Literature DB >> 22050465

Computational methods for early predictive safety assessment from biological and chemical data.

Florian Nigsch1, Eugen Lounkine, Patrick McCarren, Ben Cornett, Meir Glick, Kamal Azzaoui, Laszlo Urban, Philippe Marc, Arne Müller, Florian Hahne, David J Heard, Jeremy L Jenkins.   

Abstract

INTRODUCTION: The goal of early predictive safety assessment (PSA) is to keep compounds with detectable liabilities from progressing further in the pipeline. Such compounds jeopardize the core of pharmaceutical research and development and limit the timely delivery of innovative therapeutics to the patient. Computational methods are increasingly used to help understand observed data, generate new testable hypotheses of relevance to safety pharmacology, and supplement and replace costly and time-consuming experimental procedures. AREAS COVERED: The authors survey methods operating on different scales of both physical extension and complexity. After discussing methods used to predict liabilities associated with structures of individual compounds, the article reviews the use of adverse event data and safety profiling panels. Finally, the authors examine the complexities of toxicology data from animal experiments and how these data can be mined. EXPERT OPINION: A significant obstacle for data-driven safety assessment is the absence of integrated data sets due to a lack of sharing of data and of using standard ontologies for data relevant to safety assessment. Informed decisions to derive focused sets of compounds can help to avoid compound liabilities in screening campaigns, and improved hit assessment of such campaigns can benefit the early termination of undesirable compounds.

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Year:  2011        PMID: 22050465     DOI: 10.1517/17425255.2011.632632

Source DB:  PubMed          Journal:  Expert Opin Drug Metab Toxicol        ISSN: 1742-5255            Impact factor:   4.481


  4 in total

Review 1.  Reducing safety-related drug attrition: the use of in vitro pharmacological profiling.

Authors:  Joanne Bowes; Andrew J Brown; Jacques Hamon; Wolfgang Jarolimek; Arun Sridhar; Gareth Waldron; Steven Whitebread
Journal:  Nat Rev Drug Discov       Date:  2012-12       Impact factor: 84.694

2.  A big data approach with artificial neural network and molecular similarity for chemical data mining and endocrine disruption prediction.

Authors:  Renjith Paulose; Kalirajan Jegatheesan; Gopal Samy Balakrishnan
Journal:  Indian J Pharmacol       Date:  2018 Jul-Aug       Impact factor: 1.200

3.  In silico mechanistic profiling to probe small molecule binding to sulfotransferases.

Authors:  Virginie Y Martiny; Pablo Carbonell; David Lagorce; Bruno O Villoutreix; Gautier Moroy; Maria A Miteva
Journal:  PLoS One       Date:  2013-09-06       Impact factor: 3.240

4.  Integrated analysis of drug-induced gene expression profiles predicts novel hERG inhibitors.

Authors:  Joseph J Babcock; Fang Du; Kaiping Xu; Sarah J Wheelan; Min Li
Journal:  PLoS One       Date:  2013-07-23       Impact factor: 3.240

  4 in total

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