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Esti Yeger‐Lotem

Ben-Gurion University of the Negev

ORCID: 0000-0002-8279-7898

Publishes on Bioinformatics and Genomic Networks, Single-cell and spatial transcriptomics, Genetic Associations and Epidemiology. 82 papers and 14.5k citations.

82Publications
14.5kTotal Citations

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Top publicationsby citations

The GTEx Consortium atlas of genetic regulatory effects across human tissues
Cited by 5.7kOpen Access

The Genotype-Tissue Expression (GTEx) project was established to characterize genetic effects on the transcriptome across human tissues and to link these regulatory mechanisms to trait and disease associations. Here, we present analyses of the version 8 data, examining 15,201 RNA-sequencing samples from 49 tissues of 838 postmortem donors. We comprehensively characterize genetic associations for gene expression and splicing in cis and trans, showing that regulatory associations are found for almost all genes, and describe the underlying molecular mechanisms and their contribution to allelic heterogeneity and pleiotropy of complex traits. Leveraging the large diversity of tissues, we provide insights into the tissue specificity of genetic effects and show that cell type composition is a key factor in understanding gene regulatory mechanisms in human tissues.

Network motifs in integrated cellular networks of transcription–regulation and protein–protein interaction
Esti Yeger‐Lotem, Shmuel Sattath, Nadav Kashtan et al.|Proceedings of the National Academy of Sciences|2004
Cited by 544Open Access

Genes and proteins generate molecular circuitry that enables the cell to process information and respond to stimuli. A major challenge is to identify characteristic patterns in this network of interactions that may shed light on basic cellular mechanisms. Previous studies have analyzed aspects of this network, concentrating on either transcription-regulation or protein-protein interactions. Here we search for composite network motifs: characteristic network patterns consisting of both transcription-regulation and protein-protein interactions that recur significantly more often than in random networks. To this end we developed algorithms for detecting motifs in networks with two or more types of interactions and applied them to an integrated data set of protein-protein interactions and transcription regulation in Saccharomyces cerevisiae. We found a two-protein mixed-feedback loop motif, five types of three-protein motifs exhibiting coregulation and complex formation, and many motifs involving four proteins. Virtually all four-protein motifs consisted of combinations of smaller motifs. This study presents a basic framework for detecting the building blocks of networks with multiple types of interactions.