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Biochimica Et Biophysica Acta
|
May 7, 2014
From genome to function by studying eQTLs
Harm-Jan Westra, Lude Franke
Nature Communications
|
October 2, 2020
Mendelian randomization while jointly modeling cis genetics identifies causal relationships between gene expression and lipids
Adriaan van der Graaf, Annique Claringbould, Antoine Rimbert, et al.
Genome Medicine
|
December 21, 2018
An integrative approach for building personalized gene regulatory networks for precision medicine
Monique G P van der Wijst, Dylan H de Vries, Harm Brugge, et al.
Scientific Reports
|
August 4, 2025
Optimized summary-statistic-based single-cell eQTL meta-analysis
Maryna Korshevniuk, Harm-Jan Westra, Roy Oelen, et al.
Genome Medicine
|
October 21, 2015
An integrative systems genetics approach reveals potential causal genes and pathways related to obesity
Lisette J A Kogelman, Daria V Zhernakova, Harm-Jan Westra, et al.
BMC Genomics
|
March 16, 2021
Correction for both common and rare cell types in blood is important to identify genes that correlate with age
Damiano Pellegrino-Coppola, Annique Claringbould, Maartje Stutvoet, et al.
Bioinformatics (Oxford, England)
|
June 10, 2011
MixupMapper: correcting sample mix-ups in genome-wide datasets increases power to detect small genetic effects
Harm-Jan Westra, Ritsert C Jansen, Rudolf S N Fehrmann, et al.
American Journal of Human Genetics
|
July 4, 2015
Disentangling the Effects of Colocalizing Genomic Annotations to Functionally Prioritize Non-coding Variants within Complex-Trait Loci
Gosia Trynka, Harm-Jan Westra, Kamil Slowikowski, et al.
BMC Research Notes
|
December 16, 2014
Genotype harmonizer: automatic strand alignment and format conversion for genotype data integration
Patrick Deelen, Marc Jan Bonder, K Joeri van der Velde, et al.
Genome Biology
|
January 23, 2024
PICALO: principal interaction component analysis for the identification of discrete technical, cell-type, and environmental factors that mediate eQTLs
Martijn Vochteloo, Patrick Deelen, Britt Vink, et al.
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of 10
Search research articles
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Showing results (1-10 of 92) with videos related to
Sort By:
Page
of 10
Biochimica Et Biophysica Acta
|
May 7, 2014
From genome to function by studying eQTLs
Harm-Jan Westra, Lude Franke
Nature Communications
|
October 2, 2020
Mendelian randomization while jointly modeling cis genetics identifies causal relationships between gene expression and lipids
Adriaan van der Graaf, Annique Claringbould, Antoine Rimbert, et al.
Genome Medicine
|
December 21, 2018
An integrative approach for building personalized gene regulatory networks for precision medicine
Monique G P van der Wijst, Dylan H de Vries, Harm Brugge, et al.
Scientific Reports
|
August 4, 2025
Optimized summary-statistic-based single-cell eQTL meta-analysis
Maryna Korshevniuk, Harm-Jan Westra, Roy Oelen, et al.
Genome Medicine
|
October 21, 2015
An integrative systems genetics approach reveals potential causal genes and pathways related to obesity
Lisette J A Kogelman, Daria V Zhernakova, Harm-Jan Westra, et al.
BMC Genomics
|
March 16, 2021
Correction for both common and rare cell types in blood is important to identify genes that correlate with age
Damiano Pellegrino-Coppola, Annique Claringbould, Maartje Stutvoet, et al.
Bioinformatics (Oxford, England)
|
June 10, 2011
MixupMapper: correcting sample mix-ups in genome-wide datasets increases power to detect small genetic effects
Harm-Jan Westra, Ritsert C Jansen, Rudolf S N Fehrmann, et al.
American Journal of Human Genetics
|
July 4, 2015
Disentangling the Effects of Colocalizing Genomic Annotations to Functionally Prioritize Non-coding Variants within Complex-Trait Loci
Gosia Trynka, Harm-Jan Westra, Kamil Slowikowski, et al.
BMC Research Notes
|
December 16, 2014
Genotype harmonizer: automatic strand alignment and format conversion for genotype data integration
Patrick Deelen, Marc Jan Bonder, K Joeri van der Velde, et al.
Genome Biology
|
January 23, 2024
PICALO: principal interaction component analysis for the identification of discrete technical, cell-type, and environmental factors that mediate eQTLs
Martijn Vochteloo, Patrick Deelen, Britt Vink, et al.
Page
of 10