AI Article Synopsis

  • Research on various inbred mouse strains has advanced our understanding of genetic variants linked to diseases, with a vast array of traits cataloged for public access.* -
  • New mouse models and enhanced genomic data sets help improve trait-variant analysis, although issues like sparse genotypes and data incompatibility remain obstacles.* -
  • The development of GenomeMUSter, a comprehensive data resource, addresses these issues by offering extensive single-nucleotide variant data, facilitating cross-species comparisons and broadening the applications in genetic research related to health and disease.*

Article Abstract

Hundreds of inbred mouse strains and intercross populations have been used to characterize the function of genetic variants that contribute to disease. Thousands of disease-relevant traits have been characterized in mice and made publicly available. New strains and populations including consomics, the collaborative cross, expanded BXD, and inbred wild-derived strains add to existing complex disease mouse models, mapping populations, and sensitized backgrounds for engineered mutations. The genome sequences of inbred strains, along with dense genotypes from others, enable integrated analysis of trait-variant associations across populations, but these analyses are hampered by the sparsity of genotypes available. Moreover, the data are not readily interoperable with other resources. To address these limitations, we created a uniformly dense variant resource by harmonizing multiple data sets. Missing genotypes were imputed using the Viterbi algorithm with a data-driven technique that incorporates local phylogenetic information, an approach that is extendable to other model organisms. The result is a web- and programmatically accessible data service called GenomeMUSter, comprising single-nucleotide variants covering 657 strains at 106.8 million segregating sites. Interoperation with phenotype databases, analytic tools, and other resources enable a wealth of applications, including multitrait, multipopulation meta-analysis. We show this in cross-species comparisons of type 2 diabetes and substance use disorder meta-analyses, leveraging mouse data to characterize the likely role of human variant effects in disease. Other applications include refinement of mapped loci and prioritization of strain backgrounds for disease modeling to further unlock extant mouse diversity for genetic and genomic studies in health and disease.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10903950PMC
http://dx.doi.org/10.1101/gr.278157.123DOI Listing

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