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Pharmacogenomics: Identification of New Drug Targets01:29

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Advances in genomics have profoundly influenced drug discovery by increasing both the speed and accuracy of pharmaceutical development. Pharmacogenomics, which examines how genetic variation influences drug response, facilitates the identification of novel therapeutic targets and enables patient stratification for personalized treatment. These strategies contribute to improved drug efficacy, minimized adverse effects, and more efficient clinical trial design.Mapping genetic differences...
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Proteins are dynamic macromolecules that carry out a wide variety of essential processes; however, the activities of most proteins depend on their interactions with other molecules or ions, known as ligands.
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Polypharmacology Browser PPB3: A Web-Based Deep Learning Tool for Target Prediction Using ChEMBL Data.

Maedeh Darsaraee1, Sacha Javor1, Jean-Louis Reymond1

  • 1Department of Chemistry, Biochemistry and Pharmaceutical Sciences, University of Bern, Freiestrasse 3, 3012 Bern, Switzerland.

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Summary
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Deep neural networks predict drug-target interactions for polypharmacology. This approach aids drug development by identifying how molecules interact with multiple biological targets, improving prediction accuracy.

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Area of Science:

  • Computational chemistry
  • Pharmacology
  • Machine learning

Background:

  • Drug-like molecules frequently interact with multiple biological targets, a phenomenon known as polypharmacology.
  • Assessing polypharmacology is crucial for effective drug development and understanding drug mechanisms.

Purpose of the Study:

  • To develop and validate deep neural network models for predicting drug-target interactions.
  • To assess the polypharmacology of bioactive molecules using a large-scale dataset.

Main Methods:

  • Trained deep neural networks using binary substructure fingerprints of molecules from ChEMBL 34.
  • Associated molecules with targets based on activity data (≥50% active at ≤10 μM).
  • Utilized a dataset comprising over 2.4 million interactions between 1.1 million molecules and 7546 targets.

Main Results:

  • The models demonstrated good performance in terms of recall and precision for both molecules and targets.
  • The dataset size and scope (including various target types beyond proteins) significantly exceed previous models.
  • A case study highlighted the models' predictive capabilities compared to other online tools.

Conclusions:

  • Deep neural networks can effectively predict drug-target interactions and polypharmacology.
  • The developed models offer a valuable tool for drug discovery and development.
  • Online prediction services (PPB3) are available for public use.