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Disease insights through cross-species phenotype comparisons.


ABSTRACT: New sequencing technologies have ushered in a new era for diagnosis and discovery of new causative mutations for rare diseases. However, the sheer numbers of candidate variants that require interpretation in an exome or genomic analysis are still a challenging prospect. A powerful approach is the comparison of the patient's set of phenotypes (phenotypic profile) to known phenotypic profiles caused by mutations in orthologous genes associated with these variants. The most abundant source of relevant data for this task is available through the efforts of the Mouse Genome Informatics group and the International Mouse Phenotyping Consortium. In this review, we highlight the challenges in comparing human clinical phenotypes with mouse phenotypes and some of the solutions that have been developed by members of the Monarch Initiative. These tools allow the identification of mouse models for known disease-gene associations that may otherwise have been overlooked as well as candidate genes may be prioritized for novel associations. The culmination of these efforts is the Exomiser software package that allows clinical researchers to analyse patient exomes in the context of variant frequency and predicted pathogenicity as well the phenotypic similarity of the patient to any given candidate orthologous gene.

SUBMITTER: Haendel MA 

PROVIDER: S-EPMC4602072 | biostudies-literature | 2015 Oct

REPOSITORIES: biostudies-literature

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Disease insights through cross-species phenotype comparisons.

Haendel Melissa A MA   Vasilevsky Nicole N   Brush Matthew M   Hochheiser Harry S HS   Jacobsen Julius J   Oellrich Anika A   Mungall Christopher J CJ   Washington Nicole N   Köhler Sebastian S   Lewis Suzanna E SE   Robinson Peter N PN   Smedley Damian D  

Mammalian genome : official journal of the International Mammalian Genome Society 20150620 9-10


New sequencing technologies have ushered in a new era for diagnosis and discovery of new causative mutations for rare diseases. However, the sheer numbers of candidate variants that require interpretation in an exome or genomic analysis are still a challenging prospect. A powerful approach is the comparison of the patient's set of phenotypes (phenotypic profile) to known phenotypic profiles caused by mutations in orthologous genes associated with these variants. The most abundant source of relev  ...[more]

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