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      Three-dimensional reconstruction of protein networks provides insight into human genetic disease.

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          Abstract

          To better understand the molecular mechanisms and genetic basis of human disease, we systematically examine relationships between 3,949 genes, 62,663 mutations and 3,453 associated disorders by generating a three-dimensional, structurally resolved human interactome. This network consists of 4,222 high-quality binary protein-protein interactions with their atomic-resolution interfaces. We find that in-frame mutations (missense point mutations and in-frame insertions and deletions) are enriched on the interaction interfaces of proteins associated with the corresponding disorders, and that the disease specificity for different mutations of the same gene can be explained by their location within an interface. We also predict 292 candidate genes for 694 unknown disease-to-gene associations with proposed molecular mechanism hypotheses. This work indicates that knowledge of how in-frame disease mutations alter specific interactions is critical to understanding pathogenesis. Structurally resolved interaction networks should be valuable tools for interpreting the wealth of data being generated by large-scale structural genomics and disease association studies.

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          Author and article information

          Journal
          Nat Biotechnol
          Nature biotechnology
          Springer Science and Business Media LLC
          1546-1696
          1087-0156
          Jan 15 2012
          : 30
          : 2
          Affiliations
          [1 ] Department of Biological Statistics and Computational Biology, Cornell University, Ithaca, New York, USA.
          Article
          nbt.2106 NIHMS457244
          10.1038/nbt.2106
          3708476
          22252508
          44530e69-2295-44ea-8856-84cf4da4c439
          History

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