» Articles » PMID: 25353622

Integrative Data Mining Highlights Candidate Genes for Monogenic Myopathies

Overview
Journal PLoS One
Date 2014 Oct 30
PMID 25353622
Citations 11
Authors
Affiliations
Soon will be listed here.
Abstract

Inherited myopathies are a heterogeneous group of disabling disorders with still barely understood pathological mechanisms. Around 40% of afflicted patients remain without a molecular diagnosis after exclusion of known genes. The advent of high-throughput sequencing has opened avenues to the discovery of new implicated genes, but a working list of prioritized candidate genes is necessary to deal with the complexity of analyzing large-scale sequencing data. Here we used an integrative data mining strategy to analyze the genetic network linked to myopathies, derive specific signatures for inherited myopathy and related disorders, and identify and rank candidate genes for these groups. Training sets of genes were selected after literature review and used in Manteia, a public web-based data mining system, to extract disease group signatures in the form of enriched descriptor terms, which include functional annotation, human and mouse phenotypes, as well as biological pathways and protein interactions. These specific signatures were then used as an input to mine and rank candidate genes, followed by filtration against skeletal muscle expression and association with known diseases. Signatures and identified candidate genes highlight both potential common pathological mechanisms and allelic disease groups. Recent discoveries of gene associations to diseases, like B3GALNT2, GMPPB and B3GNT1 to congenital muscular dystrophies, were prioritized in the ranked lists, suggesting a posteriori validation of our approach and predictions. We show an example of how the ranked lists can be used to help analyze high-throughput sequencing data to identify candidate genes, and highlight the best candidate genes matching genomic regions linked to myopathies without known causative genes. This strategy can be automatized to generate fresh candidate gene lists, which help cope with database annotation updates as new knowledge is incorporated.

Citing Articles

Expression of senescence-related CD161 promotes extranodal NK/T cell lymphoma by affecting T cell phenotype and cell cycle.

Jin C, Li X, Zhang C Mol Med. 2024; 30(1):230.

PMID: 39580409 PMC: 11585959. DOI: 10.1186/s10020-024-00969-7.


Combined sequence and copy number analysis improves diagnosis of limb girdle and other myopathies.

Nallamilli B, Pan Y, Sniderman King L, Jagannathan L, Ramachander V, Lucas A Ann Clin Transl Neurol. 2023; 10(11):2092-2104.

PMID: 37688281 PMC: 10647006. DOI: 10.1002/acn3.51896.


High-throughput transcriptome analyses from ASPIRO, a phase 1/2/3 study of gene replacement therapy for X-linked myotubular myopathy.

Andreoletti G, Romano O, Chou H, Sefid-Dashti M, Grilli A, Chen C Am J Hum Genet. 2023; 110(10):1648-1660.

PMID: 37673065 PMC: 10577074. DOI: 10.1016/j.ajhg.2023.08.008.


MYTHO is a novel regulator of skeletal muscle autophagy and integrity.

Leduc-Gaudet J, Franco-Romero A, Cefis M, Moamer A, Broering F, Milan G Nat Commun. 2023; 14(1):1199.

PMID: 36864049 PMC: 9981687. DOI: 10.1038/s41467-023-36817-1.


The Genomics of Arthrogryposis, a Complex Trait: Candidate Genes and Further Evidence for Oligogenic Inheritance.

Pehlivan D, Bayram Y, Gunes N, Akdemir Z, Shukla A, Bierhals T Am J Hum Genet. 2019; 105(1):132-150.

PMID: 31230720 PMC: 6612529. DOI: 10.1016/j.ajhg.2019.05.015.


References
1.
Gros-Louis F, Dupre N, Dion P, Fox M, Laurent S, Verreault S . Mutations in SYNE1 lead to a newly discovered form of autosomal recessive cerebellar ataxia. Nat Genet. 2006; 39(1):80-5. DOI: 10.1038/ng1927. View

2.
Nance J, Dowling J, Gibbs E, Bonnemann C . Congenital myopathies: an update. Curr Neurol Neurosci Rep. 2012; 12(2):165-74. PMC: 4491488. DOI: 10.1007/s11910-012-0255-x. View

3.
Li H, Chen Q, Liu F, Zhang X, Li W, Liu S . Unfolded protein response and activated degradative pathways regulation in GNE myopathy. PLoS One. 2013; 8(3):e58116. PMC: 3589370. DOI: 10.1371/journal.pone.0058116. View

4.
Wicik Z, Sadkowski T, Jank M, Motyl T . The transcriptomic signature of myostatin inhibitory influence on the differentiation of mouse C2C12 myoblasts. Pol J Vet Sci. 2012; 14(4):643-52. DOI: 10.2478/v10181-011-0095-7. View

5.
Chang S, Zhang W, Gao L, Wang J . Prioritization of candidate genes for attention deficit hyperactivity disorder by computational analysis of multiple data sources. Protein Cell. 2012; 3(7):526-34. PMC: 4875392. DOI: 10.1007/s13238-012-2931-7. View