Department of Developmental Medicine, Research Institute, Osaka Women's and Children's Hospital, 840 Murodo-cho, Izumi City, Osaka 594-1101, Japan.
Department of Pediatric and Neonatal-Perinatal Research, Graduate School of Medicine, Osaka University, 1-1 Yamadaoka, Suita City, Osaka 565-0871, Japan.
J Appl Microbiol. 2023 Dec 1;134(12). doi: 10.1093/jambio/lxad283.
Approximately 10% of children are born prematurely, and bacterial vaginosis during pregnancy is associated with preterm delivery. Highly accurate species-level vaginal microflora analysis helps control bacteria-induced preterm birth. Therefore, we aimed to conduct a bioinformatic analysis of gene sequences using 16S databases and compare their efficacy in comprehensively identifying potentially pathogenic vaginal microbiota in Japanese women.
The 16 s rRNA databases, Silva, Greengenes, and the basic local alignment search tool (BLAST) were compared to determine whether the classification quality could be improved using the V3-V4 region next-generation sequencing (NGS) sequences. It was found that NGS data were aligned using the BLAST database with the QIIME 2 platform, whose classification quality was higher than that of Silva, and the combined Silva and Greengenes databases based on the mutual complementarity of the two databases.
The reference database selected during the bioinformatic processing influenced the recognized sequence percentage, taxonomic rankings, and accuracy. This study showed that the BLAST database was the best choice for NGS data analysis of Japanese women's vaginal microbiota.
大约 10%的儿童是早产儿,而怀孕期间细菌性阴道病与早产有关。高度准确的物种水平阴道微生物群分析有助于控制细菌引起的早产。因此,我们旨在使用 16S 数据库进行基因序列的生物信息学分析,并比较它们在全面识别日本女性潜在致病阴道微生物群方面的功效。
比较了 16s rRNA 数据库 Silva、Greengenes 和基本局部比对搜索工具(BLAST),以确定使用 V3-V4 区域下一代测序(NGS)序列是否可以提高分类质量。结果发现,使用 BLAST 数据库和 QIIME 2 平台对齐 NGS 数据,其分类质量高于 Silva,以及 Silva 和 Greengenes 数据库的组合,基于两个数据库的互补性。
生物信息学处理过程中选择的参考数据库会影响识别序列的百分比、分类等级和准确性。本研究表明,BLAST 数据库是分析日本女性阴道微生物群 NGS 数据的最佳选择。