A novel approach for exploring the regional features of vaginal fluids based on microbial relative abundance and alpha diversity

IF 1.2 4区 医学 Q3 MEDICINE, LEGAL
Lili Liao , Yunxia Sun , Litao Huang , Linying Ye , Ling Chen , Mei Shen
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引用次数: 0

Abstract

Vaginal fluids are one of the most common biological samples in forensic sexual assault cases, and their characterization is vital to narrow the scope of investigation. Presently, approaches for identifying vaginal fluids in different regions are not only rare but also have certain limitations. However, the microbiome has shown the potential to identify the source of body fluids and reveal the characteristics of individuals. In this study, 16S rRNA gene high-throughput sequencing was used to characterize the vaginal microbial community from three regions, Sichuan, Hainan and Hunan. In addition, data on relative abundance and alpha diversity were used to construct a random forest model. The results revealed that the dominant genera in the three regions were Lactobacillus, followed by Gardnerella. In addition, Ureaplasma, Nitrospira, Nocardiodes, Veillonella and g-norank-f-Vicinamibacteraceae were significantly enriched genera in Sichuan, llumatobacter was enriched in Hainan, and Pseudomonas was enriched in Hunan. The random forest classifier based on combined data on relative abundance and alpha diversity had a good ability to distinguish vaginal fluids with similar dominant microbial compositions in the three regions. The study suggests that combining high-throughput sequencing data with machine learning models has good potential for application in the biogeographic inference of vaginal fluids.

一种基于微生物相对丰度和α多样性探索阴道液区域特征的新方法
阴道液体是法医性侵犯案件中最常见的生物样本之一,其特征对于缩小调查范围至关重要。目前,鉴别不同部位阴道分泌液的方法不仅很少,而且有一定的局限性。然而,微生物组已经显示出识别体液来源和揭示个体特征的潜力。本研究采用16S rRNA基因高通量测序对四川、海南和湖南3个地区的阴道微生物群落进行了分析。此外,利用相对丰度和α多样性数据构建随机森林模型。结果表明,3个地区的优势菌属均为乳酸菌属,其次为加德纳菌属。此外,Ureaplasma、Nitrospira、Nocardiodes、Veillonella和g-norank-f-Vicinamibacteraceae属在四川富集,lumatobacter属在海南富集,Pseudomonas属在湖南富集。基于相对丰度和α多样性组合数据的随机森林分类器在三个地区具有相似优势微生物组成的阴道液中具有良好的区分能力。该研究表明,将高通量测序数据与机器学习模型相结合,在阴道液的生物地理推断中具有良好的应用潜力。
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来源期刊
CiteScore
2.70
自引率
6.70%
发文量
106
审稿时长
57 days
期刊介绍: The Journal of Forensic and Legal Medicine publishes topical articles on aspects of forensic and legal medicine. Specifically the Journal supports research that explores the medical principles of care and forensic assessment of individuals, whether adult or child, in contact with the judicial system. It is a fully peer-review hybrid journal with a broad international perspective. The Journal accepts submissions of original research, review articles, and pertinent case studies, editorials, and commentaries in relevant areas of Forensic and Legal Medicine, Context of Practice, and Education and Training. The Journal adheres to strict publication ethical guidelines, and actively supports a culture of inclusive and representative publication.
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