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首页> 外文期刊>Journal of Cheminformatics >QSAR DataBank repository: open and linked qualitative and quantitative structure–activity relationship models
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QSAR DataBank repository: open and linked qualitative and quantitative structure–activity relationship models

机译:QSAR DataBank存储库:开放和链接的定性和定量结构-活动关系模型

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Background Structure–activity relationship models have been used to gain insight into chemical and physical processes in biomedicine, toxicology, biotechnology, etc. for almost a century. They have been recognized as valuable tools in decision support workflows for qualitative and quantitative predictions. The main obstacle preventing broader adoption of quantitative structure–activity relationships [(Q)SARs] is that published models are still relatively difficult to discover, retrieve and redeploy in a modern computer-oriented environment. This publication describes a digital repository that makes in silico (Q)SAR-type descriptive and predictive models archivable, citable and usable in a novel way for most common research and applied science purposes. Description The QSAR DataBank (QsarDB) repository aims to make the processes and outcomes of in silico modelling work transparent, reproducible and accessible. Briefly, the models are represented in the QsarDB data format and stored in a content-aware repository (a.k.a. smart repository). Content awareness has two dimensions. First, models are organized into collections and then into collection hierarchies based on their metadata. Second, the repository is not only an environment for browsing and downloading models (the QDB archive) but also offers integrated services, such as model analysis and visualization and prediction making. Conclusions The QsarDB repository unlocks the potential of descriptive and predictive in silico (Q)SAR-type models by allowing new and different types of collaboration between model developers and model users. The key enabling factor is the representation of (Q)SAR models in the QsarDB data format, which makes it easy to preserve and share all relevant data, information and knowledge. Model developers can become more productive by effectively reusing prior art. Model users can make more confident decisions by relying on supporting information that is larger and more diverse than before. Furthermore, the smart repository automates most of the mundane work (e.g., collecting, systematizing, and reporting data), thereby reducing the time to decision.
机译:背景结构-活性关系模型已用于深入了解生物医学,毒理学,生物技术等领域的化学和物理过程。在定性和定量预测的决策支持工作流程中,它们已被视为有价值的工具。阻碍更广泛地采用定量结构-活动关系[(Q)SAR)的主要障碍是,在现代的计算机环境中,发现的模型仍然相对难以发现,检索和重新部署。该出版物描述了一种数字存储库,可以以新颖的方式使计算机(Q)SAR类型的描述性模型和预测模型可归档,引用和使用,以用于大多数普通研究和应用科学目的。描述QSAR数据库(QsarDB)存储库旨在使计算机建模的过程和结果透明,可重现和可访问。简而言之,模型以QsarDB数据格式表示,并存储在内容感知的存储库(也称为智能存储库)中。内容意识有两个方面。首先,将模型组织到集合中,然后根据其元数据组织到集合层次结构中。其次,存储库不仅是浏览和下载模型的环境(QDB存档),而且还提供集成服务,例如模型分析,可视化和预测制作。结论QsarDB存储库通过允许模型开发人员和模型用户之间进行新型和不同类型的协作,释放了描述性和预测性计算机(Q)SAR类型的模型的潜力。关键使能因素是以QsarDB数据格式表示(Q)SAR模型,这使得保存和共享所有相关数据,信息和知识变得容易。通过有效地重用现有技术,模型开发人员可以提高生产率。模型用户可以依靠比以前更大,更多样化的支持信息做出更自信的决策。此外,智能存储库可自动执行大多数日常工作(例如,收集,系统化和报告数据),从而减少了决策时间。

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