INRA, UR454 Microbiology, Saint-Genès Champanelle, France.
PLoS One. 2012;7(8):e42982. doi: 10.1371/journal.pone.0042982. Epub 2012 Aug 9.
Genome-scale prediction of subcellular localization (SCL) is not only useful for inferring protein function but also for supporting proteomic data. In line with the secretome concept, a rational and original analytical strategy mimicking the secretion steps that determine ultimate SCL was developed for Gram-positive (monoderm) bacteria. Based on the biology of protein secretion, a flowchart and decision trees were designed considering (i) membrane targeting, (ii) protein secretion systems, (iii) membrane retention, and (iv) cell-wall retention by domains or post-translocational modifications, as well as (v) incorporation to cell-surface supramolecular structures. Using Listeria monocytogenes as a case study, results were compared with known data set from SCL predictors and experimental proteomics. While in good agreement with experimental extracytoplasmic fractions, the secretomics-based method outperforms other genomic analyses, which were simply not intended to be as inclusive. Compared to all other localization predictors, this method does not only supply a static snapshot of protein SCL but also offers the full picture of the secretion process dynamics: (i) the protein routing is detailed, (ii) the number of distinct SCL and protein categories is comprehensive, (iii) the description of protein type and topology is provided, (iv) the SCL is unambiguously differentiated from the protein category, and (v) the multiple SCL and protein category are fully considered. In that sense, the secretomics-based method is much more than a SCL predictor. Besides a major step forward in genomics and proteomics of protein secretion, the secretomics-based method appears as a strategy of choice to generate in silico hypotheses for experimental testing.
一种预测革兰氏阳性菌(单胞菌)亚细胞定位的新方法
基因组规模的亚细胞定位(SCL)预测不仅有助于推断蛋白质功能,还可以支持蛋白质组数据。与分泌体概念一致,我们开发了一种合理且新颖的分析策略,模拟了决定最终 SCL 的分泌步骤,适用于革兰氏阳性(单胞菌)细菌。该策略基于蛋白质分泌生物学,考虑了(i)膜靶向、(ii)蛋白质分泌系统、(iii)膜保留、(iv)细胞壁保留(通过结构域或翻译后修饰),以及(v)整合到细胞表面超分子结构。以李斯特菌(Listeria monocytogenes)为例,将结果与 SCL 预测器和实验蛋白质组学的已知数据集进行了比较。虽然与已知的细胞外质部分实验数据吻合良好,但基于分泌组学的方法优于其他基因组分析,因为后者并不旨在如此全面。与所有其他定位预测器相比,该方法不仅提供了蛋白质 SCL 的静态快照,还提供了分泌过程动力学的全貌:(i)详细描述了蛋白质路由,(ii)全面涵盖了不同 SCL 和蛋白质类别数量,(iii)提供了蛋白质类型和拓扑结构的描述,(iv)明确区分了 SCL 和蛋白质类别,(v)全面考虑了多种 SCL 和蛋白质类别。从这个意义上说,基于分泌组学的方法不仅仅是一种 SCL 预测器。除了在蛋白质分泌的基因组学和蛋白质组学方面迈出了重要一步之外,基于分泌组学的方法似乎是一种生成实验测试的计算假设的首选策略。