| Literature DB >> 35501860 |
Lotfi Slim1,2,3, Clément Chatelain4, Hélène de Foucauld4, Chloé-Agathe Azencott5,6,7.
Abstract
BACKGROUND: For the most part, genome-wide association studies (GWAS) have only partially explained the heritability of complex diseases. One of their limitations is to assume independent contributions of individual variants to the phenotype. Many tools have therefore been developed to investigate the interactions between distant loci, or epistasis. Among them, the recently proposed EpiGWAS models the interactions between a target variant and the rest of the genome. However, applying this approach to studying interactions along all genes of a disease map is not straightforward. Here, we propose a pipeline to that effect, which we illustrate by investigating a multiple sclerosis GWAS dataset from the Wellcome Trust Case Control Consortium 2 through 19 disease maps from the MetaCore pathway database.Entities:
Keywords: Causal inference; Epistasis; GWAS; Gene–gene interaction; Multiple sclerosis
Mesh:
Year: 2022 PMID: 35501860 PMCID: PMC9063218 DOI: 10.1186/s12920-022-01247-3
Source DB: PubMed Journal: BMC Med Genomics ISSN: 1755-8794 Impact factor: 3.622
Titles and internal IDs of MetaCore disease maps related to MS
| Internal ID | Title |
|---|---|
| 3302 | Notch signaling in oligodendrocyte precursor cell differentiation in multiple sclerosis |
| 3305 | SHH signaling in oligodendrocyte precursor cells differentiation in multiple sclerosis |
| 3306 | Inhibition of oligodendrocyte precursor cells differentiation by Wnt signaling in multiple sclerosis |
| 4455 | Inhibition of remyelination in multiple sclerosis: regulation of cytoskeleton proteins |
| 4593 | Axonal degeneration in multiple sclerosis |
| 4693 | Role of Thyroid hormone in regulation of oligodendrocyte differentiation in multiple sclerosis |
| 4703 | Demyelination in multiple sclerosis |
| 4791 | Role of CNTF and LIF in regulation of oligodendrocyte development in multiple sclerosis |
| 4794 | Retinoic acid regulation of oligodendrocyte differentiation in multiple sclerosis |
| 4843 | Growth factors in regulation of oligodendrocyte precursor cells proliferation in multiple sclerosis |
| 4846 | Growth factors in regulation of oligodendrocyte precursor cells survival in multiple sclerosis |
| 4901 | Inhibition of remyelination in multiple sclerosis: role of cell-cell and ECM-cell interactions |
| 5199 | Cooperative action of IFN- |
| 5288 | Impaired inhibition of Th17 cell differentiation by IFN- |
| 5378 | Role of IFN- |
| 5398 | Role of IFN- |
| 5518 | Role of IFN- |
| 5601 | IL-2 as a growth factor for T cells in multiple sclerosis |
| 5611 | Role of IL-2 in the enhancement of NK cell cytotoxicity in multiple sclerosis |
Fig. 1Epistatic interaction discovery pipeline
Number of SNPs, genes, gene pairs and top 2% of gene pairs for each mapping and disease map
| Map ID | Physical mapping | eQTL mapping | ||||||
|---|---|---|---|---|---|---|---|---|
| #SNPs | #genes | #gene pairs | top 2% | #SNPs | #genes | #gene pairs | top 2% | |
| 3302 | 416 | 21 | 210 | 4 | 833 | 19 | 171 | 3 |
| 3305 | 70 | 10 | 45 | 1 | 238 | 8 | 28 | 1 |
| 3306 | 383 | 21 | 210 | 4 | 869 | 19 | 171 | 3 |
| 4455 | 755 | 38 | 703 | 14 | 1813 | 36 | 630 | 13 |
| 4593 | 1295 | 24 | 276 | 6 | 1647 | 17 | 136 | 3 |
| 4693 | 544 | 34 | 561 | 11 | 912 | 27 | 351 | 7 |
| 4703 | 331 | 28 | 378 | 8 | 999 | 27 | 351 | 7 |
| 4791 | 252 | 24 | 276 | 6 | 1264 | 23 | 253 | 5 |
| 4794 | 84 | 15 | 105 | 2 | 331 | 12 | 66 | 1 |
| 4843 | 984 | 32 | 496 | 10 | 1401 | 29 | 406 | 8 |
| 4846 | 1318 | 36 | 630 | 13 | 1555 | 32 | 496 | 10 |
| 4901 | 1173 | 35 | 595 | 12 | 1209 | 24 | 276 | 6 |
| 5199 | 656 | 28 | 378 | 8 | 1320 | 32 | 496 | 10 |
| 5288 | 515 | 27 | 351 | 7 | 724 | 22 | 231 | 5 |
| 5378 | 257 | 22 | 231 | 5 | 907 | 22 | 231 | 5 |
| 5398 | 141 | 21 | 210 | 4 | 1050 | 24 | 276 | 6 |
| 5518 | 392 | 29 | 406 | 8 | 1474 | 27 | 351 | 7 |
| 5601 | 348 | 28 | 378 | 8 | 742 | 25 | 300 | 6 |
| 5611 | 224 | 22 | 231 | 5 | 906 | 24 | 276 | 6 |
Fig. 2Examples of epistatic pairs detected on two disease maps. a The 2% top-scoring pairs in DM 3306 for eQTL and physical mappings. b The 2% top-scoring pairs in DM 4455 for eQTL and physical mappings
Connectivity: whether the epistatic interactions form a single connected component, for the networks obtained by physical mapping, eQTL mapping, and joining both
| Map ID | Physical mapping ( | eQTL mapping ( | Joint ( |
|---|---|---|---|
| 3302 | Yes ( | Yes (0.077) | Yes ( |
| 3305 | Yes (1.000) | Yes (1.000) | Yes (0.377) |
| 3306 | Yes ( | Yes (0.078) | Yes ( |
| 4455 | Yes ( | Yes ( | Yes ( |
| 4593 | Yes ( | Yes (0.092) | No (NA) |
| 4693 | Yes ( | Yes ( | Yes ( |
| 4703 | Yes ( | Yes ( | Yes ( |
| 4791 | Yes ( | Yes ( | Yes ( |
| 4794 | Yes (0.256) | Yes (1.000) | Yes (0.098) |
| 4843 | No (NA) | Yes ( | Yes ( |
| 4846 | Yes ( | Yes ( | Yes ( |
| 4901 | Yes ( | Yes ( | Yes ( |
| 5199 | Yes ( | Yes ( | Yes ( |
| 5288 | Yes ( | Yes ( | Yes ( |
| 5378 | Yes ( | Yes ( | Yes ( |
| 5398 | Yes ( | Yes ( | Yes ( |
| 5518 | Yes ( | Yes ( | Yes ( |
| 5601 | Yes ( | Yes ( | Yes ( |
| 5611 | Yes ( | Yes ( | Yes ( |
The bold values correspond to p-values below the significance threshold of 0.05
Centrality: Node(s) of maximum degree in the epistatic network obtained by joining the physical epistatic network and the eQTL epistatic network
| Map ID | Max node degree | Node(s) of max degree | |
|---|---|---|---|
| 3302 | 4 | ADAM17, CNTN1 (F3) | |
| 3305 | 2 | 0.365 | SUFU |
| 3306 | 6 | GSK3 beta | |
| 4455 | 11 | WASF2 | |
| 4593 | 4 | 0.086 | NCX1 |
| 4693 | 10 | mTORC1 | |
| 4703 | 5 | 0.056 | AKT(PKB), Caspase-8 |
| 4791 | 5 | AKT(PKB), PI3K reg class IA | |
| 4794 | 2 | 0.553 | DHA2, GALC |
| 4843 | 8 | SHP-2 | |
| 4846 | 11 | Neuregulin 1 | |
| 4901 | 12 | FAK1 | |
| 5199 | 7 | JAK2 | |
| 5288 | 6 | IL-1RI, ROR-alpha | |
| 5378 | 5 | JNK(MAPK8-10) | |
| 5398 | 6 | TRADD | |
| 5518 | 6 | AKT(PKB) | |
| 5601 | 7 | Bcl-XL | |
| 5611 | 5 | Granzyme B, KLRK1 (NKG2D) |
The bold values correspond to p-values below the significance threshold of 0.05
Pairs of genes identified by physical mapping, and selected because at least one of the SNPs involved has a direct consequence as protein dysfunction
| Map ID | Gene pair | Type of interaction |
|---|---|---|
| 3305 | GLI-1 and SUFU | Direct interaction between the genes |
| Uunspecified impact on MS | ||
| 4703 | AKT (PKB) and MEKK1 (MAP3K1) | No direct interaction between the genes |
| AKT has a specified impact on MS | ||
| 5611 | Granzyme B and KLRK1 (NKG2D) | No direct interaction between the genes |
| Unspecified impact on MS | ||
| Granzyme B and PI3K cat class IA | No direct interaction between the genes | |
| Unspecified impact on MS |
Fig. 3The top-scoring pairs in DM 3305 for eQTL and physical mappings. Note the GL1–SUFU pair
Pairs of genes identified by eQTL mapping, filtered by direction of the epistatic effect, and involving a gene with known impact on multiple sclerosis
| Map ID | Gene pair | Evidence |
|---|---|---|
| 5199 | IP10 and NF- | Both genes impact MS |
| 4455 | alpha-V/beta-1 integrin and PCBP-1 | alpha-V/beta-1 integrin probably impacts MS |
| 4703 | PADI2 and JNK1 (MAPK8) | PADI2 increases MS |
| 4703 | PADI2 and Caspase-3 | |
| 4703 | PADI2 and Caspase-8 | |
| 5199 | IP10 and IRF1 | IP10 impacts MS |
| 5199 | IRF1 and NF- | NF- |
| 5199 | JAK2 and PKA-reg (cAMP-dependent) | JAK2 impacts MS |
| 5288 | IL-1R1 and ROR-alpha | IL-1R1 probably impacts MS |
Fig. 4The top-scoring pairs in DM 5199 for eQTL and physical mappings. Note the NF-B – IP10 pair
Fig. 5Schematic representation of the role played by the gene pairs NF-B/IP10 in the development of demyelination in MS. a Transformation of astrocytes in immuno-competent cells and T-cells recruitment following the NF-B/IP10 axis activation in MS. b After recruitment of T-cells, adhesion of T-cell/astrocyte leads to in ammatory and immune response inducing neuron damage