Cri-du-Chat Syndrome interactome network: Correlating genotypic variations to associated phenotypes

Gene Reports ◽  
2018 ◽  
Vol 11 ◽  
pp. 179-187 ◽  
Author(s):  
Giuseppe Gianini Figueiredo Leite ◽  
Hátylas Azevedo ◽  
Talita Mendes de Oliveira ◽  
Danielle Zildeana Sousa Furtado ◽  
Nilson Antonio Assunção
2013 ◽  
Vol 174 (1) ◽  
pp. 51-72 ◽  
Author(s):  
Stefania Albano ◽  
Laura Piccardi ◽  
Maria Rosa Pizzamiglio ◽  
Cristino Volpe ◽  
Simonetta D’Amico

2021 ◽  
Vol 7 (1) ◽  
Author(s):  
Paola Paci ◽  
Giulia Fiscon ◽  
Federica Conte ◽  
Rui-Sheng Wang ◽  
Lorenzo Farina ◽  
...  

AbstractIn this study, we integrate the outcomes of co-expression network analysis with the human interactome network to predict novel putative disease genes and modules. We first apply the SWItch Miner (SWIM) methodology, which predicts important (switch) genes within the co-expression network that regulate disease state transitions, then map them to the human protein–protein interaction network (PPI, or interactome) to predict novel disease–disease relationships (i.e., a SWIM-informed diseasome). Although the relevance of switch genes to an observed phenotype has been recently assessed, their performance at the system or network level constitutes a new, potentially fascinating territory yet to be explored. Quantifying the interplay between switch genes and human diseases in the interactome network, we found that switch genes associated with specific disorders are closer to each other than to other nodes in the network, and tend to form localized connected subnetworks. These subnetworks overlap between similar diseases and are situated in different neighborhoods for pathologically distinct phenotypes, consistent with the well-known topological proximity property of disease genes. These findings allow us to demonstrate how SWIM-based correlation network analysis can serve as a useful tool for efficient screening of potentially new disease gene associations. When integrated with an interactome-based network analysis, it not only identifies novel candidate disease genes, but also may offer testable hypotheses by which to elucidate the molecular underpinnings of human disease and reveal commonalities between seemingly unrelated diseases.


2016 ◽  
Vol 50 ◽  
pp. 47-52 ◽  
Author(s):  
Laurel D. Abbruzzese ◽  
Rachel Salazar ◽  
Maddie Aubuchon ◽  
Ashwini K. Rao

1965 ◽  
Vol 67 (5) ◽  
pp. 967
Author(s):  
W.R. Breg ◽  
M.W. Steele ◽  
A.I. Eidelman ◽  
D.J. Lion ◽  
T.A. Terzakis

Author(s):  
Young-Rae Cho ◽  
Aidong Zhang

High-throughput techniques involve large-scale detection of protein-protein interactions. This interaction data set from the genome-scale perspective is structured into an interactome network. Since the interaction evidence represents functional linkage, various graph-theoretic computational approaches have been applied to the interactome networks for functional characterization. However, this data is generally unreliable, and the typical genome-wide interactome networks have a complex connectivity. In this paper, the authors explore systematic analysis of protein interactome networks, and propose a $k$-round signal flow simulation algorithm to measure interaction reliability from connection patterns of the interactome networks. This algorithm quantitatively characterizes functional links between proteins by simulating the propagation of information signals through complex connections. In this regard, the algorithm efficiently estimates the strength of alternative paths for each interaction. The authors also present an algorithm for mining the complex interactome network structure. The algorithm restructures the network by hierarchical ordering of nodes, and this structure re-formatting process reveals hub proteins in the interactome networks. This paper demonstrates that two rounds of simulation accurately scores interaction reliability in terms of ontological correlation and functional consistency. Finally, the authors validate that the selected structural hubs represent functional core proteins.


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