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1.
Nat Rev Drug Discov ; 16(12): 811-812, 2017 Dec.
Article in English | MEDLINE | ID: mdl-29026211

ABSTRACT

The sharing of legacy preclinical safety data among pharmaceutical companies and its integration with other information sources offers unprecedented opportunities to improve the early assessment of drug safety. Here, we discuss the experience of the eTOX project, which was established through the Innovative Medicines Initiative to explore this possibility.


Subject(s)
Drug Evaluation, Preclinical/methods , Drug Industry/methods , Drug-Related Side Effects and Adverse Reactions , Information Dissemination , Humans , Risk Assessment/methods
2.
Mol Inform ; 34(6-7): 477-84, 2015 06.
Article in English | MEDLINE | ID: mdl-27490391

ABSTRACT

Early prediction of safety issues in drug development is at the same time highly desirable and highly challenging. Recent advances emphasize the importance of understanding the whole chain of causal events leading to observable toxic outcomes. Here we describe an integrative modeling strategy based on these ideas that guided the design of eTOXsys, the prediction system used by the eTOX project. Essentially, eTOXsys consists of a central server that marshals requests to a collection of independent prediction models and offers a single user interface to the whole system. Every of such model lives in a self-contained virtual machine easy to maintain and install. All models produce toxicity-relevant predictions on their own but the results of some can be further integrated and upgrade its scale, yielding in vivo toxicity predictions. Technical aspects related with model implementation, maintenance and documentation are also discussed here. Finally, the kind of models currently implemented in eTOXsys is illustrated presenting three example models making use of diverse methodology (3D-QSAR and decision trees, Molecular Dynamics simulations and Linear Interaction Energy theory, and fingerprint-based QSAR).


Subject(s)
Drug-Related Side Effects and Adverse Reactions , Models, Biological , Molecular Dynamics Simulation , Animals , Humans
3.
Int J Mol Sci ; 15(11): 21136-54, 2014 Nov 14.
Article in English | MEDLINE | ID: mdl-25405742

ABSTRACT

The high-quality in vivo preclinical safety data produced by the pharmaceutical industry during drug development, which follows numerous strict guidelines, are mostly not available in the public domain. These safety data are sometimes published as a condensed summary for the few compounds that reach the market, but the majority of studies are never made public and are often difficult to access in an automated way, even sometimes within the owning company itself. It is evident from many academic and industrial examples, that useful data mining and model development requires large and representative data sets and careful curation of the collected data. In 2010, under the auspices of the Innovative Medicines Initiative, the eTOX project started with the objective of extracting and sharing preclinical study data from paper or pdf archives of toxicology departments of the 13 participating pharmaceutical companies and using such data for establishing a detailed, well-curated database, which could then serve as source for read-across approaches (early assessment of the potential toxicity of a drug candidate by comparison of similar structure and/or effects) and training of predictive models. The paper describes the efforts undertaken to allow effective data sharing intellectual property (IP) protection and set up of adequate controlled vocabularies) and to establish the database (currently with over 4000 studies contributed by the pharma companies corresponding to more than 1400 compounds). In addition, the status of predictive models building and some specific features of the eTOX predictive system (eTOXsys) are presented as decision support knowledge-based tools for drug development process at an early stage.


Subject(s)
Drug-Related Side Effects and Adverse Reactions/etiology , Pharmaceutical Preparations/chemistry , Computer Simulation , Data Mining , Databases, Pharmaceutical , Drug Discovery , Humans , Models, Biological , Vocabulary, Controlled
4.
J Biomol Screen ; 14(5): 557-65, 2009 Jun.
Article in English | MEDLINE | ID: mdl-19483143

ABSTRACT

The technological evolution of the 1990s in both combinatorial chemistry and high-throughput screening created the demand for rapid access to the compound deck to support the screening process. The common strategy within the pharmaceutical industry is to store the screening library in DMSO solution. Several studies have shown that a percentage of these compounds decompose in solution, varying from a few percent of the total to a substantial part of the library. In the COMDECOM (COMpound DECOMposition) project, the compound stability of screening compounds in DMSO solution is monitored in an accelerated thermal, hydrolytic, and oxidative decomposition program. A large database with stability data is collected, and from this database, a predictive model is being developed. The aim of this program is to build an algorithm that can flag compounds that are likely to decompose-information that is considered to be of utmost importance (e.g., in the compound acquisition process and when evaluation screening results of library compounds, as well as in the determination of optimal storage conditions).


Subject(s)
Dimethyl Sulfoxide/chemistry , Drug Stability , Pharmaceutical Preparations/chemistry , Pharmaceutical Solutions/chemistry , Solvents/chemistry , Databases, Factual , Models, Theoretical , Molecular Structure , Solubility , Water/chemistry
5.
J Chem Inf Model ; 46(6): 2256-66, 2006.
Article in English | MEDLINE | ID: mdl-17125168

ABSTRACT

Two quantitative pKa prediction models for aliphatic carboxylic acids and for alcohols were developed by multiple linear-regression (MLR) analysis with empirical atomic descriptors. The acid and alcohol molecules were described by a set of five and four atomic descriptors, respectively. For the pKa model of 1122 aliphatic carboxylic acids, the squared correlation coefficient is 0.813 with a standard error of prediction of 0.423; for the pKa model of 288 alcohols, the squared correlation coefficient is 0.817 with a standard error of prediction of 0.755, respectively. The good predictive abilities of the models obtained were indicated by both cross-validation and by external validation. An atomic descriptor was developed to model the inductive effect of the neighboring atoms for a central atom in a molecule. The ability of the descriptor to measure the inductive effect of substituent groups was demonstrated by a good correlation of this descriptor with Taft sigma* constants in aliphatic carboxylic acids. It provides a new approach to estimate Taft sigma* constants directly from molecular structures. An algorithm using Kohonen neural networks for splitting a data set into a training set and a test set is also presented.


Subject(s)
Alcohols/chemistry , Carboxylic Acids/chemistry , Hydrogen-Ion Concentration , Algorithms , Chemistry, Organic/methods , Hydrogen Bonding , Linear Models , Models, Chemical , Models, Statistical , Molecular Structure , Neural Networks, Computer
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