Plos Genetics, 5, 6, (2009), pp. e1000531ISSN
Publication type
Article / Letter to editor
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Organization
Human Genetics
Journal title
Plos Genetics
Volume
vol. 5
Issue
iss. 6
Page start
p. e1000531
Page end
p. e1000531
Subject
IGMD 3: Genomic disorders and inherited multi-system disorders; NCMLS 6: Genetics and epigenetic pathways of disease; ONCOL 3: Translational researchAbstract
Rare copy number variants (CNVs) are frequently associated with common neurological disorders such as mental retardation (MR; learning disability), autism, and schizophrenia. CNV screening in clinical practice is limited because pathological CNVs cannot be distinguished routinely from benign CNVs, and because genes underlying patients' phenotypes remain largely unknown. Here, we present a novel, statistically robust approach that forges links between 148 MR-associated CNVs and phenotypes from approximately 5,000 mouse gene knockout experiments. These CNVs were found to be significantly enriched in two classes of genes, those whose mouse orthologues, when disrupted, result in either abnormal axon or dopaminergic neuron morphologies. Additional enrichments highlighted correspondences between relevant mouse phenotypes and secondary presentations such as brain abnormality, cleft palate, and seizures. The strength of these phenotype enrichments (>100% increases) greatly exceeded molecular annotations (<30% increases) and allowed the identification of 78 genes that may contribute to MR and associated phenotypes. This study is the first to demonstrate how the power of mouse knockout data can be systematically exploited to better understand genetically heterogeneous neurological disorders.
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- Academic publications [246515]
- Electronic publications [134155]
- Faculty of Medical Sciences [93308]
- Open Access publications [107686]
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