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古代及第二次世界大战时期骨骼样本中常染色体STR分型成功率的预测

Prediction of autosomal STR typing success in ancient and Second World War bone samples.

作者信息

Zupanič Pajnič Irena, Zupanc Tomaž, Balažic Jože, Geršak Živa Miriam, Stojković Oliver, Skadrić Ivan, Črešnar Matija

机构信息

Institute of Forensic Medicine, Faculty of Medicine, University of Ljubljana, Korytkova 2, 1000 Ljubljana, Slovenia.

Institute of Forensic Medicine, Faculty of Medicine, University of Ljubljana, Korytkova 2, 1000 Ljubljana, Slovenia.

出版信息

Forensic Sci Int Genet. 2017 Mar;27:17-26. doi: 10.1016/j.fsigen.2016.11.004. Epub 2016 Nov 19.

Abstract

Human-specific quantitative PCR (qPCR) has been developed for forensic use in the last 10 years and is the preferred DNA quantification technique since it is very accurate, sensitive, objective, time-effective and automatable. The amount of information that can be gleaned from a single quantification reaction using commercially available quantification kits has increased from the quantity of nuclear DNA to the amount of male DNA, presence of inhibitors and, most recently, to the degree of DNA degradation. In skeletal remains samples from disaster victims, missing persons and war conflict victims, the DNA is usually degraded. Therefore the new commercial qPCR kits able to assess the degree of degradation are potentially able to predict the success of downstream short tandem repeat (STR) typing. The goal of this study was to verify the quantification step using the PowerQuant kit with regard to its suitability as a screening method for autosomal STR typing success on ancient and Second World War (WWII) skeletal remains. We analysed 60 skeletons excavated from five archaeological sites and four WWII mass graves from Slovenia. The bones were cleaned, surface contamination was removed and the bones ground to a powder. Genomic DNA was obtained from 0.5g of bone powder after total demineralization. The DNA was purified using a Biorobot EZ1 device. Following PowerQuant quantification, DNA samples were subjected to autosomal STR amplification using the NGM kit. Up to 2.51ng DNA/g of powder were extracted. No inhibition was detected in any of bones analysed. 82% of the WWII bones gave full profiles while 73% of the ancient bones gave profiles not suitable for interpretation. Four bone extracts yielded no detectable amplification or zero quantification results and no profiles were obtained from any of them. Full or useful partial profiles were produced only from bone extracts where short autosomal (Auto) and long degradation (Deg) PowerQuant targets were detected. It is concluded that STR typing of old bones after quantification with the PowerQuant should be performed only when both Auto and Deg targets are detected simultaneously with no respect to [Auto]/[Deg] ratio. Prediction of STR typing success could be made according to successful amplification of Deg fragment. The PowerQuant kit is capable of identifying bone DNA samples that will not yield useful STR profiles using the NGM kit, and it can be used as a predictor of autosomal STR typing success of bone extracts obtained from ancient and WWII skeletal remains.

摘要

在过去十年中,人类特异性定量聚合酶链反应(qPCR)已被开发用于法医学领域,并且由于其准确性高、灵敏度高、客观、省时且可自动化,它已成为首选的DNA定量技术。使用市售定量试剂盒从单个定量反应中可获取的信息量,已从核DNA的量增加到男性DNA的量、抑制剂的存在情况,以及最近增加到DNA降解程度。在灾难受害者、失踪人员和战争冲突受害者的骨骼遗骸样本中,DNA通常会降解。因此,能够评估降解程度的新型商业qPCR试剂盒有可能预测下游短串联重复序列(STR)分型的成功率。本研究的目的是验证使用PowerQuant试剂盒进行定量步骤,以确定其作为对古代和第二次世界大战(WWII)骨骼遗骸进行常染色体STR分型成功与否的筛选方法的适用性。我们分析了从斯洛文尼亚的五个考古遗址挖掘出的60具骨骼以及四个二战时期的万人坑。对骨骼进行清洁,去除表面污染物,并将骨骼研磨成粉末。在完全脱矿质后,从0.5克骨粉中获得基因组DNA。使用Biorobot EZ1设备纯化DNA。在进行PowerQuant定量后,使用NGM试剂盒对DNA样本进行常染色体STR扩增。每克粉末最多可提取2.51纳克DNA。在所分析的任何骨骼中均未检测到抑制作用。82%的二战时期骨骼获得了完整图谱,而73%的古代骨骼获得的图谱不适合解读。四份骨骼提取物未产生可检测到的扩增或零定量结果,并且未从其中任何一份获得图谱。仅从检测到短常染色体(Auto)和长降解(Deg)PowerQuant靶点的骨骼提取物中产生了完整或有用的部分图谱。得出的结论是,在用PowerQuant进行定量后,仅当同时检测到Auto和Deg靶点且不考虑[Auto]/[Deg]比率时,才应对陈旧骨骼进行STR分型。可根据Deg片段的成功扩增来预测STR分型的成功率。PowerQuant试剂盒能够识别使用NGM试剂盒无法产生有用STR图谱的骨骼DNA样本,并且它可作为从古代和二战时期骨骼遗骸中获得的骨骼提取物常染色体STR分型成功与否的预测指标。

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