Literature DB >> 29658791

High-Throughput Gene Expression Profiles to Define Drug Similarity and Predict Compound Activity.

Hans De Wolf1, Laure Cougnaud2, Kirsten Van Hoorde2, An De Bondt1, Joerg K Wegner1, Hugo Ceulemans1, Hinrich Göhlmann1.   

Abstract

By adding biological information, beyond the chemical properties and desired effect of a compound, uncharted compound areas and connections can be explored. In this study, we add transcriptional information for 31K compounds of Janssen's primary screening deck, using the HT L1000 platform and assess (a) the transcriptional connection score for generating compound similarities, (b) machine learning algorithms for generating target activity predictions, and (c) the scaffold hopping potential of the resulting hits. We demonstrate that the transcriptional connection score is best computed from the significant genes only and should be interpreted within its confidence interval for which we provide the stats. These guidelines help to reduce noise, increase reproducibility, and enable the separation of specific and promiscuous compounds. The added value of machine learning is demonstrated for the NR3C1 and HSP90 targets. Support Vector Machine models yielded balanced accuracy values ≥80% when the expression values from DDIT4 & SERPINE1 and TMEM97 & SPR were used to predict the NR3C1 and HSP90 activity, respectively. Combining both models resulted in 22 new and confirmed HSP90-independent NR3C1 inhibitors, providing two scaffolds (i.e., pyrimidine and pyrazolo-pyrimidine), which could potentially be of interest in the treatment of depression (i.e., inhibiting the glucocorticoid receptor (i.e., NR3C1), while leaving its chaperone, HSP90, unaffected). As such, the initial hit rate increased by a factor 300, as less, but more specific chemistry could be screened, based on the upfront computed activity predictions.

Entities:  

Keywords:  L1000; machine learning; transcriptional similarity

Mesh:

Substances:

Year:  2018        PMID: 29658791     DOI: 10.1089/adt.2018.845

Source DB:  PubMed          Journal:  Assay Drug Dev Technol        ISSN: 1540-658X            Impact factor:   1.738


  5 in total

1.  A genetics-led approach defines the drug target landscape of 30 immune-related traits.

Authors:  Hai Fang; Hans De Wolf; Bogdan Knezevic; Katie L Burnham; Julie Osgood; Anna Sanniti; Alicia Lledó Lara; Silva Kasela; Stephane De Cesco; Jörg K Wegner; Lahiru Handunnetthi; Fiona E McCann; Liye Chen; Takuya Sekine; Paul E Brennan; Brian D Marsden; David Damerell; Chris A O'Callaghan; Chas Bountra; Paul Bowness; Yvonne Sundström; Lili Milani; Louise Berg; Hinrich W Göhlmann; Pieter J Peeters; Benjamin P Fairfax; Michael Sundström; Julian C Knight
Journal:  Nat Genet       Date:  2019-06-28       Impact factor: 38.330

2.  Gene-signature-derived IC50s/EC50s reflect the potency of causative upstream targets and downstream phenotypes.

Authors:  Steffen Renner; Christian Bergsdorf; Rochdi Bouhelal; Magdalena Koziczak-Holbro; Andrea Marco Amati; Valerie Techer-Etienne; Ludivine Flotte; Nicole Reymann; Karen Kapur; Sebastian Hoersch; Edward James Oakeley; Ansgar Schuffenhauer; Hanspeter Gubler; Eugen Lounkine; Pierre Farmer
Journal:  Sci Rep       Date:  2020-06-15       Impact factor: 4.379

3.  De novo generation of hit-like molecules from gene expression signatures using artificial intelligence.

Authors:  Oscar Méndez-Lucio; Benoit Baillif; Djork-Arné Clevert; David Rouquié; Joerg Wichard
Journal:  Nat Commun       Date:  2020-01-03       Impact factor: 14.919

4.  Using common genetic variants to find drugs for common epilepsies.

Authors:  Nasir Mirza; Remi Stevelink; Basel Taweel; Bobby P C Koeleman; Anthony G Marson
Journal:  Brain Commun       Date:  2021-12-04

5.  Integrating cell morphology with gene expression and chemical structure to aid mitochondrial toxicity detection.

Authors:  Srijit Seal; Jordi Carreras-Puigvert; Maria-Anna Trapotsi; Hongbin Yang; Ola Spjuth; Andreas Bender
Journal:  Commun Biol       Date:  2022-08-23
  5 in total

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