Schlage Walter K, Westra Jurjen W, Gebel Stephan, Catlett Natalie L, Mathis Carole, Frushour Brian P, Hengstermann Arnd, Van Hooser Aaron, Poussin Carine, Wong Ben, Lietz Michael, Park Jennifer, Drubin David, Veljkovic Emilija, Peitsch Manuel C, Hoeng Julia, Deehan Renee
Philip Morris International R&D, Philip Morris Research Laboratories GmbH, Fuggerstr.3, 51149 Koeln, Germany.
BMC Syst Biol. 2011 Oct 19;5:168. doi: 10.1186/1752-0509-5-168.
Humans and other organisms are equipped with a set of responses that can prevent damage from exposure to a multitude of endogenous and environmental stressors. If these stress responses are overwhelmed, this can result in pathogenesis of diseases, which is reflected by an increased development of, e.g., pulmonary and cardiac diseases in humans exposed to chronic levels of environmental stress, including inhaled cigarette smoke (CS). Systems biology data sets (e.g., transcriptomics, phosphoproteomics, metabolomics) could enable comprehensive investigation of the biological impact of these stressors. However, detailed mechanistic networks are needed to determine which specific pathways are activated in response to different stressors and to drive the qualitative and eventually quantitative assessment of these data. A current limiting step in this process is the availability of detailed mechanistic networks that can be used as an analytical substrate.
We have built a detailed network model that captures the biology underlying the physiological cellular response to endogenous and exogenous stressors in non-diseased mammalian pulmonary and cardiovascular cells. The contents of the network model reflect several diverse areas of signaling, including oxidative stress, hypoxia, shear stress, endoplasmic reticulum stress, and xenobiotic stress, that are elicited in response to common pulmonary and cardiovascular stressors. We then tested the ability of the network model to identify the mechanisms that are activated in response to CS, a broad inducer of cellular stress. Using transcriptomic data from the lungs of mice exposed to CS, the network model identified a robust increase in the oxidative stress response, largely mediated by the anti-oxidant NRF2 pathways, consistent with previous reports on the impact of CS exposure in the mammalian lung.
The results presented here describe the construction of a cellular stress network model and its application towards the analysis of environmental stress using transcriptomic data. The proof-of-principle analysis described here, coupled with the future development of additional network models covering distinct areas of biology, will help to further clarify the integrated biological responses elicited by complex environmental stressors such as CS, in pulmonary and cardiovascular cells.
人类和其他生物体具备一系列反应,可防止因暴露于多种内源性和环境应激源而受到损害。如果这些应激反应不堪重负,可能会导致疾病的发病机制,这在暴露于慢性环境应激(包括吸入香烟烟雾(CS))的人类中表现为肺部和心脏疾病等发病率增加。系统生物学数据集(如转录组学、磷酸化蛋白质组学、代谢组学)能够全面研究这些应激源的生物学影响。然而,需要详细的机制网络来确定响应不同应激源时哪些特定途径被激活,并推动对这些数据进行定性乃至定量评估。此过程当前的一个限制步骤是缺乏可作为分析底物的详细机制网络。
我们构建了一个详细的网络模型,该模型捕捉了非患病哺乳动物肺和心血管细胞对内源性和外源性应激源的生理细胞反应背后的生物学机制。网络模型的内容反映了几个不同的信号传导领域,包括氧化应激、缺氧、剪切应力、内质网应激和外源性应激,这些应激是由常见的肺和心血管应激源引发的。然后,我们测试了该网络模型识别响应CS(一种广泛的细胞应激诱导剂)而被激活的机制的能力。利用暴露于CS的小鼠肺部的转录组数据,该网络模型确定氧化应激反应显著增加,这主要由抗氧化剂NRF2途径介导,与先前关于CS暴露对哺乳动物肺影响的报道一致。
此处呈现的结果描述了细胞应激网络模型的构建及其在使用转录组数据分析环境应激方面的应用。此处描述的原理验证分析,再加上未来涵盖不同生物学领域的其他网络模型的开发,将有助于进一步阐明诸如CS等复杂环境应激源在肺和心血管细胞中引发的综合生物学反应。