Prof. Dr. Mihai Netea
Life & Medical Sciences Institute (LIMES)
mnetea@uni-bonn.de View member: Prof. Dr. Mihai Netea
iScience
Population-scale datasets of healthy individuals capture genetic and environmental factors influencing gene expression. The expression variance of a gene of interest (GOI) can be exploited to set up a quasi loss- or gain-of-function "" experiment. We describe here an approach, , taking advantage of population-scale multi-layered data to infer gene function and relationships between phenotypes and expression. Within a reference dataset, derives two experimental groups with LOW or HIGH expression of the GOI, enabling the subsequent comparison of their transcriptional profile and functional parameters. We demonstrate that this approach robustly identifies the phenotypic relevance of a GOI allowing the stratification of genes according to biological functions, and we generalize this concept to almost 16,000 genes in the human transcriptome. Additionally, we describe how predicts monocytes to be the major cell type in the pathophysiology of STAT1 mutations, evidence validated in a clinical cohort.
© 2022 The Authors.
PMID: 36310583
Life & Medical Sciences Institute (LIMES)
mnetea@uni-bonn.de View member: Prof. Dr. Mihai NeteaLife & Medical Sciences Institute (LIMES)
t.ulas@uni-bonn.de View member: Dr. Thomas UlasLife & Medical Sciences Institute (LIMES)
j.schultze@uni-bonn.de View member: Prof. Dr. med. Joachim L. SchultzeInstitute of Systems Medicine, DZNE and LIMES Institute
a.aschenbrenner@uni-bonn.de View member: Dr. Anna Aschenbrenner