Literature DB >> 16288868

A neural network based classification scheme for cytotoxicity predictions:Validation on 30,000 compounds.

László Molnár1, György M Keseru, Akos Papp, Zsolt Lorincz, Géza Ambrus, Ferenc Darvas.   

Abstract

Elimination of cytotoxic compounds in the early phases of drug discovery can save substantial amounts of research and development costs. An artificial neural network based approach using atomic fragmental descriptors has been developed to categorize compounds according to their in vitro human cytotoxicity. Fragmental descriptors were obtained from the Atomic7 linear logP calculation method implemented in Pallas PrologP program. We used cytotoxicity values obtained from an in-house screening campaign of a diverse set of 30,000 drug-like molecules. The training set included only the most and least toxic 12,998 compounds, however, cytotoxicity data for all compounds were used for validation. The proposed approach can be safely used for filtering out potentially cytotoxic candidates from the development pipeline before synthesis or assays during lead development or lead optimisation. The trained neural network misclassified less than 5% percent of the non-toxic and 9% of the toxic compounds.

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Year:  2005        PMID: 16288868     DOI: 10.1016/j.bmcl.2005.10.079

Source DB:  PubMed          Journal:  Bioorg Med Chem Lett        ISSN: 0960-894X            Impact factor:   2.823


  7 in total

1.  Naïve Bayesian Models for Vero Cell Cytotoxicity.

Authors:  Alexander L Perryman; Jimmy S Patel; Riccardo Russo; Eric Singleton; Nancy Connell; Sean Ekins; Joel S Freundlich
Journal:  Pharm Res       Date:  2018-06-29       Impact factor: 4.200

2.  Modelling compound cytotoxicity using conformal prediction and PubChem HTS data.

Authors:  Fredrik Svensson; Ulf Norinder; Andreas Bender
Journal:  Toxicol Res (Camb)       Date:  2016-10-31       Impact factor: 3.524

3.  Data mining the NCI60 to predict generalized cytotoxicity.

Authors:  Adam C Lee; Kerby Shedden; Gustavo R Rosania; Gordon M Crippen
Journal:  J Chem Inf Model       Date:  2008-06-28       Impact factor: 4.956

4.  Predictive models for estimating cytotoxicity on the basis of chemical structures.

Authors:  Hongmao Sun; Yuhong Wang; Dorian M Cheff; Matthew D Hall; Min Shen
Journal:  Bioorg Med Chem       Date:  2020-03-12       Impact factor: 3.641

5.  A chemocentric approach to the identification of cancer targets.

Authors:  Beáta Flachner; Zsolt Lörincz; Angelo Carotti; Orazio Nicolotti; Praveena Kuchipudi; Nikita Remez; Ferran Sanz; József Tóvári; Miklós J Szabó; Béla Bertók; Sándor Cseh; Jordi Mestres; György Dormán
Journal:  PLoS One       Date:  2012-04-25       Impact factor: 3.240

6.  Predicting cytotoxicity from heterogeneous data sources with Bayesian learning.

Authors:  Sarah R Langdon; Joanna Mulgrew; Gaia V Paolini; Willem P van Hoorn
Journal:  J Cheminform       Date:  2010-12-09       Impact factor: 5.514

7.  Monitoring by HPLC of chamomile flavonoids exposed to rat liver microsomal metabolism.

Authors:  Georg Petroianu; Eva Szoke; Huba Kalász; Péter Szegi; Rudolf Laufer; Bernadett Benko; Ferenc Darvas; Kornélia Tekes
Journal:  Open Med Chem J       Date:  2009-07-29
  7 in total

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