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Classifying mild traumatic brain injuries with functional network analysis
Authors:F. Anthony San Lucas  John Redell  Dash Pramod  Yin Liu
Affiliation:1.Department of Epidemiology,University of Texas M.D. Anderson Cancer Center,Houston,USA;2.Department of Neurobiology and Anatomy,University of Texas Health Science Center at Houston,Houston,USA;3.University of Texas Graduate School of Biomedical Science,Houston,USA;4.Center for Precision Health, School of Biomedical Informatics,The University of Texas Health Science Center at Houston,Houston,USA
Abstract:

Background

Traumatic brain injury (TBI) represents a critical health problem of which timely diagnosis and treatment remain challenging. TBI is a result of an external force damaging brain tissue, accompanied by delayed pathogenic events which aggravate the injury. Molecular responses to different mild TBI subtypes have not been well characterized. TBI subtype classification is an important step towards the development and application of novel treatments. The computational systems biology approach is proved to be a promising tool in biomarker discovery for central nervous system injury.

Results

In this study, we have performed a network-based analysis on gene expression profiles to identify functional gene subnetworks. The gene expression profiles were obtained from two experimental models of injury in rats: the controlled cortical impact and the fluid percussion injury. Our method integrates protein interaction information with gene expression profiles to identify subnetworks of genes as biomarkers. We have demonstrated that the selected gene subnetworks are more accurate to classify the heterogeneous responses to different injury models, compared to conventional analysis using individual marker genes selected without network information.

Conclusions

The systems approach can lead to a better understanding of the underlying complexities of the molecular responses after TBI and the identified subnetworks will have important prognostic functions for patients who sustain mild TBIs.
Keywords:
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