scispace - formally typeset
J

Jan Ihmels

Researcher at Weizmann Institute of Science

Publications -  15
Citations -  5657

Jan Ihmels is an academic researcher from Weizmann Institute of Science. The author has contributed to research in topics: Gene & Regulation of gene expression. The author has an hindex of 13, co-authored 15 publications receiving 5454 citations. Previous affiliations of Jan Ihmels include University of California, San Francisco & Howard Hughes Medical Institute.

Papers
More filters
Journal ArticleDOI

Single-cell proteomic analysis of S. cerevisiae reveals the architecture of biological noise

TL;DR: A strategy that pairs high-throughput flow cytometry and a library of GFP-tagged yeast strains to monitor rapidly and precisely protein levels at single-cell resolution is presented, revealing a remarkable structure to biological noise.
Journal ArticleDOI

Exploration of the Function and Organization of the Yeast Early Secretory Pathway through an Epistatic Miniarray Profile

TL;DR: Analysis of an E-MAP of genes acting in the yeast early secretory pathway revealed or clarified the role of many proteins involved in extensively studied processes such as sphingolipid metabolism and retention of HDEL proteins.
Journal ArticleDOI

Revealing modular organization in the yeast transcriptional network

TL;DR: The approach assigns genes to context-dependent and potentially overlapping 'transcription modules', thus overcoming the main limitations of traditional clustering methods, and uses the method to elucidate regulatory properties of cellular pathways and to characterize cis-regulatory elements.
Journal ArticleDOI

Iterative signature algorithm for the analysis of large-scale gene expression data.

TL;DR: It is shown analytically that for noisy expression data the proposed approach leads to better classification due to the implementation of the threshold, and argues that the method is in fact a generalization of singular value decomposition, which corresponds to the special case where no threshold is applied.
Journal ArticleDOI

Similarities and Differences in Genome-Wide Expression Data of Six Organisms

TL;DR: A comparative study of large datasets of expression profiles from six evolutionarily distant organisms finds that for all organisms the connectivity distribution follows a power-law, highly connected genes tend to be essential and conserved, and the expression program is highly modular.