Functional Genomics and Systems Biology for Health, CNRS Institute of Biological Sciences, 7 rue Guy Moquet-BP8, 94801 Villejuif cedex, France.
Chest. 2010 Jun;137(6):1410-6. doi: 10.1378/chest.09-1850.
Chronic inflammatory pulmonary diseases such as COPD and asthma are highly prevalent and associated with a major health burden worldwide. Despite a wealth of biologic and clinical information on normal and pathologic airway structure and function, the primary causes and mechanisms of disease remain to a large extent unknown, preventing the development of more efficient diagnosis and treatment. We propose to overcome these limitations through an integrative systems biology research strategy designed to identify the functional and regulatory pathways that play central roles in respiratory pathophysiology, starting with severe asthma. This approach relies on global genome, transcriptome, proteome, and metabolome data sets collected in cross-sectional patient cohorts with high-throughput measurement platforms and integrated with biologic and clinical data to inform predictive multiscale models ranging from the molecular to the organ levels. Working hypotheses formulated on the mechanisms and pathways involved in various disease states are tested through perturbation experiments using model simulation combined with targeted and global technologies in cellular and animal models. The responses observed are compared with those predicted by the initial models, which are refined to account better for the results. Novel perturbation experiments are designed and tested both computationally and experimentally to arbitrate between competing hypotheses. The process is iterated until the derived knowledge allows a better classification and subphenotyping of severe asthma using complex biomarkers, which will facilitate the development of novel diagnostic and therapeutic interventions targeting multiple components of the molecular and cellular pathways involved. This can be tested and validated in prospective clinical trials.
慢性炎症性肺疾病,如 COPD 和哮喘,在全球范围内非常普遍,且与重大健康负担相关。尽管已经有大量关于正常和病理气道结构和功能的生物学和临床信息,但疾病的主要原因和机制在很大程度上仍然未知,这阻碍了更有效的诊断和治疗方法的发展。我们建议通过综合系统生物学研究策略来克服这些限制,该策略旨在确定在呼吸病理生理学中起核心作用的功能和调节途径,从严重哮喘开始。这种方法依赖于跨队列患者的全基因组、转录组、蛋白质组和代谢组数据集,这些数据集是使用高通量测量平台收集的,并与生物学和临床数据相结合,为从分子到器官水平的预测多尺度模型提供信息。通过使用模型模拟结合细胞和动物模型中的靶向和全局技术进行的扰动实验,对涉及各种疾病状态的机制和途径的工作假设进行测试。观察到的反应与初始模型预测的反应进行比较,并对初始模型进行改进以更好地解释结果。通过计算和实验设计新的扰动实验来对竞争假设进行裁决。这个过程不断迭代,直到所得到的知识允许使用复杂的生物标志物更好地对严重哮喘进行分类和亚表型分型,这将有助于开发针对涉及的分子和细胞途径的多个成分的新型诊断和治疗干预措施。这可以在前瞻性临床试验中进行测试和验证。