Department of Genetic Identification, Erasmus MC University Medical Center Rotterdam, Rotterdam, the Netherlands.
Department of Internal Medicine, Erasmus MC University Medical Center Rotterdam, Rotterdam, the Netherlands.
Forensic Sci Int Genet. 2019 Jul;41:72-82. doi: 10.1016/j.fsigen.2019.03.015. Epub 2019 Apr 4.
Correct identification of different human epithelial materials such as from skin, saliva and vaginal origin is relevant in forensic casework as it provides crucial information for crime reconstruction. However, the overlap in human cell type composition between these three epithelial materials provides challenges for their differentiation and identification when using previously proposed human cell biomarkers, while their microbiota composition largely differs. By using validated 16S rRNA gene massively parallel sequencing data from the Human Microbiome Project of 1636 skin, oral and vaginal samples, 50 taxonomy-independent deep learning networks were trained to classify these three tissues. Validation testing was performed in de-novo generated high-throughput 16S rRNA gene sequencing data using the Ion Torrent Personal Genome Machine from 110 test samples: 56 hand skin, 31 saliva and 23 vaginal secretion specimens. Body-site classification accuracy of these test samples was very high as indicated by AUC values of 0.99 for skin, 0.99 for oral, and 1 for vaginal secretion. Misclassifications were limited to 3 (5%) skin samples. Additional forensic validation testing was performed in mock casework samples by de-novo high-throughput sequencing of 19 freshly-prepared samples and 22 samples aged for 1 up to 7.6 years. All of the 19 fresh and 20 (91%) of the 22 aged mock casework samples were correctly tissue-type classified. Moreover, comparing the microbiome results with outcomes from previous human mRNA-based tissue identification testing in the same 16 aged mock casework samples reveals that our microbiome approach performs better in 12 (75%), similarly in 2 (12.5%), and less good in 2 (12.5%) of the samples. Our results demonstrate that this new microbiome approach allows for accurate tissue-type classification of three human epithelial materials of skin, oral and vaginal origin, which is highly relevant for future forensic investigations.
正确识别不同的人体上皮组织材料,如皮肤、唾液和阴道来源,在法医工作中非常重要,因为它为犯罪重建提供了关键信息。然而,这三种上皮组织在人类细胞类型组成上存在重叠,这给使用先前提出的人类细胞生物标志物进行区分和鉴定带来了挑战,而它们的微生物群落组成则有很大的不同。本研究使用人类微生物组计划 1636 例皮肤、口腔和阴道样本的经过验证的 16S rRNA 基因大规模平行测序数据,训练了 50 个与分类无关的深度学习网络,以对这三种组织进行分类。在使用 Ion Torrent Personal Genome Machine 生成的高通量 16S rRNA 基因测序数据的新验证测试中,对 110 个测试样本进行了测试:56 例手部皮肤样本、31 例唾液样本和 23 例阴道分泌物样本。这些测试样本的组织分类准确率非常高,皮肤的 AUC 值为 0.99,口腔为 0.99,阴道分泌物为 1。错误分类仅限于 3(5%)个皮肤样本。通过对 19 个新鲜制备样本和 22 个存放 1 至 7.6 年的样本进行高通量测序的模拟案例工作进行了额外的法医验证测试。所有 19 个新鲜样本和 20 个(91%)老化模拟案例样本都正确地进行了组织分类。此外,将微生物组结果与同一 16 个老化模拟案例样本中先前基于人类 mRNA 的组织鉴定测试的结果进行比较,表明我们的微生物组方法在 12 个(75%)样本中表现更好,在 2 个(12.5%)样本中表现相似,在 2 个(12.5%)样本中表现较差。我们的研究结果表明,这种新的微生物组方法可以准确地对皮肤、口腔和阴道来源的三种人体上皮组织进行分类,这对未来的法医调查具有重要意义。