Sign in
Author
|
Conference
|
Journal
|
Organization
|
Year
|
DOI
Look for results that meet for the following criteria:
since
equal to
before
between
and
Search in all fields of study
Limit my searches in the following fields of study
Agriculture Science
Arts & Humanities
Biology
Chemistry
Computer Science
Economics & Business
Engineering
Environmental Sciences
Geosciences
Material Science
Mathematics
Medicine
Physics
Social Science
Multidisciplinary
Keywords
(16)
Comparative Analysis
Computational Method
Computational Systems Biology
dynamic bayesian network
Gene Expression
Gene Ontology
Host Defense
host-pathogen interaction
Machine Learning
mycobacterium avium
Pattern Recognition
salmonella enterica
System Biology
Time Course
Post Infection
Temporal Difference
Subscribe
Academic
Publications
Multi-comparative systems biology analysis reveals time-course biosignatures of in vivo bovine pathway responses to B. melitensis , S. enterica Typhimurium and M. avium paratuberculosis
Multi-comparative systems biology analysis reveals time-course biosignatures of in vivo bovine pathway responses to B. melitensis , S. enterica Typhim
Edit
Multi-comparative systems biology analysis reveals time-course biosignatures of in vivo bovine pathway responses to B. melitensis , S. enterica Typhimurium and M. avium paratuberculosis
BibTex
|
RIS
|
RefWorks
Download
L Garry Adams
,
Sangeeta Khare
,
Sara D Lawhon
,
Carlos A Rossetti
,
Harris A Lewin
,
Mary S Lipton
,
Joshua E Turse
,
Dennis C Wylie
,
Yu Bai
,
Kenneth L Drake
Background To decipher the complexity and improve the understanding of host-pathogen interactions, biologists must adopt new system level approaches in which the hierarchy of biological interactions and dynamics can be studied. This paper presents the application of systems biology for the cross-comparative analysis and interactome modeling of three different infectious agents, leading to the identification of novel, unique and common molecular host responses (biosignatures). Methods A
computational systems biology
method was utilized to create interactome models of the host responses to Brucella melitensis (BMEL),
Salmonella enterica
Typhimurium (STM) and
Mycobacterium avium
paratuberculosis (MAP). A bovine ligated ileal loop biological model was employed to capture the host
gene expression
response at four time points post infection. New methods based on
Dynamic Bayesian Network
(DBN)
machine learning
were employed to conduct a systematic
comparative analysis
of pathway and
Gene Ontology
category perturbations. Results A cross-comparative assessment of 219 pathways and 1620
gene ontology
(GO) categories was performed on each pathogen-host condition. Both unique and common pathway and GO perturbations indicated remarkable temporal differences in pathogen-host response profiles. Highly discriminatory pathways were selected from each pathogen condition to create a common system level interactome model comprised of 622 genes. This model was trained with data from each pathogen condition to capture unique and common
gene expression
features and relationships leading to the identification of candidate host-pathogen points of interactions and discriminatory biosignatures. Conclusions Our results provide deeper understanding of the overall complexity of host defensive and pathogen invasion processes as well as the identification of novel host-pathogen interactions. The application of advanced computational methods for developing interactome models based on DBN has proven to be instrumental in conducting multi-conditional cross-comparative analyses. Further, this approach generates a fully simulateable model with capabilities for predictive analysis as well as for diagnostic pattern recognition. The resulting biosignatures may represent future targets for identification of emerging pathogens as well as for development of antimicrobial drugs, immunotherapeutics, or vaccines for prevention and treatment of diseases caused by known, emerging/re-emerging infectious agents.
Journal:
BMC Proceedings - BMC Proc
, vol. 5, pp. 1-8, 2011
DOI:
10.1186/1753-6561-5-S4-S6
Cumulative
Annual
View Publication
The following links allow you to view full publications. These links are maintained by other sources not affiliated with Microsoft Academic Search.
(
www.springerlink.com
)