Abstract

One of the great challenges in the post-genomic era is to decipher the underlying principles governing the dynamics of biological responses. As modulating gene expression levels is among the key regulatory responses of an organism to changes in its environment, identifying biologically relevant transcriptional regulators and their putative regulatory interactions with target genes is an essential step towards studying the complex dynamics of transcriptional regulation. We present an analysis that integrates various computational and biological aspects to explore the transcriptional regulation of systemic inflammatory responses through a human endotoxemia model. Given a high-dimensional transcriptional profiling dataset from human blood leukocytes, an elementary set of temporal dynamic responses which capture the essence of a pro-inflammatory phase, a counter-regulatory response and a dysregulation in leukocyte bioenergetics has been extracted. Upon identification of these expression patterns, fourteen inflammation-specific gene batteries that represent groups of hypothetically ‘coregulated’ genes are proposed. Subsequently, statistically significant cis-regulatory modules (CRMs) are identified and decomposed into a list of critical transcription factors (34) that are validated largely on primary literature. Finally, our analysis further allows for the construction of a dynamic representation of the temporal transcriptional regulatory program across the host, deciphering possible combinatorial interactions among factors under which they might be active. Although much remains to be explored, this study has computationally identified key transcription factors and proposed a putative time-dependent transcriptional regulatory program associated with critical transcriptional inflammatory responses. These results provide a solid foundation for future investigations to elucidate the underlying transcriptional regulatory mechanisms under the host inflammatory response. Also, the assumption that coexpressed genes that are functionally relevant are more likely to share some common transcriptional regulatory mechanism seems to be promising, making the proposed framework become essential in unravelling context-specific transcriptional regulatory interactions underlying diverse mammalian biological processes.

Highlights

  • Inflammation and activation of innate immunity are essential defense responses against invading pathogens and endogenous danger signals

  • The present study aims to computationally identify transcription factors that are crucial to the dynamics of essential physiological processes associated with the acute human inflammatory response and provides significant insights into putative transcriptional regulatory mechanisms that underlie gene expression

  • The ‘early-up’ pattern consists of genes that are involved in critical pro-inflammatory processes (e.g. TNF, NFkBIA, C-X-C motifs – CXCL1, CXCL2, and CCL20)

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Summary

Introduction

Inflammation and activation of innate immunity are essential defense responses against invading pathogens and endogenous danger signals. The innate immune response involves the initial recognition of conserved pathogen-associated molecular patterns by members of the Toll-like receptor (TLR) family [1]. The exposure of the host to gram negative bacteria, simulated by lipopolysaccharide (LPS) recognized by TLR-4, triggers intracellular signalling cascades which eventually release a lot of pro- and anti- inflammatory cytokines [2]. While the host inflammatory response is essential to resolve the infection or repair the damage and restore the system homeostasis, it plays a central pathogenic role in a wide spectrum of diseases including sepsis [3]. Inflammatory responses are activated, clear the pathogen in the case of infection, initialize a repair process and abate [4]. When anti-inflammatory processes fail, an amplified inflammation can turn what is normally a beneficial reparative process into a detrimental physiological state with severe, uncontrolled systemic inflammation [5]

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