Literature DB >> 31621014

Open-Access Activity Prediction Tools for Natural Products. Case Study: hERG Blockers.

Fabian Mayr1,2, Christian Vieider2, Veronika Temml1, Hermann Stuppner1, Daniela Schuster3,4.   

Abstract

Interference with the hERG potassium ion channel may cause cardiac arrhythmia and can even lead to death. Over the last few decades, several drugs, already on the market, and many more investigational drugs in various development stages, have had to be discontinued because of their hERG-associated toxicity. To recognize potential hERG activity in the early stages of drug development, a wide array of computational tools, based on different principles, such as 3D QSAR, 2D and 3D similarity, and machine learning, have been developed and are reviewed in this chapter. The various available prediction tools Similarity Ensemble Approach, SuperPred, SwissTargetPrediction, HitPick, admetSAR, PASSonline, Pred-hERG, and VirtualToxLab™ were used to screen a dataset of known hERG synthetic and natural product actives and inactives to quantify and compare their predictive power. This contribution will allow the reader to evaluate the suitability of these computational methods for their own related projects. There is an unmet need for natural product-specific prediction tools in this field.

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Keywords:  ADMET prediction; Activity profiling; Human ether-a-go-go-related gene; Natural products; Target prediction; Virtual screening; hERG

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Year:  2019        PMID: 31621014     DOI: 10.1007/978-3-030-14632-0_6

Source DB:  PubMed          Journal:  Prog Chem Org Nat Prod        ISSN: 0071-7886


  1 in total

1.  Finding New Molecular Targets of Familiar Natural Products Using In Silico Target Prediction.

Authors:  Fabian Mayr; Gabriele Möller; Ulrike Garscha; Jana Fischer; Patricia Rodríguez Castaño; Silvia G Inderbinen; Veronika Temml; Birgit Waltenberger; Stefan Schwaiger; Rolf W Hartmann; Christian Gege; Stefan Martens; Alex Odermatt; Amit V Pandey; Oliver Werz; Jerzy Adamski; Hermann Stuppner; Daniela Schuster
Journal:  Int J Mol Sci       Date:  2020-09-26       Impact factor: 5.923

  1 in total

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