دورية أكاديمية

DAWN: a framework to identify autism genes and subnetworks using gene expression and genetics.

التفاصيل البيبلوغرافية
العنوان: DAWN: a framework to identify autism genes and subnetworks using gene expression and genetics.
المؤلفون: Li Liu, Jing Lei, Sanders, Stephan J., Willsey, Arthur Jeremy, Yan Kou, Cicek, Abdullah Ercument, Klei, Lambertus, Cong Lu, Xin He, Mingfeng Li, Muhle, Rebecca A., Ma'ayan, Avi, Noonan, James P., Sestan, Nenad, McFadden, Kathryn A., State, Matthew W., Buxbaum, Joseph D., Devlin, Bernie, Roeder, Kathryn
المصدر: Molecular Autism; 2014, Vol. 5 Issue 1, p1-35, 35p
مصطلحات موضوعية: GENETICS of autism, HIDDEN Markov models, GENE expression, AUTISM spectrum disorders, GENES, GENETIC mutation
مستخلص: Background De novo loss-of-function (dnLoF) mutations are found twofold more often in autismspectrumdisorder (ASD) probands than their unaffected siblings. Multiple independent dnLoF mutations in the same gene implicate the gene in risk and hence provide a systematic, albeit arduous, path forward for ASD genetics. It is likely that using additional non-genetic data will enhance the ability to identify ASD genes. Methods To accelerate the search for ASD genes, we developed a novel algorithm, DAWN, to model two kinds of data: rare variations from exome sequencing and gene co-expression in the mid-fetal prefrontal and motor-somatosensory neocortex, a critical nexus for risk. The algorithm casts the ensemble data as a hidden Markov random field in which the graph structure is determined by gene co-expression and it combines these interrelationships with node-specific observations, namely gene identity, expression, genetic data and the estimated effect on risk. Results Using currently available genetic data and a specific developmental time period for gene coexpression, DAWN identified 127 genes that plausibly affect risk, and a set of likely ASD subnetworks. Validation experiments making use of published targeted resequencing results demonstrate its efficacy in reliably predicting ASD genes. DAWN also successfully predicts known ASD genes, not included in the genetic data used to create the model. Conclusions Validation studies demonstrate that DAWN is effective in predicting ASD genes and subnetworks by leveraging genetic and gene expression data. The findings reported here implicate neurite extension and neuronal arborization as risks for ASD. Using DAWN on emerging ASD sequence data and gene expression data from other brain regions and tissues would likely identify novel ASD genes. DAWN can also be used for other complex disorders to identify genes and subnetworks in those disorders. [ABSTRACT FROM AUTHOR]
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قاعدة البيانات: Complementary Index
الوصف
تدمد:20402392
DOI:10.1186/2040-2392-5-22