about
A fine-scale dissection of the DNA double-strand break repair machinery and its implications for breast cancer therapy.MCL-CAw: a refinement of MCL for detecting yeast complexes from weighted PPI networks by incorporating core-attachment structure.Examination of the relationship between essential genes in PPI network and hub proteins in reverse nearest neighbor topologyIdentifying conserved protein complexes between species by constructing interolog networksInferring synthetic lethal interactions from mutual exclusivity of genetic events in cancer.Methods for protein complex prediction and their contributions towards understanding the organisation, function and dynamics of complexes.Beyond cytokinesis: the emerging roles of CEP55 in tumorigenesis.Personalised pathway analysis reveals association between DNA repair pathway dysregulation and chromosomal instability in sporadic breast cancer.Targeted Therapies for Triple-Negative Breast Cancer: Combating a Stubborn Disease.Not just a colourful metaphor: modelling the landscape of cellular development using Hopfield networks.Enhanced dependency of KRAS-mutant colorectal cancer cells on RAD51-dependent homologous recombination repair identified from genetic interactions in Saccharomyces cerevisiae.Evolution and Controllability of Cancer Networks: A Boolean Perspective.Systems approaches for identifying disease genes and drug targets.EnzDP: improved enzyme annotation for metabolic network reconstruction based on domain composition profiles.Employing functional interactions for characterisation and detection of sparse complexes from yeast PPI networks.Refining Markov Clustering for protein complex prediction by incorporating core-attachment structure.Metabolic deregulation in prostate cancerUnderstanding the functional impact of copy number alterations in breast cancer using a network modeling approach
P50
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P50
description
onderzoeker
@nl
researcher
@en
հետազոտող
@hy
name
Sriganesh Srihari
@ast
Sriganesh Srihari
@en
Sriganesh Srihari
@es
Sriganesh Srihari
@nl
type
label
Sriganesh Srihari
@ast
Sriganesh Srihari
@en
Sriganesh Srihari
@es
Sriganesh Srihari
@nl
prefLabel
Sriganesh Srihari
@ast
Sriganesh Srihari
@en
Sriganesh Srihari
@es
Sriganesh Srihari
@nl
P106
P1153
24825350200
P214
1499150808947519000003
P2456
P31
P496
0000-0002-0713-6723
P7859
lccn-nb2017014583