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A Novel Open Access Web Portal for Integrating Mechanistic and Toxicogenomic Study Results

机译:一种新颖的开放式访问门户网站用于整合机制和毒理基因组研究结果

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摘要

Applying toxicogenomics to improving the safety profile of drug candidates and crop protection molecules is most useful when it identifies relevant biological and mechanistic information that highlights risks and informs risk mitigation strategies. Pathway-based approaches, such as gene set enrichment analysis, integrate toxicogenomic data with known biological process and pathways. Network methods help define unknown biological processes and offer data reduction advantages. Integrating the 2 approaches would improve interpretation of toxicogenomic information. Barriers to the routine application of these methods in genome-wide transcriptomic studies include a need for “hands-on” computer programming experience, the selection of 1 or more analysis methods (eg pathway analysis methods), the sensitivity of results to algorithm parameters, and challenges in linking differential gene expression to variation in safety outcomes. To facilitate adoption and reproducibility of gene expression analysis in safety studies, we have developed Collaborative Toxicogeomics, an open-access integrated web portal using the Django web framework. The software, developed with the Python programming language, is modular, extensible and implements “best-practice” methods in computational biology. New study results are compared with over 4000 rodent liver experiments from Drug Matrix and open TG-GATEs. A unique feature of the software is the ability to integrate clinical chemistry and histopathology-derived outcomes with results from gene expression studies, leading to relevant mechanistic conclusions. We describe its application by analyzing the effects of several toxicants on liver gene expression and exemplify application to predicting toxicity study outcomes upon chronic treatment from expression changes in acute-duration studies.
机译:应用毒理基因组学来改善候选药物和农作物保护分子的安全性是最有用的,因为它可以识别出突出风险并为风险缓解策略提供信息的相关生物学和机制信息。基于途径的方法(例如基因集富集分析)将毒物基因组数据与已知的生物学过程和途径整合在一起。网络方法有助于定义未知的生物过程,并提供减少数据的优势。整合这两种方法将改善对毒物基因组信息的解释。这些方法在全基因组转录组研究中常规应用的障碍包括需要“动手”计算机编程经验,选择一种或多种分析方法(例如途径分析方法),结果对算法参数的敏感性,将差异基因表达与安全性结果变异联系起来的挑战。为了在安全性研究中促进基因表达分析的采用和重现性,我们开发了Collaborative Toxicogeomics,这是一个使用Django网络框架的开放式集成网络门户。用Python编程语言开发的软件是模块化的,可扩展的,并且在计算生物学中实现了“最佳实践”方法。新的研究结果与来自Drug Matrix和开放式TG-GATE的4000多次啮齿动物肝脏实验进行了比较。该软件的独特功能是能够将临床化学和组织病理学结果与基因表达研究的结果相结合,从而得出相关的机械结论。我们通过分析几种有毒物质对肝基因表达的影响来描述其应用,并举例说明从急性持续时间研究中的表达变化预测慢性治疗后毒性研究结果的应用。

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