Artificial Intelligence Laboratory, Faculty of Engineering and Computing, First City University College, Petaling Jaya, Malaysia.
School of Science and Technology, Nottingham Trent University, Nottingham, United Kingdom.
Front Immunol. 2020 Mar 31;11:380. doi: 10.3389/fimmu.2020.00380. eCollection 2020.
Sepsis is defined as dysregulated host response caused by systemic infection, leading to organ failure. It is a life-threatening condition, often requiring admission to an intensive care unit (ICU). The causative agents and processes involved are multifactorial but are characterized by an overarching inflammatory response, sharing elements in common with severe inflammatory response syndrome (SIRS) of non-infectious origin. Sepsis presents with a range of pathophysiological and genetic features which make clinical differentiation from SIRS very challenging. This may reflect a poor understanding of the key gene inter-activities and/or pathway associations underlying these disease processes. Improved understanding is critical for early differential recognition of sepsis and SIRS and to improve patient management and clinical outcomes. Judicious selection of gene biomarkers suitable for development of diagnostic tests/testing could make differentiation of sepsis and SIRS feasible. Here we describe a methodologic framework for the identification and validation of biomarkers in SIRS, sepsis and septic shock patients, using a 2-tier gene screening, artificial neural network (ANN) data mining technique, using previously published gene expression datasets. Eight key hub markers have been identified which may delineate distinct, core disease processes and which show potential for informing underlying immunological and pathological processes and thus patient stratification and treatment. These do not show sufficient fold change differences between the different disease states to be useful as primary diagnostic biomarkers, but are instrumental in identifying candidate pathways and other associated biomarkers for further exploration.
败血症被定义为全身感染引起的宿主失调反应,导致器官衰竭。它是一种危及生命的疾病,通常需要入住重症监护病房(ICU)。其致病因素和涉及的过程是多因素的,但以过度的炎症反应为特征,与非感染性来源的严重炎症反应综合征(SIRS)有共同的元素。败血症表现出一系列病理生理和遗传特征,使得临床区分败血症和 SIRS 非常具有挑战性。这可能反映出对这些疾病过程中关键基因相互作用和/或途径关联的理解不足。深入了解这些过程对于早期区分败血症和 SIRS 以及改善患者管理和临床结果至关重要。明智地选择适合开发诊断测试的基因生物标志物,可以使败血症和 SIRS 的区分成为可能。在这里,我们描述了一种使用 2 层基因筛选、人工神经网络(ANN)数据挖掘技术,对 SIRS、败血症和感染性休克患者的生物标志物进行鉴定和验证的方法学框架,该技术使用了先前发表的基因表达数据集。已经确定了 8 个关键的枢纽标记物,它们可能描绘出不同的核心疾病过程,并有可能为潜在的免疫学和病理学过程提供信息,从而对患者进行分层和治疗。这些标记物在不同疾病状态之间的变化差异不足以作为主要的诊断生物标志物,但对于确定候选途径和其他相关生物标志物进行进一步探索具有重要作用。