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DOC: Citation #151

Merged
merged 2 commits into from
Jul 12, 2024
Merged

DOC: Citation #151

merged 2 commits into from
Jul 12, 2024

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daikitag
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@jeromekelleher jeromekelleher left a comment

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Thanks for adding this - I think we can trim back the bibtex record a bit though

docs/citation.md Outdated
pages = {btae334},
year = {2024},
month = {05},
abstract = "{Ancestral recombination graphs (ARGs) encode the ensemble of correlated genealogical trees arising from recombination in a compact and efficient structure and are of fundamental importance in population and statistical genetics. Recent breakthroughs have made it possible to simulate and infer ARGs at biobank scale, and there is now intense interest in using ARG-based methods across a broad range of applications, particularly in genome-wide association studies (GWAS). Sophisticated methods exist to simulate ARGs using population genetics models, but there is currently no software to simulate quantitative traits directly from these ARGs. To apply existing quantitative trait simulators users must export genotype data, losing important information about ancestral processes and producing prohibitively large files when applied to the biobank-scale datasets currently of interest in GWAS. We present tstrait, an open-source Python library to simulate quantitative traits on ARGs, and show how this user-friendly software can quickly simulate phenotypes for biobank-scale datasets on a laptop computer.tstrait is available for download on the Python Package Index. Full documentation with examples and workflow templates is available on https://tskit.dev/tstrait/docs/, and the development version is maintained on GitHub (https://github.com/tskit-dev/tstrait).}",
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Can probably delete the abstract here, right?

@daikitag
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Thank you Jerome. I just copied and pasted it from the journal website, and I realized that it is very long. I extracted the elements that are not included in the msprime citation page.

@jeromekelleher jeromekelleher merged commit 2f52d95 into tskit-dev:main Jul 12, 2024
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@daikitag daikitag deleted the citation branch July 12, 2024 13:04
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2 participants