UnIC-Cardiovascular Research and Development Centre, Department of Surgery and Physiology, Faculty of Medicine, University of Porto, 4200-319 Porto, Portugal.
iBiMED-Department of Medical Sciences, Institute of Biomedicine, University of Aveiro, 3810-193 Aveiro, Portugal.
Int J Mol Sci. 2021 May 31;22(11):5940. doi: 10.3390/ijms22115940.
Native biofluid peptides offer important information about diseases, holding promise as biomarkers. Particularly, the non-invasive nature of urine sampling, and its high peptide concentration, make urine peptidomics a useful strategy to study the pathogenesis of renal conditions. Moreover, the high number of detectable peptides as well as their specificity set the ground for the expansion of urine peptidomics to the identification of surrogate biomarkers for extra-renal diseases. Peptidomics further allows the prediction of proteases (degradomics), frequently dysregulated in disease, providing a complimentary source of information on disease pathogenesis and biomarkers. Then, what does urine peptidomics tell us so far? In this paper, we appraise the value of urine peptidomics in biomarker research through a comprehensive analysis of all datasets available to date. We have mined > 50 papers, addressing > 30 different conditions, comprising > 4700 unique peptides. Bioinformatic tools were used to reanalyze peptide profiles aiming at identifying disease fingerprints, to uncover hidden disease-specific peptides physicochemical properties and to predict the most active proteases associated with their generation. The molecular patterns found in this study may be further validated in the future as disease biomarker not only for kidney diseases but also for extra-renal conditions, as a step forward towards the implementation of a paradigm of predictive, preventive and personalized (3P) medicine.
内源性生物流体肽提供了有关疾病的重要信息,有望成为生物标志物。特别是,尿液采样的非侵入性性质及其高肽浓度,使得尿肽组学成为研究肾脏疾病发病机制的有用策略。此外,可检测到的肽数量众多且具有特异性,为尿肽组学扩展到鉴定肾脏疾病以外的替代生物标志物奠定了基础。肽组学还可以预测蛋白酶(降解组学),这些蛋白酶在疾病中经常失调,为疾病发病机制和生物标志物提供了补充信息来源。那么,到目前为止,尿肽组学告诉了我们什么?在本文中,我们通过对迄今为止所有可用数据集的综合分析,评估了尿肽组学在生物标志物研究中的价值。我们挖掘了 >50 篇论文,涉及 >30 种不同的疾病,包括 >4700 个独特的肽。使用生物信息学工具重新分析肽谱,旨在识别疾病指纹,揭示隐藏的疾病特异性肽的理化性质,并预测与其生成相关的最活跃的蛋白酶。本研究中发现的分子模式将来可能作为疾病生物标志物进一步验证,不仅用于肾脏疾病,还用于肾脏以外的疾病,这是迈向实施预测性、预防性和个体化(3P)医学的一步。