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1: BMC Bioinformatics. 2007 Jun 14;8:202.Click here to read Click here to read Links

A Three Stage Integrative Pathway Search (TIPS) framework to identify toxicity relevant genes and pathways.

Department of Chemical Engineering and Materials Science, Michigan State University, East Lansing, MI 48824, USA. lizheng1@gmail.com <lizheng1@gmail.com>

BACKGROUND: The ability to obtain profiles of gene expressions, proteins and metabolites with the advent of high throughput technologies has advanced the study of pathway and network reconstruction. Genome-wide network reconstruction requires either interaction measurements or large amount of perturbation data, often not available for mammalian cell systems. To overcome these shortcomings, we developed a Three Stage Integrative Pathway Search (TIPS(c)) approach to reconstruct context-specific active pathways involved in conferring a specific phenotype, from limited amount of perturbation data. The approach was tested on human liver cells to identify pathways that confer cytotoxicity. RESULTS: This paper presents a systems approach that integrates gene expression and cytotoxicity profiles to identify a network of pathways involved in free fatty acid (FFA) and tumor necrosis factor-alpha (TNF-alpha) induced cytotoxicity in human hepatoblastoma cells (HepG2/C3A). Cytotoxicity relevant genes were first identified and then used to reconstruct a network using Bayesian network (BN) analysis. BN inference was used subsequently to predict the effects of perturbing a gene on the other genes in the network and on the cytotoxicity. These predictions were subsequently confirmed through the published literature and further experiments. CONCLUSION: The TIPS(c) approach is able to reconstruct active pathways that confer a particular phenotype by integrating gene expression and phenotypic profiles. A web-based version of TIPS(c) that performs the analysis described herein can be accessed at http://www.egr.msu.edu/tips.

PMID: 17570844 [PubMed - indexed for MEDLINE]

PMCID: PMC1906836