Fundación Instituto de Inmunología de Colombia - FIDIC, Bogotá, Colombia.
PLoS Comput Biol. 2010 Jun 24;6(6):e1000824. doi: 10.1371/journal.pcbi.1000824.
The mycobacterial cell envelope has been implicated in the pathogenicity of tuberculosis and therefore has been a prime target for the identification and characterization of surface proteins with potential application in drug and vaccine development. In this study, the genome of Mycobacterium tuberculosis H37Rv was screened using Machine Learning tools that included feature-based predictors, general localizers and transmembrane topology predictors to identify proteins that are potentially secreted to the surface of M. tuberculosis, or to the extracellular milieu through different secretory pathways. The subcellular localization of a set of 8 hypothetically secreted/surface candidate proteins was experimentally assessed by cellular fractionation and immunoelectron microscopy (IEM) to determine the reliability of the computational methodology proposed here, using 4 secreted/surface proteins with experimental confirmation as positive controls and 2 cytoplasmic proteins as negative controls. Subcellular fractionation and IEM studies provided evidence that the candidate proteins Rv0403c, Rv3630, Rv1022, Rv0835, Rv0361 and Rv0178 are secreted either to the mycobacterial surface or to the extracellular milieu. Surface localization was also confirmed for the positive controls, whereas negative controls were located on the cytoplasm. Based on statistical learning methods, we obtained computational subcellular localization predictions that were experimentally assessed and allowed us to construct a computational protocol with experimental support that allowed us to identify a new set of secreted/surface proteins as potential vaccine candidates.
分枝杆菌的细胞包膜与结核病的致病性有关,因此一直是鉴定和描述具有潜在药物和疫苗开发应用的表面蛋白的主要目标。在这项研究中,使用机器学习工具(包括基于特征的预测器、通用定位器和跨膜拓扑预测器)对结核分枝杆菌 H37Rv 的基因组进行了筛选,以鉴定可能分泌到结核分枝杆菌表面或通过不同分泌途径分泌到细胞外环境的蛋白质。通过细胞分级分离和免疫电子显微镜(IEM)实验评估了一组 8 种假设分泌/表面候选蛋白的亚细胞定位,以确定这里提出的计算方法的可靠性,使用 4 种具有实验确认的分泌/表面蛋白作为阳性对照和 2 种细胞质蛋白作为阴性对照。细胞分级分离和 IEM 研究提供了证据,表明候选蛋白 Rv0403c、Rv3630、Rv1022、Rv0835、Rv0361 和 Rv0178 要么分泌到分枝杆菌表面,要么分泌到细胞外环境。阳性对照的表面定位也得到了证实,而阴性对照位于细胞质中。基于统计学习方法,我们获得了经过实验评估的计算亚细胞定位预测,这使我们能够构建一个具有实验支持的计算方案,从而鉴定出一组新的分泌/表面蛋白作为潜在的疫苗候选物。