standards > reporting guideline > DOI:10.25504/FAIRsharing.vy4h4j
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ready Minimal Information for QTLs and Association Studies

Abbreviation: MIQAS


General Information
The MIQAS set of rules accompanied with the standardized XML and tab-delimited file formats will serve two goals: to encourage research groups that wish to publish a QTL paper to provide and submit the necessary information that would make meta-analysis possible. to allow easy interchange of data between different QTL and association analysis databases. Databases that implement the standardized XML format will typically write an import and an export filter to read data from and dump data into that an XML file.



How to cite this record FAIRsharing.org: MIQAS; Minimal Information for QTLs and Association Studies; DOI: https://doi.org/10.25504/FAIRsharing.vy4h4j; Last edited: Jan. 8, 2019, 1:34 p.m.; Last accessed: Sep 25 2021 12:49 a.m.


Record updated: Oct. 16, 2016, 9:58 p.m. by The FAIRsharing Team.

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Related Databases (1)
Animal Quantitative Trait Loci (QTL) Database
The Animal Quantitative Trait Loci (QTL) Database (Animal QTLdb) strives to collect all publicly available trait mapping data, i.e. QTL (phenotype/expression, eQTL), candidate gene and association data (GWAS), and copy number variations (CNV) mapped to livestock animal genomes, in order to facilitate locating and comparing discoveries within and between species. New data and database tools are continually developed to align various trait mapping data to map-based genome features such as annotated genes.

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