| Literature DB >> 28255556 |
Wei Guo1, Dong-Mei Shang1, Jing-Hui Cao2, Kaiyan Feng3, Yi-Chun He2, Yang Jiang4, ShaoPeng Wang5, Yu-Fei Gao2.
Abstract
As a pathological condition, epilepsy is caused by abnormal neuronal discharge in brain which will temporarily disrupt the cerebral functions. Epilepsy is a chronic disease which occurs in all ages and would seriously affect patients' personal lives. Thus, it is highly required to develop effective medicines or instruments to treat the disease. Identifying epilepsy-related genes is essential in order to understand and treat the disease because the corresponding proteins encoded by the epilepsy-related genes are candidates of the potential drug targets. In this study, a pioneering computational workflow was proposed to predict novel epilepsy-related genes using the random walk with restart (RWR) algorithm. As reported in the literature RWR algorithm often produces a number of false positive genes, and in this study a permutation test and functional association tests were implemented to filter the genes identified by RWR algorithm, which greatly reduce the number of suspected genes and result in only thirty-three novel epilepsy genes. Finally, these novel genes were analyzed based upon some recently published literatures. Our findings implicate that all novel genes were closely related to epilepsy. It is believed that the proposed workflow can also be applied to identify genes related to other diseases and deepen our understanding of the mechanisms of these diseases.Entities:
Mesh:
Year: 2017 PMID: 28255556 PMCID: PMC5309434 DOI: 10.1155/2017/6132436
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.411
Figure 1The flowchart of RWR algorithm and filtering methods for identifying core candidate genes.
Thirty-three core candidate genes identified by our method.
| Gene symbol | Ensembl ID | Probability | Permutation FDR | MIS | MFS |
|---|---|---|---|---|---|
| ANK2 | ENSP00000349588 | 4.53 | <0.001 | 990 | 0.997 |
| ANK1 | ENSP00000265709 | 3.52 | 0.034 | 995 | 0.995 |
| EPHA7 | ENSP00000358309 | 3.28 | 0.025 | 906 | 0.988 |
| EPHA5 | ENSP00000273854 | 3.46 | 0.032 | 906 | 0.988 |
| PRIKCG | ENSP00000263431 | 4.75 | 0.025 | 905 | 0.987 |
| PTK7 | ENSP00000230419 | 3.10 | 0.023 | 943 | 0.987 |
| EPHA3 | ENSP00000337451 | 4.40 | 0.017 | 912 | 0.986 |
| PDE6C | ENSP00000360502 | 3.61 | 0.032 | 900 | 0.980 |
| EPHA4 | ENSP00000281821 | 4.16 | 0.008 | 990 | 0.980 |
| YWHAQ | ENSP00000238081 | 5.50 | 0.004 | 999 | 0.978 |
| GSK3A | ENSP00000222330 | 6.40 | 0.017 | 977 | 0.976 |
| CALM1 | ENSP00000349467 | 6.55 | 0.023 | 966 | 0.976 |
| EPHB2 | ENSP00000363763 | 4.39 | 0.026 | 908 | 0.975 |
| PRIKCA | ENSP00000408695 | 7.02 | 0.039 | 992 | 0.975 |
| CALM2 | ENSP00000272298 | 5.52 | 0.048 | 985 | 0.974 |
| YWHAE | ENSP00000264335 | 1.63 | 0.009 | 999 | 0.973 |
| YWHAB | ENSP00000300161 | 5.56 | 0.047 | 999 | 0.971 |
| ATP2A2 | ENSP00000440045 | 5.03 | 0.005 | 908 | 0.970 |
| YES1 | ENSP00000324740 | 6.54 | 0.002 | 967 | 0.969 |
| CALML3 | ENSP00000315299 | 3.96 | 0.027 | 906 | 0.968 |
| SGK1 | ENSP00000356832 | 4.90 | 0.034 | 999 | 0.966 |
| CALML6 | ENSP00000304643 | 4.44 | 0.01 | 909 | 0.965 |
| YWHAZ | ENSP00000309503 | 1.86 | 0.002 | 999 | 0.958 |
| MAPK7 | ENSP00000311005 | 7.15 | 0.031 | 999 | 0.956 |
| RRAS | ENSP00000246792 | 5.94 | 0.004 | 951 | 0.941 |
| RAP2A | ENSP00000245304 | 4.97 | 0.021 | 940 | 0.937 |
| RALA | ENSP00000005257 | 6.57 | 0.006 | 981 | 0.932 |
| RAP1B | ENSP00000250559 | 5.28 | 0.009 | 972 | 0.931 |
| MRAS | ENSP00000289104 | 4.70 | 0.022 | 932 | 0.931 |
| INSR | ENSP00000303830 | 7.27 | 0.024 | 996 | 0.927 |
| PAP1A | ENSP00000348786 | 6.49 | 0.014 | 995 | 0.925 |
| RND1 | ENSP00000308461 | 5.70 | 0.002 | 996 | 0.903 |
| FYN | ENSP00000346671 | 1.02 | <0.001 | 999 | 0.900 |
Figure 2The distribution of the thirty-three core candidate genes according to their protein families.