Filter By:

Journal Check one or more journals to show results from those journals only.

Choose more journals

Article type Check one or more article types to show results from those article types only.
Subject Check one or more subjects to show results from those subjects only.
Date Choose a date option to show results from those dates only.

Custom date range

Clear all filters
Sort by:
Showing 1–13 of 13 results
Advanced filters: Author: Gert Hulselmans Clear advanced filters
  • The authors show that the transcription factor Grainy head (Grh) is necessary and sufficient for opening of epithelial enhancers, but not for their activation. Grh is shown to function as a pioneer factor, displacing nucleosomes and paving the way for other transcription factors to activate enhancers.

    • Jelle Jacobs
    • Mardelle Atkins
    • Stein Aerts
    Research
    Nature Genetics
    Volume: 50, P: 1011-1020
  • Deep learning models were used to design synthetic cell-type-specific enhancers that work in fruit fly brains and human cell lines, an approach that also provides insights into these gene regulatory elements.

    • Ibrahim I. Taskiran
    • Katina I. Spanier
    • Stein Aerts
    ResearchOpen Access
    Nature
    Volume: 626, P: 212-220
  • The brain cell types of Octopus vulgaris that control their sophisticated behavioral repertoire are still unknown. Here, authors use single-cell transcriptomics to profile neuronal and glial cell types and compare cell type relationships within the octopus brain and across species.

    • Ruth Styfhals
    • Grygoriy Zolotarov
    • Eve Seuntjens
    ResearchOpen Access
    Nature Communications
    Volume: 13, P: 1-17
  • A chromatin accessibility atlas of 240,919 cells in the adult and developing Drosophila brain reveals 95,000 enhancers, which are integrated in cell-type specific enhancer gene regulatory networks and decoded into combinations of functional transcription factor binding sites using deep learning.

    • Jasper Janssens
    • Sara Aibar
    • Stein Aerts
    Research
    Nature
    Volume: 601, P: 630-636
  • The key regulators that allow transition from proliferative to invasive phenotype in melanoma cells have not been identified yet. The authors perform chromatin and transcriptome profiling followed by comprehensive bioinformatics analysis identifying new candidate regulators for two distinct cell states of melanoma.

    • Annelien Verfaillie
    • Hana Imrichova
    • Stein Aerts
    ResearchOpen Access
    Nature Communications
    Volume: 6, P: 1-16
  • SCENIC is a computational pipeline to predict cell-type-specific transcription factors through network inference and motif enrichment. Here the authors describe a detailed protocol for pySCENIC: a faster, container-based implementation in Python.

    • Bram Van de Sande
    • Christopher Flerin
    • Stein Aerts
    Protocols
    Nature Protocols
    Volume: 15, P: 2247-2276