| Literature DB >> 30100824 |
Violeta Muñoz-Fuentes1, Pilar Cacheiro2, Terrence F Meehan1, Juan Antonio Aguilar-Pimentel3, Steve D M Brown4, Ann M Flenniken5,6, Paul Flicek1, Antonella Galli7, Hamed Haseli Mashhadi1, Martin Hrabě de Angelis3,8,9, Jong Kyoung Kim10, K C Kent Lloyd11, Colin McKerlie5,6,12, Hugh Morgan4, Stephen A Murray13, Lauryl M J Nutter5,12, Patrick T Reilly14, John R Seavitt15, Je Kyung Seong16, Michelle Simon4, Hannah Wardle-Jones7, Ann-Marie Mallon4, Damian Smedley2, Helen E Parkinson1.
Abstract
The International Mouse Phenotyping Consortium (IMPC) is building a catalogue of mammalian gene function by producing and phenotyping a knockout mouse line for every protein-coding gene. To date, the IMPC has generated and characterised 5186 mutant lines. One-third of the lines have been found to be non-viable and over 300 new mouse models of human disease have been identified thus far. While current bioinformatics efforts are focused on translating results to better understand human disease processes, IMPC data also aids understanding genetic function and processes in other species. Here we show, using gorilla genomic data, how genes essential to development in mice can be used to help assess the potentially deleterious impact of gene variants in other species. This type of analyses could be used to select optimal breeders in endangered species to maintain or increase fitness and avoid variants associated to impaired-health phenotypes or loss-of-function mutations in genes of critical importance. We also show, using selected examples from various mammal species, how IMPC data can aid in the identification of candidate genes for studying a condition of interest, deliver information about the mechanisms involved, or support predictions for the function of genes that may play a role in adaptation. With genotyping costs decreasing and the continued improvements of bioinformatics tools, the analyses we demonstrate can be routinely applied.Entities:
Keywords: Cheetah; Endangered species; Essential genes; IMPC; Knockout; Loss-of-function; Mouse; Non-model species; Panda; Phenotype; Polar bear; Wolf
Year: 2018 PMID: 30100824 PMCID: PMC6061128 DOI: 10.1007/s10592-018-1072-9
Source DB: PubMed Journal: Conserv Genet ISSN: 1566-0621 Impact factor: 2.538
Overlap of mouse IMPC lethal and viable genes (DR7.0) and human cell essential and non-essential genes
| Overlaps | Number of genes | |
|---|---|---|
| Mouse | Human cell linesa | |
| Lethal | Essential | 353 (35.9%) |
| Lethal | Non-essential | 631 (64.1%) |
| Viable | Essential | 9 (0.4%) |
| Viable | Non-essential | 2499 (99.6%) |
aEssential: genes essential for cell viability in > 50% of the cell lines and studied in > 50% of the cell lines (that is, equivalent to ≥ 6 cell lines)
Mouse orthologues with homozygous LoF alleles as identified by Xue et al. (2015) and their association to a lethal, subviable or viable phenotype based on viability data collected by the IMPC (DR7.0)
| Sample size | Lethal ( | Subviable ( | Viable ( | |
|---|---|---|---|---|
| Mountain gorillas (Gbb) | 7 | 5 (24%) | 3 (14%) | 13 (62%) |
| Eastern lowland gorillas (Gbg) | 9 | 4 (19%) | 3 (14%) | 14 (67% |
| Western lowland gorillas (Ggg) | 27 | 5 (14%) | 6 (16%) | 26 (70%) |
| Total (unique) | 43 | 9 (18% | 6 (12%) | 36 (70%) |
Sample size refers to the number of gorillas as indicated in the original publication
Fig. 1Human (a) and mouse orthologues (b) of gorilla genes with homozygous LoF alleles and their association to essentiality based on human cell studies (a) or IMPC and MGI data (b). (Data in Supplementary Table S3). Gorilla populations, from larger to smaller size in the wild: mountain gorillas (Gbb), eastern lowland gorillas (Gbg) and western lowland gorillas (Ggg)
Fig. 2Number of IMPC significant phenotypes for selected mammalian species. A mouse orthologue was found for 71–91% of the genes of each species, of which 24–25% had IMPC phenotype information (DR6.0, Supplementary Table S4). a Phenotypes classified according to the top levels of the Mammalian Phenotype Ontology. b–d Phenotypes can be classified for more granular ontology terms