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在不断发展的脓毒症中,转录不稳定可能会限制基于生物标志物的风险分层。

Transcriptional instability during evolving sepsis may limit biomarker based risk stratification.

机构信息

Infectious Diseases and Microbiology Unit, Institute of Child Health, University College London, London, United Kingdom.

出版信息

PLoS One. 2013;8(3):e60501. doi: 10.1371/journal.pone.0060501. Epub 2013 Mar 27.

Abstract

BACKGROUND

Sepsis causes extensive morbidity and mortality in children worldwide. Prompt recognition and timely treatment of sepsis is critical in reducing morbidity and mortality. Genomic approaches are used to discover novel pathways, therapeutic targets and biomarkers. These may facilitate diagnosis and risk stratification to tailor treatment strategies.

OBJECTIVE

To investigate the temporal gene expression during the evolution of sepsis induced multi-organ failure in response to a single organism, Neisseria meningitidis, in previously healthy children.

METHOD

RNA was extracted from serial blood samples (6 time points over 48 hours from presentation) from five critically ill children with meningococcal sepsis. Extracted RNA was hybridized to Affymetrix arrays. The RNA underwent strict quality control and standardized quantitation. Gene expression results were analyzed using GeneSpring software and Ingenuity Pathway Analysis.

RESULT

A marked variability in differential gene expression was observed between time points and between patients revealing dynamic expression changes during the evolution of sepsis. While there was evidence of time-dependent changes in expected gene networks including those involving immune responses and inflammatory pathways, temporal variation was also evident in specific "biomarkers" that have been proposed for diagnostic and risk stratification functions. The extent and nature of this variability was not readily explained by clinical phenotype.

CONCLUSION

This is the first study of its kind detailing extensive expression changes in children during the evolution of sepsis. This highlights a limitation of static or single time point biomarker estimation. Serial estimations or more comprehensive network approaches may be required to optimize risk stratification in complex, time-critical conditions such as evolving sepsis.

摘要

背景

败血症在全球范围内导致大量儿童发病和死亡。及时识别和治疗败血症对于降低发病率和死亡率至关重要。基因组方法用于发现新的途径、治疗靶点和生物标志物。这些方法可能有助于诊断和风险分层,以制定治疗策略。

目的

研究在先前健康的儿童中,由单一生物体脑膜炎奈瑟菌引起的败血症导致多器官衰竭的演变过程中的时间基因表达。

方法

从 5 例患有脑膜炎球菌败血症的危重病儿童的连续血样(发病后 48 小时内的 6 个时间点)中提取 RNA。提取的 RNA 与 Affymetrix 芯片杂交。RNA 经过严格的质量控制和标准化定量。使用 GeneSpring 软件和 Ingenuity 通路分析对基因表达结果进行分析。

结果

在不同时间点和不同患者之间观察到差异基因表达的明显变异性,揭示了败血症演变过程中的动态表达变化。虽然在包括免疫反应和炎症途径在内的预期基因网络中存在时间依赖性变化的证据,但在已经提出用于诊断和风险分层功能的特定“生物标志物”中也存在时间变化。这种可变性的程度和性质不能通过临床表型来轻易解释。

结论

这是第一项详细描述儿童败血症演变过程中广泛表达变化的研究。这突出了静态或单次时间点生物标志物估计的局限性。在复杂、时间关键的情况下,如不断发展的败血症,可能需要进行连续估计或更全面的网络方法,以优化风险分层。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e4e2/3609793/2dc88d2b97b2/pone.0060501.g001.jpg

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