Combining SNP-chip and whole identification of...
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AIMS
203
Combining SNP-chip and whole genome sequence data towards the
identification of causal mutations underlying feet and leg disorders in
cattle T. Suchocki1,2, Ch. Egger-Danner3, H.
Schwarzenbacher,3, M. Mielczarek1,2 & J. Szyda1,2
1Wroclaw University of Environmental and Life Sciences, Institute of Genetics 2National Research Institute of Animal Production 3ZuchtData EDV-Dienstleistungen GmbH
Feet and leg disorders
• genetic improvement identification of genes responsible for the disorder
• epistasis looking for interactions between candidate genes
Genotypes
• 1,469 Fleckvieh and 754 Braunvieh cows
• deep pedigree (41,431 individuals from 17 generations)
• GeneSeek®Genomic ProfilerTM HD (76,934 SNPs)
• Selection criteria (MAF>0.01 & CallRate>99%)
• 74,762 SNPs with MAF=0.31 and CallRate=99,48%
Whole genome DNA sequence
• 30 Fleckvieh and 48 Braunvieh bulls (UMD 3.1 & GATK)
• Illumina HiSeq 2000 NGS
MATERIAL
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203
Combining SNP-chip and whole genome sequence data towards the
identification of causal mutations underlying feet and leg disorders in
cattle T. Suchocki1,2, Ch. Egger-Danner3, H.
Schwarzenbacher,3, M. Mielczarek1,2 & J. Szyda1,2
1Wroclaw University of Environmental and Life Sciences, Institute of Genetics 2National Research Institute of Animal Production 3ZuchtData EDV-Dienstleistungen GmbH
Variance components estimation
𝐲 = 𝝁 + 𝑿𝜷 + 𝒁𝜶𝜶 + 𝒁𝒅𝒅 + 𝒁𝒑𝒑 + 𝜺
• number of hoof diseases per cow and parity
• fixed effects (breed, parity (from 1 to 4 and ≥ 5), calving
year-season (years between 2012 and 2015, season 1 –
between October and March, season 2 – between April and
September), percent of non Holstein-Friesian genes)
• 𝜶 – random additive polygenic effect
• 𝒅 – random smith effect
• 𝒑 – random permanent environmental effect
METHODS
MATERIAL
Phenotypes
• total numer of hoof diseases till day in milk 100
• several parities (1-13)
• few records per cow (1-3)
![Page 3: Combining SNP-chip and whole identification of …theta.edu.pl/wp-content/uploads/2018/02/wcgalp2018TS1.pdfAIMS 203 Combining SNP-chip and whole genome sequence data towards the identification](https://reader034.fdocuments.net/reader034/viewer/2022043016/5f38aebaed914e33df164d69/html5/thumbnails/3.jpg)
203
Combining SNP-chip and whole genome sequence data towards the
identification of causal mutations underlying feet and leg disorders in
cattle T. Suchocki1,2, Ch. Egger-Danner3, H.
Schwarzenbacher,3, M. Mielczarek1,2 & J. Szyda1,2
1Wroclaw University of Environmental and Life Sciences, Institute of Genetics 2National Research Institute of Animal Production 3ZuchtData EDV-Dienstleistungen GmbH
SNP estimation
Single SNP model
𝐲 = 𝝁 + 𝑿𝜷 + 𝒁𝜶𝜶 + 𝒁𝒅𝒅 + 𝒁𝒑𝒑 + 𝒁𝒒𝒒 + 𝜺
• 𝒒 – SNP effect
• 𝒁𝒒 = {−𝟏, 𝟎, 𝟏}
• Wald test
• False Discovery Rate
Updating SNP information using WGS data
• identify polymorphisms in coding sequences (i.e. exons)
located in the proximity of significant SNPs
• annotation of SNPs to the WGS data from Gene2Farm
project
• „aggergate genotype” = significant SNPs+polimorphisms in
coding sequence+flanking SNPs for panel and WGS data
METHODS
![Page 4: Combining SNP-chip and whole identification of …theta.edu.pl/wp-content/uploads/2018/02/wcgalp2018TS1.pdfAIMS 203 Combining SNP-chip and whole genome sequence data towards the identification](https://reader034.fdocuments.net/reader034/viewer/2022043016/5f38aebaed914e33df164d69/html5/thumbnails/4.jpg)
203
Combining SNP-chip and whole genome sequence data towards the
identification of causal mutations underlying feet and leg disorders in
cattle T. Suchocki1,2, Ch. Egger-Danner3, H.
Schwarzenbacher,3, M. Mielczarek1,2 & J. Szyda1,2
1Wroclaw University of Environmental and Life Sciences, Institute of Genetics 2National Research Institute of Animal Production 3ZuchtData EDV-Dienstleistungen GmbH
Variance components
• Heritability = 0.28
SNP effects
Results
![Page 5: Combining SNP-chip and whole identification of …theta.edu.pl/wp-content/uploads/2018/02/wcgalp2018TS1.pdfAIMS 203 Combining SNP-chip and whole genome sequence data towards the identification](https://reader034.fdocuments.net/reader034/viewer/2022043016/5f38aebaed914e33df164d69/html5/thumbnails/5.jpg)
203
Combining SNP-chip and whole genome sequence data towards the
identification of causal mutations underlying feet and leg disorders in
cattle T. Suchocki1,2, Ch. Egger-Danner3, H.
Schwarzenbacher,3, M. Mielczarek1,2 & J. Szyda1,2
1Wroclaw University of Environmental and Life Sciences, Institute of Genetics 2National Research Institute of Animal Production 3ZuchtData EDV-Dienstleistungen GmbH
Aggregate genotypes
31 possible „aggregate genotypes on BTA7
Significant = TTCCAATTTT and TTCCAGTTTT
44 possible „aggregate genotypes on BTA14
Significant = AATTGGAATTTTGGTTGG,
AATTAAAATTGGAATTGG, AATTAGAATTGTGGTGGG,
AATTAGAATTGTGGTGAG, AATTAGAATTTTGGTTAG and
AGTTAGAATTGTAGTTAG
Results
![Page 6: Combining SNP-chip and whole identification of …theta.edu.pl/wp-content/uploads/2018/02/wcgalp2018TS1.pdfAIMS 203 Combining SNP-chip and whole genome sequence data towards the identification](https://reader034.fdocuments.net/reader034/viewer/2022043016/5f38aebaed914e33df164d69/html5/thumbnails/6.jpg)
203
Combining SNP-chip and whole genome sequence data towards the
identification of causal mutations underlying feet and leg disorders in
cattle T. Suchocki1,2, Ch. Egger-Danner3, H.
Schwarzenbacher,3, M. Mielczarek1,2 & J. Szyda1,2
1Wroclaw University of Environmental and Life Sciences, Institute of Genetics 2National Research Institute of Animal Production 3ZuchtData EDV-Dienstleistungen GmbH
Epistasis
• possible epistasis for markers rs136813945 and rs110532594
(p-value = 0.05023)
Results
Acknowledgement