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Exploring SVA Insertion Polymorphisms in Shaping Differential Gene Expressions in the Central Nervous System
Journal article   Peer reviewed

Exploring SVA Insertion Polymorphisms in Shaping Differential Gene Expressions in the Central Nervous System

Lauren S Hughes, Alexander Fröhlich, Abigail L Pfaff, Vivien J Bubb, John P Quinn and Sulev Kõks
Biomolecules (Basel, Switzerland), Vol.14(3), 358
2024
PMID: 38540776

Abstract

Amyotrophic Lateral Sclerosis - genetics Central Nervous System DNA Transposable Elements Gene Expression Humans Minisatellite Repeats Retroelements
Transposable elements (TEs) are repetitive elements which make up around 45% of the human genome. A class of TEs, known as SINE-VNTR-Alu (SVA), demonstrate the capacity to mobilise throughout the genome, resulting in SVA polymorphisms for their presence or absence within the population. Although studies have previously highlighted the involvement of TEs within neurodegenerative diseases, such as Parkinson’s disease and amyotrophic lateral sclerosis (ALS), the exact mechanism has yet to be identified. In this study, we used whole-genome sequencing and RNA sequencing data of ALS patients and healthy controls from the New York Genome Centre ALS Consortium to elucidate the influence of reference SVA elements on gene expressions genome-wide within central nervous system (CNS) tissues. To investigate this, we applied a matrix expression quantitative trait loci analysis and demonstrate that reference SVA insertion polymorphisms can significantly modulate the expression of numerous genes, preferentially in the trans position and in a tissue-specific manner. We also highlight that SVAs significantly regulate mitochondrial genes as well as genes within the HLA and MAPT loci, previously associated within neurodegenerative diseases. In conclusion, this study continues to bring to light the effects of polymorphic SVAs on gene regulation and further highlights the importance of TEs within disease pathology.

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
1 Clinical & Life Sciences
1.52 Neurodegenerative Diseases
1.52.765 ALS Mechanisms
Web Of Science research areas
Biochemistry & Molecular Biology
ESI research areas
Biology & Biochemistry
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