Faculty of Forensic Medicine, Zhongshan School of Medicine, Sun Yat-sen University, Guangzhou 510080, China; Guangdong Province Translational Forensic Medicine Engineering Technology Research Center, Sun Yat-sen University, Guangzhou 510080, China.
Faculty of Forensic Medicine, Zhongshan School of Medicine, Sun Yat-sen University, Guangzhou 510080, China; Guangdong Province Translational Forensic Medicine Engineering Technology Research Center, Sun Yat-sen University, Guangzhou 510080, China; School of Medicine, Jiaying University, Meizhou 514015, China.
Forensic Sci Int Genet. 2024 Sep;72:103078. doi: 10.1016/j.fsigen.2024.103078. Epub 2024 Jun 12.
DNA mixtures are a common sample type in forensic genetics, and we typically assume that contributors to the mixture are unrelated when calculating the likelihood ratio (LR). However, scenarios involving mixtures with related contributors, such as in family murder or incest cases, can also be encountered. Compared to the mixtures with unrelated contributors, the kinship within the mixture would bring additional challenges for the inference of the number of contributors (NOC) and the construction of probabilistic genotyping models. To evaluate the influence of potential kinship on the individual identification of the person of interest (POI), we conducted simulations of two-person (2 P) and three-person (3 P) DNA mixtures containing unrelated or related contributors (parent-child, full-sibling, and uncle-nephew) at different mixing ratios (for 2 P: 1:1, 4:1, 9:1, and 19:1; for 3 P: 1:1:1, 2:1:1, 5:4:1, and 10:5:1), and performed massively parallel sequencing (MPS) using MGIEasy Signature Identification Library Prep Kit on MGI platform. In addition, in silico simulations of mixtures with unrelated and related contributors were also performed. In this study, we evaluated 1): the MPS performance; 2) the influence of multiple genetic markers on determining the presence of related contributors and inferring the NOC within the mixture; 3) the probability distribution of MAC (maximum allele count) and TAC (total allele count) based on in silico mixture profiles; 4) trends in LR values with and without considering kinship in mixtures with related and unrelated contributors; 5) trends in LR values with length- and sequence-based STR genotypes. Results indicated that multiple numbers and types of genetic markers positively influenced kinship and NOC inference in a mixture. The LR values of POI were strongly dependent on the mixing ratio. Non- and correct-kinship hypotheses essentially did not affect the individual identification of the major POI; the correct kinship hypothesis yielded more conservative LR values; the incorrect kinship hypothesis did not necessarily lead to the failure of POI individual identification. However, it is noteworthy that these considerations could lead to uncertain outcomes in the identification of minor contributors. Compared to length-based STR genotyping, using sequence-based STR genotype increases the individual identification power of the POI, concurrently improving the accuracy of mixing ratio inference using EuroForMix. In conclusion, the MGIEasy Signature Identification Library Prep kit demonstrated robust individual identification power, which is a viable MPS panel for forensic DNA mixture interpretations, whether involving unrelated or related contributors.
DNA 混合物是法医遗传学中常见的样本类型,我们通常假设在计算似然比 (LR) 时,混合物的贡献者是无关的。然而,涉及具有相关贡献者的混合物的情况,例如家庭谋杀或乱伦案件,也可能会遇到。与具有无关贡献者的混合物相比,混合物中的亲属关系会给贡献者数量 (NOC) 的推断和概率基因分型模型的构建带来额外的挑战。为了评估潜在亲属关系对感兴趣个体 (POI) 个体识别的影响,我们模拟了包含无关或相关贡献者(父母-子女、全同胞和叔侄)的两人 (2P) 和三人 (3P) DNA 混合物在不同混合比例(2P:1:1、4:1、9:1 和 19:1;3P:1:1:1、2:1:1、5:4:1 和 10:5:1)下的个体识别,使用 MGI 平台上的 MGIEasy Signature Identification Library Prep Kit 进行大规模平行测序 (MPS)。此外,还对具有无关和相关贡献者的混合物进行了计算机模拟。在这项研究中,我们评估了 1)MPS 性能;2)多个遗传标记对确定相关贡献者的存在和推断混合物中 NOC 的影响;3)基于计算机模拟混合物谱的 MAC(最大等位基因数)和 TAC(总等位基因数)的概率分布;4)在具有相关和无关贡献者的混合物中考虑和不考虑亲属关系时 LR 值的趋势;5)基于长度和序列的 STR 基因型的 LR 值趋势。结果表明,多个遗传标记的数量和类型对混合物中的亲属关系和 NOC 推断有积极影响。POI 的 LR 值强烈依赖于混合比例。非亲属关系和正确亲属关系假设基本上不会影响主要 POI 的个体识别;正确的亲属关系假设产生更保守的 LR 值;错误的亲属关系假设不一定导致 POI 个体识别失败。然而,值得注意的是,这些考虑因素可能会导致次要贡献者识别的不确定结果。与基于长度的 STR 基因分型相比,使用基于序列的 STR 基因型可提高 POI 的个体识别能力,同时提高使用 EuroForMix 推断混合比例的准确性。总之,MGIEasy Signature Identification Library Prep 试剂盒表现出强大的个体识别能力,是一种可行的法医 DNA 混合物解释 MPS 面板,无论是涉及无关还是相关贡献者。