biological signaling networks
Recently Published Documents


TOTAL DOCUMENTS

8
(FIVE YEARS 1)

H-INDEX

4
(FIVE YEARS 0)

2020 ◽  
Author(s):  
Yongsheng Li ◽  
Brandon Burgman ◽  
Ishaani S Khatri ◽  
Sairahul R Pentaparthi ◽  
Zhe Su ◽  
...  

Abstract Understanding the functional impact of cancer somatic mutations represents a critical knowledge gap for implementing precision oncology. It has been increasingly appreciated that the interaction profile mediated by a genomic mutation provides a fundamental link between genotype and phenotype. However, specific effects on biological signaling networks for the majority of mutations are largely unknown by experimental approaches. To resolve this challenge, we developed e-MutPath (edgetic Mutation-mediated Pathway perturbations), a network-based computational method to identify candidate ‘edgetic’ mutations that perturb functional pathways. e-MutPath identifies informative paths that could be used to distinguish disease risk factors from neutral elements and to stratify disease subtypes with clinical relevance. The predicted targets are enriched in cancer vulnerability genes, known drug targets but depleted for proteins associated with side effects, demonstrating the power of network-based strategies to investigate the functional impact and perturbation profiles of genomic mutations. Together, e-MutPath represents a robust computational tool to systematically assign functions to genetic mutations, especially in the context of their specific pathway perturbation effect.


2018 ◽  
Author(s):  
Patrick Harrigan ◽  
Hiten D. Madhani ◽  
Hana El-Samad

SUMMARYBiological signaling networks use feedback control to dynamically adjust their operation in real time. Traditional static genetic methods such as gene knockouts or rescue experiments often can identify the existence of feedback interactions, yet are unable to determine what feedback dynamics are required. Here, we implement a new strategy, closed loop optogenetic compensation (CLOC), to address this problem. Using a custom-built hardware and software infrastructure, CLOC monitors in real time the output of a pathway deleted for a feedback regulator. A minimal model uses these measurements to calculate and deliver—on the fly—an optogenetically-enabled transcriptional input designed to compensate for the effects of the feedback deletion. Application of CLOC to the yeast pheromone response pathway revealed surprisingly distinct dynamic requirements for three well-studied feedback regulators. CLOC, a marriage of control theory and traditional genetics, presents a broadly applicable methodology for defining the dynamic function of biological feedback regulators.


Author(s):  
David Hathcock ◽  
James Sheehy ◽  
Casey Weisenberger ◽  
Efe Ilker ◽  
Michael Hinczewski

2013 ◽  
Vol 13 (4-5) ◽  
pp. 675-690 ◽  
Author(s):  
ROLAND KAMINSKI ◽  
TORSTEN SCHAUB ◽  
ANNE SIEGEL ◽  
SANTIAGO VIDELA

AbstractProposing relevant perturbations to biological signaling networks is central to many problems in biology and medicine because it allows for enabling or disabling certain biological outcomes. In contrast to quantitative methods that permit fine-grained (kinetic) analysis, qualitative approaches allow for addressing large-scale networks. This is accomplished by more abstract representations such as logical networks. We elaborate upon such a qualitative approach aiming at the computation of minimal interventions in logical signaling networks relying on Kleene's three-valued logic and fixpoint semantics. We address this problem within answer set programming and show that it greatly outperforms previous work using dedicated algorithms.


Sign in / Sign up

Export Citation Format

Share Document