Yang Eric, Maguire Timothy, Yarmush Martin L, Berthiaume Francois, Androulakis Ioannis P
Biomedical Engineering Department, Rutgers University, Piscataway, NJ, USA.
BMC Bioinformatics. 2007 Jan 10;8:10. doi: 10.1186/1471-2105-8-10.
Thermal injury is among the most severe forms of trauma and its effects are both local and systemic. Response to thermal injury includes cellular protection mechanisms, inflammation, hypermetabolism, prolonged catabolism, organ dysfunction and immuno-suppression. It has been hypothesized that gene expression patterns in the liver will change with severe burns, thus reflecting the role the liver plays in the response to burn injury. Characterizing the molecular fingerprint (i.e., expression profile) of the inflammatory response resulting from burns may help elucidate the activated mechanisms and suggest new therapeutic intervention. In this paper we propose a novel integrated framework for analyzing time-series transcriptional data, with emphasis on the burn-induced response within the context of the rat animal model. Our analysis robustly identifies critical expression motifs, indicative of the dynamic evolution of the inflammatory response and we further propose a putative reconstruction of the associated transcription factor activities.
Implementation of our algorithm on data obtained from an animal (rat) burn injury study identified 281 genes corresponding to 4 unique profiles. Enrichment evaluation upon both gene ontologies and transcription factors, verifies the inflammation-specific character of the selections and the rationalization of the burn-induced inflammatory response. Conducting the transcription network reconstruction and analysis, we have identified transcription factors, including AHR, Octamer Binding Proteins, Kruppel-like Factors, and cell cycle regulators as being highly important to an organism's response to burn response. These transcription factors are notable due to their roles in pathways that play a part in the gross physiological response to burn such as changes in the immune response and inflammation.
Our results indicate that our novel selection/classification algorithm has been successful in selecting out genes with play an important role in thermal injury. Additionally, we have demonstrated the value of an integrative approach in identifying possible points of intervention, namely the activation of certain transcription factors that govern the organism's response.
热损伤是最严重的创伤形式之一,其影响涉及局部和全身。对热损伤的反应包括细胞保护机制、炎症、高代谢、长期分解代谢、器官功能障碍和免疫抑制。据推测,严重烧伤时肝脏中的基因表达模式会发生变化,从而反映肝脏在烧伤损伤反应中所起的作用。描绘烧伤引起的炎症反应的分子指纹(即表达谱)可能有助于阐明激活机制并提出新的治疗干预措施。在本文中,我们提出了一个用于分析时间序列转录数据的新型综合框架,重点关注大鼠动物模型背景下的烧伤诱导反应。我们的分析有力地识别出关键的表达基序,这些基序指示了炎症反应的动态演变,并且我们进一步提出了相关转录因子活性的推定重建。
我们的算法应用于从动物(大鼠)烧伤损伤研究中获得的数据,识别出对应于4种独特谱的281个基因。对基因本体和转录因子进行富集评估,验证了所选基因的炎症特异性特征以及烧伤诱导炎症反应的合理性。通过进行转录网络重建和分析,我们确定了转录因子,包括芳烃受体(AHR)、八聚体结合蛋白、类 Kruppel 因子和细胞周期调节因子,它们对生物体对烧伤反应非常重要。这些转录因子因其在诸如免疫反应和炎症变化等对烧伤的总体生理反应所涉及的途径中的作用而值得关注。
我们的结果表明,我们的新型选择/分类算法成功地筛选出了在热损伤中起重要作用的基因。此外,我们证明了综合方法在确定可能的干预点方面的价值,即激活某些控制生物体反应的转录因子。