Giuffrida Monica, Rodrigues Pedro, Köksal Zehra, Jønck Carina G, Pereira Vania, Børsting Claus
Section of Forensic Genetics, Department of Forensic Medicine, Faculty of Health Sciences, University of Copenhagen, 11 Frederik V's Vej, DK-2100 Copenhagen, Denmark.
Genes (Basel). 2025 Sep 18;16(9):1105. doi: 10.3390/genes16091105.
Interpretation of mixture profiles generated from crime scene samples is an important element in forensic genetics. Here, a workflow for mixture deconvolution of sequenced microhaplotypes (MHs) and STRs using the probabilistic genotyping software MPSproto v0.9.7 was developed, and the performance of the two types of loci was compared. : Sequencing data from a custom panel of 74 MHs (the MH-74 plex) and a commercial kit with 26 autosomal STRs (the ForenSeq™ DNA Signature Prep Kit) were used. Single-source profiles were computationally combined to create 360 two-person and 336 three-person mixtures using the Python script MixtureSimulator v1.0. Additionally, 72 real mixtures typed with the MH-74 plex and 18 real mixtures typed with the ForenSeq Kit from a previous study were deconvoluted using MPSproto. : The deconvoluted MH profiles were more complete and had fewer wrong genotype calls than the deconvoluted STR profiles. The contributor proportion estimates were more accurate for MH profiles than for STR profiles. Wrong genotype calls were mostly caused by locus and heterozygous imbalances, noise reads, or an inaccurate contributor proportion estimation. The latter was especially problematic in STR sequencing data, when two contributors contributed equally to the mixture. A total of 34,800 deconvolutions of the simulated mixtures were performed with two defined hypotheses: H, "The sample consists of DNA from one/two unknown contributor(s) and the suspect" and H, "The sample consists of DNA from two/three unknown individuals". All true contributors were identified (LR > 10 for MHs and LR > 10 for STRs) and all non-contributors excluded (LR < 10 for MHs and LR < 0.2 for STRs). : In simulated and real mixtures, the MHs performed better than STRs.
解读从犯罪现场样本生成的混合图谱是法医遗传学中的一个重要环节。在此,开发了一种使用概率基因分型软件MPSproto v0.9.7对测序的微单倍型(MHs)和短串联重复序列(STRs)进行混合图谱解卷积的工作流程,并比较了这两种类型位点的性能。使用了来自74个MHs的定制面板(MH - 74复合体系)的测序数据以及包含26个常染色体STRs的商业试剂盒(ForenSeq™ DNA Signature Prep试剂盒)。使用Python脚本MixtureSimulator v1.0将单源图谱进行计算组合,以创建360个两人混合样本和336个三人混合样本。此外,使用MPSproto对先前一项研究中72个用MH - 74复合体系分型的真实混合样本和18个用ForenSeq试剂盒分型的真实混合样本进行了解卷积。解卷积后的MH图谱比解卷积后的STR图谱更完整,错误基因型调用更少。MH图谱的贡献者比例估计比STR图谱更准确。错误基因型调用主要由位点和杂合不平衡、噪声读数或不准确的贡献者比例估计引起。当两个贡献者对混合样本的贡献相当时,后者在STR测序数据中尤其成问题。针对两个定义的假设对模拟混合样本总共进行了34,800次解卷积:假设H,“样本由来自一名/两名未知贡献者和嫌疑人的DNA组成”;假设H,“样本由来自两名/三名未知个体的DNA组成”。所有真实贡献者均被识别(MHs的似然比>10,STRs的似然比>10),所有非贡献者均被排除(MHs的似然比<10,STRs的似然比<0.2)。在模拟和真实混合样本中,MHs的表现优于STRs。