Mirabeau Olivier, Perlas Emerald, Severini Cinzia, Audero Enrica, Gascuel Olivier, Possenti Roberta, Birney Ewan, Rosenthal Nadia, Gross Cornelius
Mouse Biology Unit, EMBL, 00016 Monterotondo, Italy.
Genome Res. 2007 Mar;17(3):320-7. doi: 10.1101/gr.5755407. Epub 2007 Feb 6.
Peptide hormones are small, processed, and secreted peptides that signal via membrane receptors and play critical roles in normal and pathological physiology. The search for novel peptide hormones has been hampered by their small size, low or restricted expression, and lack of sequence similarity. To overcome these difficulties, we developed a bioinformatics search tool based on the hidden Markov model formalism that uses several peptide hormone sequence features to estimate the likelihood that a protein contains a processed and secreted peptide of this class. Application of this tool to an alignment of mammalian proteomes ranked 90% of known peptide hormones among the top 300 proteins. An analysis of the top scoring hypothetical and poorly annotated human proteins identified two novel candidate peptide hormones. Biochemical analysis of the two candidates, which we called spexin and augurin, showed that both were localized to secretory granules in a transfected pancreatic cell line and were recovered from the cell supernatant. Spexin was expressed in the submucosal layer of the mouse esophagus and stomach, and a predicted peptide from the spexin precursor induced muscle contraction in a rat stomach explant assay. Augurin was specifically expressed in mouse endocrine tissues, including pituitary and adrenal gland, choroid plexus, and the atrio-ventricular node of the heart. Our findings demonstrate the utility of a bioinformatics approach to identify novel biologically active peptides. Peptide hormones and their receptors are important diagnostic and therapeutic targets, and our results suggest that spexin and augurin are novel peptide hormones likely to be involved in physiological homeostasis.
肽类激素是经过加工和分泌的小肽,通过膜受体发出信号,在正常和病理生理学中发挥关键作用。寻找新型肽类激素一直受到其体积小、表达低或受限以及缺乏序列相似性的阻碍。为了克服这些困难,我们基于隐马尔可夫模型形式开发了一种生物信息学搜索工具,该工具利用几种肽类激素序列特征来估计一种蛋白质含有此类经过加工和分泌的肽的可能性。将该工具应用于哺乳动物蛋白质组比对时,90%的已知肽类激素在前300种蛋白质中排名靠前。对得分最高的假设性和注释不佳的人类蛋白质进行分析,鉴定出两种新型候选肽类激素。对我们称为spexin和augurin的这两种候选物进行生化分析,结果表明它们在转染的胰腺细胞系中均定位于分泌颗粒,并从细胞上清液中回收。Spexin在小鼠食管和胃的黏膜下层表达,其前体预测的一种肽在大鼠胃外植体试验中诱导肌肉收缩。Augurin在小鼠内分泌组织中特异性表达,包括垂体、肾上腺、脉络丛和心脏的房室结。我们的研究结果证明了生物信息学方法在鉴定新型生物活性肽方面的实用性。肽类激素及其受体是重要的诊断和治疗靶点,我们的结果表明spexin和augurin是可能参与生理稳态的新型肽类激素。