Body fluid identification and assignment to donors using a targeted mRNA massively parallel sequencing approach – results of a second EUROFORGEN / EDNAP collaborative exercise

体液 大规模并行测序 巨量平行 计算生物学 编码区 生物 DNA测序 计算机科学 化学 生物信息学 遗传学 基因 内科学 医学 并行计算
作者
Sabrina Ingold,Guro Dørum,Erin Hanson,David Ballard,Andrea Berti,Katherine B. Gettings,Federica Giangasparo,Marie‐Louise Kampmann,François-Xavier Laurent,Niels Morling,Walther Parson,Carolyn R. Steffen,Ayhan Ulus,M. van den Berge,Kristiaan J. van der Gaag,Vincenzo Verdoliva,Catarina Xavier,Jack Ballantyne,Cordula Haas
出处
期刊:Forensic Science International-genetics [Elsevier BV]
卷期号:45: 102208-102208 被引量:24
标识
DOI:10.1016/j.fsigen.2019.102208
摘要

In a previous EUROFORGEN/EDNAP collaborative exercise, we tested two assays for targeted mRNA massively parallel sequencing for the identification of body fluids/tissues, optimized for the Illumina MiSeq/FGx and the Ion Torrent PGM/S5 platforms, respectively. The task of the second EUROFORGEN/EDNAP collaborative exercise was to analyze dried body fluid stains with two different multiplexes, the former Illumina 33plex mRNA panel for body fluid/tissue identification and a 35plex cSNP panel for assignment of body fluids/tissues to donors that was introduced in a proof-of-concept study recently. The coding region SNPs (cSNPs) are located within the body fluid specific mRNA transcripts and represent a direct link between the body fluid and the donor. We predicted the origin of the stains using a partial least squares discriminant analysis (PLS-DA) model, where most of the single source samples were correctly predicted. The mixed body fluid stains showed poorer results, however, at least one component was predicted correctly in most stains. The cSNP data demonstrated that coding region SNPs can give valuable information on linking body fluids/tissues with donors in mixed body fluid stains. However, due to the unfavorable performance of some cSNPs, the interpretation remains challenging. As a consequence, additional markers are needed to increase the discrimination power in each body fluid/tissue category.

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