French Agency for Food, Environmental and Occupational Health & Safety (Anses), Laboratory for Food Safety, Université Paris-Est, Maisons-Alfort F-94701, France.
French Agency for Food, Environmental and Occupational Health & Safety (Anses), Laboratory for Food Safety, Université Paris-Est, Maisons-Alfort F-94701, France; Ecole Nationale Vétérinaire d'Alfort, Maisons-Alfort F-94704, France.
Int J Food Microbiol. 2019 Feb 16;291:181-188. doi: 10.1016/j.ijfoodmicro.2018.11.028. Epub 2018 Nov 29.
Intraspecific variability of the behavior of most foodborne pathogens is well described and taken into account in Quantitative Microbial Risk Assessment (QMRA), but factors (strain origin, serotype, …) explaining these differences are scarce or contradictory between studies. Nowadays, Whole Genome Sequencing (WGS) offers new opportunities to explain intraspecific variability of food pathogens, based on various recently published bioinformatics tools. The objective of this study is to get a better insight into different existing bioinformatics approaches to associate bacterial phenotype(s) and genotype(s). Therefore, a dataset of 51 L. monocytogenes strains, isolated from multiple sources (i.e. different food matrices and environments) and belonging to 17 clonal complexes (CC), were selected to represent large population diversity. Furthermore, the phenotypic variability of growth at low temperature was determined (i.e. qualitative phenotype), and the whole genomes of selected strains were sequenced. The almost exhaustive gene content, as well as the core genome SNPs based phylogenetic reconstruction, were derived from the whole sequenced genomes. A Bayesian inference method was applied to identify the branches on which the phenotype distribution evolves within sub-lineages. Two different Genome Wide Association Studies (i.e. gene- and SNP-based GWAS) were independently performed in order to link genetic mutations to the phenotype of interest. The genomic analyses presented in this study were successfully applied on the selected dataset. The Bayesian phylogenetic approach emphasized an association with "slow" growth ability at 2 °C of the lineage I, as well as CC9 of the lineage II. Moreover, both gene- and SNP-GWAS approaches displayed significant statistical associations with the tested phenotype. A list of 114 significantly associated genes, including genes already known to be involved in the cold adaption mechanism of L. monocytogenes and genes associated to mobile genetic elements (MGE), resulted from the gene-GWAS. On the other hand, a group of 184 highly associated SNPs were highlighted by SNP-GWAS, including SNPs detected in genes which were already likely involved in cold adaption; hypothetical proteins; and intergenic regions where for example promotors and regulators can be located. The successful application of combined bioinformatics approaches associating WGS-genotypes and specific phenotypes, could contribute to improve prediction of microbial behaviors in food. The implementation of this information in hazard identification and exposure assessment processes will open new possibilities to feed QMRA-models.
食品病原体行为的种内变异性得到了很好的描述,并在定量微生物风险评估 (QMRA) 中得到了考虑,但在研究中,解释这些差异的因素(菌株来源、血清型等)很少或相互矛盾。如今,全基因组测序 (WGS) 为基于各种最近发布的生物信息学工具解释食源性病原体的种内变异性提供了新的机会。本研究的目的是更好地了解将细菌表型(s)和基因型(s)相关联的不同现有生物信息学方法。因此,选择了 51 株单核细胞增生李斯特菌菌株的数据集,这些菌株来自多个来源(即不同的食物基质和环境),并属于 17 个克隆复合体 (CC),以代表大的种群多样性。此外,还确定了低温下生长的表型变异性(即定性表型),并对选定菌株的全基因组进行了测序。从全测序基因组中得出了几乎详尽的基因含量以及基于核心基因组 SNPs 的系统发育重建。应用贝叶斯推断方法来识别分支,分支上表型在亚谱系内进化。为了将遗传突变与感兴趣的表型联系起来,独立进行了两次全基因组关联研究(即基于基因和 SNP 的 GWAS)。本研究中提出的基因组分析成功应用于选定的数据集。贝叶斯系统发育方法强调了与谱系 I 中 2°C 下“缓慢”生长能力以及谱系 II 中 CC9 的关联。此外,基于基因和 SNP 的 GWAS 方法都显示出与测试表型的显著统计学关联。基于基因的 GWAS 产生了与测试表型相关的 114 个显著相关基因的列表,其中包括已知与单核细胞增生李斯特菌的冷适应机制相关的基因和与移动遗传元件 (MGE) 相关的基因。另一方面,SNP-GWAS 突出显示了一组 184 个高度相关的 SNP,其中包括在可能已经参与冷适应的基因中检测到的 SNP;假设蛋白;以及例如启动子和调节剂所在的基因间区域。将 WGS 基因型与特定表型相关联的组合生物信息学方法的成功应用,有助于提高对食品中微生物行为的预测。将这些信息应用于危害识别和暴露评估过程将为 QMRA 模型提供新的可能性。