| Literature DB >> 25405742 |
Montserrat Cases1, Katharine Briggs2, Thomas Steger-Hartmann3, François Pognan4, Philippe Marc5, Thomas Kleinöder6, Christof H Schwab7, Manuel Pastor8, Jörg Wichard9, Ferran Sanz10.
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.Entities:
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Year: 2014 PMID: 25405742 PMCID: PMC4264217 DOI: 10.3390/ijms151121136
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923
Data sensitivity categories within the eTOX project.
| Category | Access | Sharing | Usage |
|---|---|---|---|
| Public upon request | Structure and all available data | Read-across analysis, Models building and validation | |
| eTOX consortium | Structure and toxicological data | Read-across analysis, Models building and validation | |
| Honest broker and data owner | Toxicological data | Read-across analysis (without structure query), Models building and validation (without structure query) | |
| Data owner | None | Models validation |
Figure 1The process for verbatim terms curation and communication between Vitic Nexus eTOX database and the OntoBrowser database.
Figure 2Preliminary derivation of an extrapolation factor (EF) for NOAEL from 2–4-week studies from the eTOX database.
Figure 3Scheme of the eTOXsys architecture.
Figure 4Combined chemistry and toxicity database search.
Figure 5Hit list from a combined chemistry and toxicity database search.
Figure 6Detail page of a molecule displaying the toxicity data stored in study design and effects tables.
Figure 7Tree representation of available prediction models for the Phospholipidosis prediction endpoint.
Figure 8Prediction result table (including a consensus outcome).
Figure 9Example of an Executive Summary of prediction model characteristics.
Figure 10Data access strategy workflow (LL is the abbreviation of Lhasa Ltd.).