| Literature DB >> 29871590 |
Lingtao Su1,2, Guixia Liu3,4, Tian Bai5,6, Xiangyu Meng7,8, Qingshan Ma9.
Abstract
BACKGROUND: Prioritizing genes according to their associations with a cancer allows researchers to explore genes in more informed ways. By far, Gene-centric or network-centric gene prioritization methods are predominated. Genes and their protein products carry out cellular processes in the context of functional modules. Dysfunctional gene modules have been previously reported to have associations with cancer. However, gene module information has seldom been considered in cancer-related gene prioritization.Entities:
Keywords: Cancer-related genes; Gene module; Gene ontology; Gene prioritization
Mesh:
Year: 2018 PMID: 29871590 PMCID: PMC5989416 DOI: 10.1186/s12859-018-2216-0
Source DB: PubMed Journal: BMC Bioinformatics ISSN: 1471-2105 Impact factor: 3.169
Fig. 1Main components of MGOGP
Fig. 2MGOGP processes are illustrated. a Obtain gene modules, b Module importance measure and prioritization, c Module-specific gene importance measure and prioritization, d Compute global gene ranking
Fig. 3Rank fusion process. N is the number of genes in the module j, M is the total module number
Known prostate cancer genes retrieved from the OMIM
| Gene ID | Gene Symbol | Gene name |
|---|---|---|
| 367 | AR | Androgen receptor |
| 675 | BRCA2 | Breast cancer type 2 susceptibility protein |
| 3732 | CD82 | CD82 antigen |
| 11200 | CHEK2 | Serine/threonine-protein kinase Chk2 |
| 60528 | ELAC2 | Zinc phosphodiesterase ELAC protein 2 |
| 2048 | EPHB2 | Ephrin type-B receptor 2 precursor |
| 3092 | HIP1 | Huntingtin-interacting protein 1 |
| 1316 | KLF6 | Krueppel-like factor 6 |
| 8379 | MAD1L1 | Mitotic spindle assembly checkpoint proteinMAD |
| 4481 | MSR1 | Macrophage scavenger receptor types I and II |
| 4601 | MXI1 | MAX-interacting protein 1 |
| 7834 | PCAP | Predisposing for prostate cancer |
| 5728 | PTEN | Phosphatase and tensin homolog |
| 6041 | RNASEL | 2-5A-dependent ribonuclease |
| 5513 | HPC1 | Hereditary prostate cancer 1 |
Ranks of six test genes in prostate cancer gene network. They are prioritized by MDK, MRWR, Endeavour and MGOGP
| Gene | MDK | MRWR | Endeavour | MGOGP |
|---|---|---|---|---|
| BRCA1 | 29 | 6 | 58 | 63 |
| TP53 | 104 | 132 | 85 | 24 |
| EP300 | 83 | 70 | 90 | 11 |
| STAT3 | 39 | 41 | 88 | 17 |
| ZFHX3 | 174 | 174 | 34 | 19 |
| HNF1B | 44 | 190 | 109 | 26 |
| Average Rank | 78 | 102 | 77 | 26 |
Ranks of each validation gene
| Gene | MGOGP | Endeavour |
|---|---|---|
| AR | 32 | 30 |
| BRCA2 | 29 | 40 |
| CD82 | 169 | 211 |
| CHEK2 | 19 | 35 |
| ELAC2 | 64 | 176 |
| EPHB2 | 45 | 165 |
| HIP1 | 91 | 111 |
| KLF6 | 88 | 72 |
| MAD1L1 | 78 | 194 |
| MSR1 | 60 | 190 |
| MXI1 | 92 | 89 |
| PCAP | Not Exist | Not Exist |
| PTEN | 24 | 94 |
| RNASEL | 67 | 83 |
| HPC1 | Not Exist | Not Exist |
| BRCA1 | 46 | 16 |
| TP53 | 5 | 5 |
| EP300 | 11 | 12 |
| STAT3 | 17 | 23 |
| ZFHX3 | 59 | 68 |
| HNF1B | 26 | 12 |
Ten well-known breast cancer genes
| Gene ID | Gene symbol | Gene name |
|---|---|---|
| 672 | BRCA1 | Breast Cancer 1, Early Onset |
| 675 | BRCA2 | Breast Cancer 2, Early Onset |
| 7157 | TP53 | Tumor Protein P53 |
| 5728 | PTEN | Phosphatase And Tensin Homolog |
| 841 | CASP8 | Caspase 8, Apoptosis-Related Cysteine Peptidase |
| 2263 | FGFR2 | Fibroblast Growth Factor Receptor 2 |
| 4214 | MAP3K1 | Mitogen-Activated Protein Kinase Kinase Kinase 1, E3 Ubiquitin Protein Ligas |
| 11200 | CHEK2 | Checkpoint Kinase 2 |
| 472 | ATM | ATM Serine/Threonine Kinase |
| 83990 | BRIP1 | BRCA1 Interacting Protein C-Terminal Helicase 1 |
Fig. 4Known cancer-related gene prioritization result
Top 10 ranked modules
| Rank | Module name | Gene number | Importance value |
|---|---|---|---|
| 1 | zerbini_response_to_sulindac_dn | 6 | 0.542 |
| 2 | reichert_g1s_regulators_as_pi3k_targets | 8 | 0.523 |
| 3 | sa_g2_and_m_phases | 8 | 0.492 |
| 4 | reactome_vegf_ligand_receptor_interactions | 10 | 0.478 |
| 5 | biocarta_srcrptp_pathway | 11 | 0.461 |
| 6 | honrado_breast_cancer_brca1_vs_brca2 | 18 | 0.447 |
| 7 | tcga_glioblastoma_mutated | 8 | 0.445 |
| 8 | pid_vegf_vegfr_pathway | 10 | 0.444 |
| 9 | liang_silenced_by_methylation_dn | 11 | 0.411 |
| 10 | agarwal_akt_pathway_targets | 10 | 0.410 |
Fig. 5Comparison results between 6 methods. Endeavour, GeneFriends, PINTA, TOPPGene, TOppNet, and MGOGP
Fig. 6Comparison results between MGOGP, Endeavour, TOPPGene, and TOPNet with different number of known disease genes as input
Top 10 ranked genes of each method
| MGOGP | Endeavor | GeneFriends | PINTA | ToppGene | ToppNet | |
|---|---|---|---|---|---|---|
| Top 10 gene | CCNB1IP1 | SNRPF | LURAP1L | MGP | RAD51 | APP |
| Known disease genes fall in the top 10 gene | PTEN | MSH2 | NQO1 | SCGB2A2 | RAD5 | BARD1 |
In Table 6, each method is run with default parameter settings and use same training genes. Top 10 gene means the top 10 genes prioritized by each method and Known disease genes fall in the top 10 gene means genes supplied for training each method falls in the top 10 genes. Detail statistic results are shown in Fig. 7
Fig. 7Detail statistic results of results in Table 6