Artikel
Unveiling disease-protein associations by navigating a structural alphabet-encoded protein network
The identification of genes associated with human disorders is a major goal in computational biology. Although the rapid emergence of cellular network-based approaches has been successful in many instances, all of these methodologies are partially limited by the incompleteness of the interactome. Here, we propose a novel method that may overcome the inherent problem of these incomplete molecular networks and assist already established network techniques. Instead of using protein-protein interaction networks, we encode the local threedimensional structure of a protein into a series of letters, called the Structural Alphabet, and define a proteomic structural network in which each node represents a unit of the structural alphabet (USA) and each pair of USAs is linked based on their structural similarity. This novel structural network is the platform by which a diffusion-based algorithm determines the potential involvement of proteins in disease phenotypes. Computational experiments show that the combination of diffusion-based methods with the constructed structural alphabet network offers better predictive performance than the results obtained using interactome networks and provides a new avenue to assist in identifying disease-related proteins.
- Sprache
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Englisch
- Erschienen in
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Journal: International Journal of Management, Economics and Social Sciences (IJMESS) ; ISSN: 2304-1366 ; Volume: 6 ; Year: 2017 ; Issue: Special Issue ; Pages: 274-292 ; Jersey City, NJ: IJMESS International Publishers
- Klassifikation
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Wirtschaft
- Thema
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Local structure similarity network
random walk with restart
protein modularity
structural alphabet
- Ereignis
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Geistige Schöpfung
- (wer)
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Tung, Chi-Hua
Chang, Jih-Hsu
Nacher, Jose C.
- Ereignis
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Veröffentlichung
- (wer)
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IJMESS International Publishers
- (wo)
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Jersey City, NJ
- (wann)
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2017
- Handle
- Letzte Aktualisierung
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10.03.2025, 11:42 MEZ
Datenpartner
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Objekttyp
- Artikel
Beteiligte
- Tung, Chi-Hua
- Chang, Jih-Hsu
- Nacher, Jose C.
- IJMESS International Publishers
Entstanden
- 2017