Pastor Manuel, Quintana Jordi, Sanz Ferran
Research Programme on Biomedical Informatics (GRIB), Institut Hospital del Mar d'Investigacions Mèdiques (IMIM), Department of Experimental and Health Sciences, Universitat Pompeu Fabra, Barcelona, Spain.
Front Pharmacol. 2018 Oct 11;9:1147. doi: 10.3389/fphar.2018.01147. eCollection 2018.
methods are increasingly being used for assessing the chemical safety of substances, as a part of integrated approaches involving and experiments. A paradigmatic example of these strategies is the eTOX project http://www.etoxproject.eu, funded by the European Innovative Medicines Initiative (IMI), which aimed at producing high quality predictions of toxicity of drug candidates and resulted in generating about 200 models for diverse endpoints of toxicological interest. In an industry-oriented project like eTOX, apart from the predictive quality, the models need to meet other quality parameters related to the procedures for their generation and their intended use. For example, when the models are used for predicting the properties of drug candidates, the prediction system must guarantee the complete confidentiality of the compound structures. The interface of the system must be designed to provide non-expert users all the information required to choose the models and appropriately interpret the results. Moreover, procedures like installation, maintenance, documentation, validation and versioning, which are common in software development, must be also implemented for the models and for the prediction platform in which they are implemented. In this article we describe our experience in the eTOX project and the lessons learned after 7 years of close collaboration between industrial and academic partners. We believe that some of the solutions found and the tools developed could be useful for supporting similar initiatives in the future.
作为涉及[具体内容1]和[具体内容2]实验的综合方法的一部分,越来越多的方法被用于评估物质的化学安全性。这些策略的一个典型例子是由欧洲创新药物计划(IMI)资助的eTOX项目http://www.etoxproject.eu,该项目旨在对候选药物的毒性进行高质量预测,并生成了约200个针对各种毒理学相关终点的模型。在像eTOX这样以行业为导向的项目中,除了预测质量外,模型还需要满足与其生成过程和预期用途相关的其他质量参数。例如,当模型用于预测候选药物的性质时,预测系统必须保证化合物结构的完全保密性。系统界面的设计必须为非专业用户提供选择模型和正确解释结果所需的所有信息。此外,软件开发中常见的安装、维护、文档记录、验证和版本控制等程序,也必须应用于模型以及实施这些模型的预测平台。在本文中,我们描述了我们在eTOX项目中的经验以及工业和学术合作伙伴经过7年密切合作后吸取的教训。我们相信,所找到的一些解决方案和开发的工具可能对未来支持类似的计划有用。