代谢组学
急性肾损伤
背景(考古学)
蛋白质组学
组学
重症监护医学
医学
生物信息学
败血症
生物标志物
计算生物学
内科学
生物
古生物学
生物化学
基因
作者
David Marx,Jochen Metzger,Martin Pejchinοvski,Ryan Gil,Maria Frantzi,Agnieszka Latosińska,Iwona Belczacka,Silke S. Heinzmann,Holger Husi,Jérôme Zoidakis,Matthias Klingele,Stefan Herget‐Rosenthal
标识
DOI:10.1016/j.semnephrol.2017.09.007
摘要
Acute kidney injury (AKI) is a severe and frequent condition in hospitalized patients. Currently, no efficient therapy of AKI is available. Therefore, efforts focus on early prevention and potentially early initiation of renal replacement therapy to improve the outcome in AKI. The detection of AKI in hospitalized patients implies the need for early, accurate, robust, and easily accessible biomarkers of AKI evolution and outcome prediction because only a narrow window exists to implement the earlier-described measures. Even more challenging is the multifactorial origin of AKI and the fact that the changes of molecular expression induced by AKI are difficult to distinguish from those of the diseases associated or causing AKI as shock or sepsis. During the past decade, a considerable number of protein biomarkers for AKI have been described and we expect from recent advances in the field of omics technologies that this number will increase further in the future and be extended to other sorts of biomolecules, such as RNAs, lipids, and metabolites. However, most of these biomarkers are poorly defined by their AKI-associated molecular context. In this review, we describe the state-of-the-art tissue and biofluid proteomic and metabolomic technologies and new bioinformatics approaches for proteomic and metabolomic pathway and molecular interaction analysis. In the second part of the review, we focus on AKI-associated proteomic and metabolomic biomarkers and briefly outline their pathophysiological context in AKI.
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