Chromosome-wise protein interaction patterns and their impact on functional implications of large-scale genomic aberrations Journal Article


Authors: Kirk, I. K.; Weinhold, N.; Belling, K.; Skakkebæk, N. E.; Jensen, T. S.; Leffers, H.; Juul, A.; Brunak, S.
Article Title: Chromosome-wise protein interaction patterns and their impact on functional implications of large-scale genomic aberrations
Abstract: Gene copy-number changes influence phenotypes through gene-dosage alteration and subsequent changes of protein complex stoichiometry. Human trisomies where gene copy numbers are increased uniformly over entire chromosomes provide generic cases for studying these relationships. In most trisomies, gene and protein level alterations have fatal consequences. We used genome-wide protein-protein interaction data to identify chromosome-specific patterns of protein interactions. We found that some chromosomes encode proteins that interact infrequently with each other, chromosome 21 in particular. We combined the protein interaction data with transcriptome data from human brain tissue to investigate how this pattern of global interactions may affect cellular function. We identified highly connected proteins that also had coordinated gene expression. These proteins were associated with important neurological functions affecting the characteristic phenotypes for Down syndrome and have previously been validated in mouse knockout experiments. Our approach is general and applicable to other gene-dosage changes, such as arm-level amplifications in cancer. © 2017 The Author(s)
Keywords: aneuploidy; systems biology; stoichiometry; trisomy; protein complex; genome structure; protein interaction data; topology-associated domain (tad)
Journal Title: Cell Systems
Volume: 4
Issue: 3
ISSN: 2405-4712
Publisher: Cell Press  
Date Published: 2017-03-22
Start Page: 357
End Page: 364.e3
Language: English
DOI: 10.1016/j.cels.2017.01.001
PROVIDER: scopus
PUBMED: 28215527
DOI/URL:
Notes: Article -- Export Date: 4 April 2017 -- Source: Scopus
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