| Literature DB >> 30577783 |
F Anthony San Lucas1, John Redell2, Dash Pramod2,3, Yin Liu4,5,6.
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.Entities:
Keywords: Biomarkers; Gene ontology annotation; Subnetwork modularity; Weighted protein interaction network; mTBI subtype classification
Mesh:
Substances:
Year: 2018 PMID: 30577783 PMCID: PMC6302365 DOI: 10.1186/s12918-018-0645-z
Source DB: PubMed Journal: BMC Syst Biol ISSN: 1752-0509
Fig. 1An overview of subnetwork identification approach
Fig. 2Network structure profile. Distribution of node degrees in PPI, weighted node degrees and edge weights in the constructed weighted network. The y-axis represents the probability density for each of the distribution
Fig. 3Top five most significant subnetworks. The colors on the nodes indicate how the gene node differentiates between the mCCI and mFPI classes. Green indicates that the expression level of the gene in the mCCI class is significantly higher compared to that in the mFPI class. Red indicates that the gene expression level in the mCCI class is significantly lower compared to that in the mFPI class. If a node is white, the corresponding gene does not significantly differentiate (p-value < 0.05) the two sample groups. The intensity of the color corresponds to the level of significance. The numbers inside each node represent the discriminatory power of the gene, indicated by the t-score and the corresponding p-value. The numbers along each edge represent the edge weights in our constructed weighted network
Gene Ontology (GO) biological process annotations for significant subnetwork genes
| GO Biological Process | FDR |
|---|---|
| Dendrite development | 8.16E-08 |
| Neuron development | 2.86E-07 |
| Regulation of cell differentiation | 8.11E-07 |
| Neurogenesis | 5.41E-06 |
| Regulation of programmed cell death | 8.19E-06 |
| Regulation of membrane potential | 1.02E-05 |
| Ion transmembrane transport | 1.13E-05 |
| Cell-cell adhesion | 1.68E-05 |
| Blood coagulation | 4.52 E-05 |
| Wnt signaling pathway | 6.32E-04 |
The top 10 most enriched GO biological process terms with their corresponding corrected p-values are listed. FDR, adjusted p-values for multiple testing by Benjamini and Hochberg’s procedure
Fig. 4Comparison of classification performance between subnetwork markers and individual genes. The activities of identified subnetworks, calculated as the mean activities of its member genes, are used as the features of the support vector machine (SVM) to classify the samples. The classifier performance is measured by ROC curves
Fig. 5Comparison of classification performance among subnetworks, individual genes, and predefined functionally gene sets from GO or MSigDB. For each size of feature set, five iterations of five-fold cross validation are used to split the dataset, train, and evaluate classifier. The curves show the median of classification performance, measured by the F-scores, and error bars indicate the standard deviation over five cross-validation experiments