%0 Generic %A van Workum, Dirk-Jan M. %A Mehrem, Sarah L. %A Snoek, Basten L. %A Alderkamp, Marrit C. %A Lapin, Dmitry %A Mulder, Flip F. M. %A van den Ackerveken, Guido %A de Ridder, D. (Dick) %A Eric Schranz, M. %A Smit, Sandra %D 2024 %T Data underlying the publication: Lactuca super-pangenome reduces bias towards reference genes in lettuce research %U %R 10.4121/c7935d6a-d6ae-42e7-af7e-0ae8cddf70d7.v1 %K lettuce %K Lactuca sativa %K pangenomics %K super-pangenome %K PAV-GWAS %X <p>Supplementary data belonging to "<em>Lactuca</em> super-pangenome reduces bias towards reference genes in lettuce research". In order to get an overview of the gene content of the genus <em>Lactuca</em>, we used WGS data of 474 accessions beloning to <em>L. sativa</em>, <em>L. serriola</em>, <em>L. saligna</em> and <em>L. virosa</em> for the construction of a linear pangenome per species. This linear pangenome was built using the assemble-and-iteratively-add approach. Once constructed, presence-absence variation (PAV) and copy-number variation (CNV) were calculated from the WGS data on the linear pangenomes. The PAV data was integrated across species into a <em>Lactuca</em> wide table that contains the variation for each of the 474 accessions for all genes in the super-pangenome. This super-pangenome resource was then used for functional characterisation of the core and variable genes, and a phylogeny of all accessions. Finally, we used the <em>L. sativa</em> PAV data to show its complementary and benefits in GWAS over SNPs. All data underlying these analyses is bundled together in one tarball including README.</p> %I 4TU.ResearchData