Literature DB >> 23412934

A genome-wide association study of brain lesion distribution in multiple sclerosis.

Pierre-Antoine Gourraud1, Michael Sdika, Pouya Khankhanian, Roland G Henry, Azadeh Beheshtian, Paul M Matthews, Stephen L Hauser, Jorge R Oksenberg, Daniel Pelletier, Sergio E Baranzini.   

Abstract

Brain magnetic resonance imaging is widely used as a diagnostic and monitoring tool in multiple sclerosis and provides a non-invasive, sensitive and reproducible way to track the disease. Topological characteristics relating to the distribution and shape of lesions are recognized as important neuroradiological markers in the diagnosis of multiple sclerosis, although these have been much less well characterized quantitatively than have traditional measures such as T2 hyperintense or T1 hypointense lesion volumes. Here, we used voxel-level 3 T magnetic resonance imaging T1-weighted scans to reconstruct the 3D topology of lesions in 284 subjects with multiple sclerosis and tested whether this is a heritable phenotype. To this end, we extracted the genotypes from a published genome-wide association study on these same individuals and searched for genetic associations with lesion load, shape and topological distribution. Lesion probability maps were created to identify frequently affected areas and to assess the overall distribution of T1 lesions in the subject population as a whole. We then developed an original algorithm to cluster adjacent lesional voxels (cluxels) in each subject and tested whether cluxel topology was significantly associated with any single-nucleotide polymorphism in our data set. To focus on patterns of lesion distribution, we computed the first 10 principal components. Although principal component 1 correlated with lesion load, none of the remaining orthogonal components correlated with any other known variable. We then conducted genome-wide association studies on each of these and found 31 significant associations (false discovery rate <0.01) with principal component 8, which represents a mode of variation of lesion topology in the population. The majority of the loci can be linked to genes related to immune cell function and to myelin and neural growth; some (SYK, MYT1L, TRAPPC9, SLITKR6 and RIC3) have been previously associated with the distribution of white matter lesions in multiple sclerosis. Finally, we used a bioinformatics approach to identify a network of 48 interacting proteins showing genetic associations (P < 0.01) with cluxel topology in multiple sclerosis. This network also contains proteins expressed in immune cells and is enriched in molecules expressed in the central nervous system that contribute to neural development and regeneration. Our results show how quantitative traits derived from brain magnetic resonance images of patients with multiple sclerosis can be used as dependent variables in a genome-wide association study. With the widespread availability of powerful computing and the availability of genotyped populations, integration of imaging and genetic data sets is likely to become a mainstream tool for understanding the complex biological processes of multiple sclerosis and other brain disorders.

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Year:  2013        PMID: 23412934      PMCID: PMC3613709          DOI: 10.1093/brain/aws363

Source DB:  PubMed          Journal:  Brain        ISSN: 0006-8950            Impact factor:   13.501


  62 in total

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Authors:  Michaël Sdika
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2.  Two newly identified genetic determinants of pigmentation in Europeans.

Authors:  Patrick Sulem; Daniel F Gudbjartsson; Simon N Stacey; Agnar Helgason; Thorunn Rafnar; Margret Jakobsdottir; Stacy Steinberg; Sigurjon A Gudjonsson; Arnar Palsson; Gudmar Thorleifsson; Snaebjörn Pálsson; Bardur Sigurgeirsson; Kristin Thorisdottir; Rafn Ragnarsson; Kristrun R Benediktsdottir; Katja K Aben; Sita H Vermeulen; Alisa M Goldstein; Margaret A Tucker; Lambertus A Kiemeney; Jon H Olafsson; Jeffrey Gulcher; Augustine Kong; Unnur Thorsteinsdottir; Kari Stefansson
Journal:  Nat Genet       Date:  2008-05-18       Impact factor: 38.330

3.  Nonrigid registration of multiple sclerosis brain images using lesion inpainting for morphometry or lesion mapping.

Authors:  Michaël Sdika; Daniel Pelletier
Journal:  Hum Brain Mapp       Date:  2009-04       Impact factor: 5.038

4.  Phosphorylation sites of myelin basic protein by a catalytic fragment of non-receptor type protein-tyrosine kinase p72syk and comparison with those by insulin receptor kinase.

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Authors:  Terry Vrijenhoek; Jacobine E Buizer-Voskamp; Inge van der Stelt; Eric Strengman; Chiara Sabatti; Ad Geurts van Kessel; Han G Brunner; Roel A Ophoff; Joris A Veltman
Journal:  Am J Hum Genet       Date:  2008-10       Impact factor: 11.025

6.  Genome-wide association analysis of susceptibility and clinical phenotype in multiple sclerosis.

Authors:  Sergio E Baranzini; Joanne Wang; Rachel A Gibson; Nicholas Galwey; Yvonne Naegelin; Frederik Barkhof; Ernst-Wilhelm Radue; Raija L P Lindberg; Bernard M G Uitdehaag; Michael R Johnson; Aspasia Angelakopoulou; Leslie Hall; Jill C Richardson; Rab K Prinjha; Achim Gass; Jeroen J G Geurts; Jolijn Kragt; Madeleine Sombekke; Hugo Vrenken; Pamela Qualley; Robin R Lincoln; Refujia Gomez; Stacy J Caillier; Michaela F George; Hourieh Mousavi; Rosa Guerrero; Darin T Okuda; Bruce A C Cree; Ari J Green; Emmanuelle Waubant; Douglas S Goodin; Daniel Pelletier; Paul M Matthews; Stephen L Hauser; Ludwig Kappos; Chris H Polman; Jorge R Oksenberg
Journal:  Hum Mol Genet       Date:  2008-11-14       Impact factor: 6.150

7.  Gene discovery through imaging genetics: identification of two novel genes associated with schizophrenia.

Authors:  S G Potkin; J A Turner; J A Fallon; A Lakatos; D B Keator; G Guffanti; F Macciardi
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8.  Genotype-Phenotype correlations in multiple sclerosis: HLA genes influence disease severity inferred by 1HMR spectroscopy and MRI measures.

Authors:  D T Okuda; R Srinivasan; J R Oksenberg; D S Goodin; S E Baranzini; A Beheshtian; E Waubant; S S Zamvil; D Leppert; P Qualley; R Lincoln; R Gomez; S Caillier; M George; J Wang; S J Nelson; B A C Cree; S L Hauser; D Pelletier
Journal:  Brain       Date:  2008-11-20       Impact factor: 13.501

9.  DNA methylation in the human cerebral cortex is dynamically regulated throughout the life span and involves differentiated neurons.

Authors:  Kimberly D Siegmund; Caroline M Connor; Mihaela Campan; Tiffany I Long; Daniel J Weisenberger; Detlev Biniszkiewicz; Rudolf Jaenisch; Peter W Laird; Schahram Akbarian
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Authors:  Cindy M Sondag; Gunjan Dhawan; Colin K Combs
Journal:  J Neuroinflammation       Date:  2009-01-05       Impact factor: 8.322

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  20 in total

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Authors:  Alessandro Didonna; Jorge R Oksenberg
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2.  The multiple sclerosis risk allele within the AHI1 gene is associated with relapses in children and adults.

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3.  MRI-based prediction of conversion from clinically isolated syndrome to clinically definite multiple sclerosis using SVM and lesion geometry.

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4.  Early complement genes are associated with visual system degeneration in multiple sclerosis.

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Journal:  Brain       Date:  2019-09-01       Impact factor: 13.501

5.  Heritability and genetic association analysis of neuroimaging measures in the Diabetes Heart Study.

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Review 6.  Genetics of Multiple Sclerosis: An Overview and New Directions.

Authors:  Nikolaos A Patsopoulos
Journal:  Cold Spring Harb Perspect Med       Date:  2018-07-02       Impact factor: 6.915

7.  Oligoclonal bands and age at onset correlate with genetic risk score in multiple sclerosis.

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Review 8.  A review of genome-wide association studies for multiple sclerosis: classical and hypothesis-driven approaches.

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9.  Genetic predictors of relapse rate in pediatric MS.

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Review 10.  Neuroinflammation - using big data to inform clinical practice.

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Journal:  Nat Rev Neurol       Date:  2016-11-18       Impact factor: 42.937

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