Institute of Forensic Medicine, West China School of Basic Medical Sciences & Forensic Medicine, Sichuan University, Chengdu 610041, China; Key Laboratory of Evidence Science (China University of Political Science and Law), Ministry of Education, Beijing 100088, China.
Institute of Forensic Medicine, West China School of Basic Medical Sciences & Forensic Medicine, Sichuan University, Chengdu 610041, China.
Leg Med (Tokyo). 2022 Nov;59:102115. doi: 10.1016/j.legalmed.2022.102115. Epub 2022 Jul 5.
Age prediction can provide important information about the contributors of biological evidence left at crime scenes. DNA methylation has been regarded as the most promising age-predictive biomarker. Measuring themethylation level at the genome-wide scaleis an important step to screen specific markers for forensic age prediction. In present study, we screened out five age-related CpG sites from the public EPIC BeadChip data and evaluated them in a training set (115 blood) by multiplex methylation SNaPshot assay. Through full subset regression, the five markers were narrowed down to three, namely cg10501210 (C1orf132), cg16867657 (ELOVL2), and cg13108341 (DNAH9), of which the last one was a newly discovered age-related CpG site. An age prediction model was built based on these three markers, explaining 86.8% of the variation of age with a mean absolute deviation (MAD) of 4.038 years. Then, the multiplex methylation SNaPshot assay was adjusted according to the age prediction model. Considering that bloodstains are one of the most common biological samples in practical cases, three validation sets composed of 30 blood, 30 fresh bloodstains and 30 aged bloodstains were used for evaluation of the age prediction model. The MAD of each set was estimated as 4.734, 4.490, and 5.431 years, respectively, suggesting that our age prediction model was applicable for age prediction for blood and bloodstains in Chinese Han population of 11-71 age. In general, this study describes a workflow of screening CpG markers from public chip data and presents a 3-CpG markers model for forensic age prediction.
年龄预测可以提供关于犯罪现场遗留生物证据来源的重要信息。DNA 甲基化被认为是最有前途的年龄预测生物标志物。在全基因组范围内测量甲基化水平是筛选特定法医年龄预测标志物的重要步骤。在本研究中,我们从公共 EPIC BeadChip 数据中筛选出五个与年龄相关的 CpG 位点,并通过多重甲基化 SNaPshot assay 在训练集(115 个血液样本)中进行评估。通过全子集回归,将这 5 个标志物缩小到 3 个,即 cg10501210(C1orf132)、cg16867657(ELOVL2)和 cg13108341(DNAH9),其中最后一个是新发现的与年龄相关的 CpG 位点。基于这三个标志物构建了年龄预测模型,解释了 86.8%的年龄变化,平均绝对偏差(MAD)为 4.038 岁。然后,根据年龄预测模型调整多重甲基化 SNaPshot assay。考虑到血斑是实际案例中最常见的生物样本之一,我们使用 30 个血液样本、30 个新鲜血斑和 30 个陈旧血斑组成的三个验证集来评估年龄预测模型。每个集的 MAD 分别估计为 4.734、4.490 和 5.431 岁,这表明我们的年龄预测模型适用于中国汉族 11-71 岁人群的血液和血斑的年龄预测。总之,本研究描述了从公共芯片数据中筛选 CpG 标记物的工作流程,并提出了一种用于法医年龄预测的 3-CpG 标记物模型。