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Quantitative assessment of biological impact using transcriptomic data and mechanistic network models

机译:使用转录组数据和机制网络模型定量评估生物影响

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Exposure to biologically active substances such as therapeutic drugs or environmental toxicants can impact biological systems at various levels, affecting individual molecules, signaling pathways, and overall cellular processes. The ability to derive mechanistic insights from the resulting system responses requires the integration of experimental measures with a priori knowledge about the system and the interacting molecules therein. We developed a novel systems biology-based methodology that leverages mechanistic network models and transcriptomic data to quantitatively assess the biological impact of exposures to active substances. Hierarchically organized network models were first constructed to provide a coherent framework for investigating the impact of exposures at the molecular, pathway and process levels. We then validated our methodology using novel and previously published experiments. For both in vitro systems with simple exposure and in vivo systems with complex exposures, our methodology was able to recapitulate known biological responses matching expected or measured phenotypes. In addition, the quantitative results were in agreement with experimental endpoint data for many of the mechanistic effects that were assessed, providing further objective confirmation of the approach. We conclude that our methodology evaluates the biological impact of exposures in an objective, systematic, and quantifiable manner, enabling the computation of a systems-wide and pan-mechanistic biological impact measure for a given active substance or mixture. Our results suggest that various fields of human disease research, from drug development to consumer product testing and environmental impact analysis, could benefit from using this methodology.
机译:暴露于诸如治疗药物或环境毒物之类的生物活性物质会在各个层面影响生物系统,从而影响单个分子,信号传导途径和整个细胞过程。从所得的系统响应中得出机械洞察力的能力要求将实验方法与有关系统及其中相互作用分子的先验知识相结合。我们开发了一种新颖的基于生物学的系统方法,该方法利用机械网络模型和转录组数据来定量评估暴露于活性物质的生物学影响。首先构建了分层组织的网络模型,以提供一个连贯的框架来研究暴露在分子,途径和过程水平上的影响。然后,我们使用新颖的和先前发表的实验验证了我们的方法。对于具有简单暴露的体外系统和具有复杂暴露的体内系统,我们的方法都能够概括已知的与预期或测量表型匹配的生物学反应。此外,对于许多评估的机械效应,定量结果与实验终点数据相符,从而进一步证实了该方法。我们得出的结论是,我们的方法以客观,系统和可量化的方式评估了暴露的生物影响,从而能够计算出给定活性物质或混合物的全系统泛机械生物学影响度量。我们的结果表明,从药物开发到消费品测试和环境影响分析等人类疾病研究的各个领域都可以从使用该方法中受益。

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