Forensic Genetics Unit, Institute of Forensic Sciences, University of Santiago de Compostela, Spain.
Department of Forensic Medicine and Forensic Toxicology, Medical University of Silesia, Katowice, Poland.
Forensic Sci Int Genet. 2023 Nov;67:102936. doi: 10.1016/j.fsigen.2023.102936. Epub 2023 Sep 29.
Age prediction from DNA has been a topic of interest in recent years due to the promising results obtained when using epigenetic markers. Since DNA methylation gradually changes across the individual's lifetime, prediction models have been developed accordingly for age estimation. The tissue-dependence for this biomarker usually necessitates the development of tissue-specific age prediction models, in this way, multiple models for age inference have been constructed for the most commonly encountered forensic tissues (blood, oral mucosa, semen). The analysis of skeletal remains has also been attempted and prediction models for bone have now been reported. Recently, the VISAGE Enhanced Tool was developed for the simultaneous DNA methylation analysis of 8 age-correlated loci using targeted high-throughput sequencing. It has been shown that this method is compatible with epigenetic age estimation models for blood, buccal cells, and bone. Since when dealing with decomposed cadavers or postmortem samples, cartilage samples are also an important biological source, an age prediction model for cartilage has been generated in the present study based on methylation data collected using the VISAGE Enhanced Tool. In this way, we have developed a forensic cartilage age prediction model using a training set composed of 109 samples (19-74 age range) based on DNA methylation levels from three CpGs in FHL2, TRIM59 and KLF14, using multivariate quantile regression which provides a mean absolute error (MAE) of ± 4.41 years. An independent testing set composed of 72 samples (19-75 age range) was also analyzed and provided an MAE of ± 4.26 years. In addition, we demonstrate that the 8 VISAGE markers, comprising EDARADD, TRIM59, ELOVL2, MIR29B2CHG, PDE4C, ASPA, FHL2 and KLF14, can be used as tissue prediction markers which provide reliable blood, buccal cells, bone, and cartilage differentiation using a developed multinomial logistic regression model. A training set composed of 392 samples (n = 87 blood, n = 86 buccal cells, n = 110 bone and n = 109 cartilage) was used for building the model (correct classifications: 98.72%, sensitivity: 0.988, specificity: 0.996) and validation was performed using a testing set composed of 192 samples (n = 38 blood, n = 36 buccal cells, n = 46 bone and n = 72 cartilage) showing similar predictive success to the training set (correct classifications: 97.4%, sensitivity: 0.968, specificity: 0.991). By developing both a new cartilage age model and a tissue differentiation model, our study significantly expands the use of the VISAGE Enhanced Tool while increasing the amount of DNA methylation-based information obtained from a single sample and a single forensic laboratory analysis. Both models have been placed in the open-access Snipper forensic classification website.
基于 DNA 的年龄预测近年来成为研究热点,因为使用表观遗传标记可以获得有前景的结果。由于 DNA 甲基化在个体一生中逐渐变化,因此已经开发了相应的预测模型来进行年龄估计。由于这种生物标志物的组织依赖性,通常需要开发组织特异性的年龄预测模型,因此已经为最常见的法医组织(血液、口腔黏膜、精液)构建了多个年龄推断模型。骨骼遗骸的分析也已经尝试过,并且现在已经报告了骨骼的预测模型。最近,开发了 VISAGE 增强工具,用于使用靶向高通量测序对 8 个与年龄相关的基因座进行同时的 DNA 甲基化分析。已经表明,该方法与血液、口腔细胞和骨骼的表观遗传年龄估计模型兼容。由于在处理分解的尸体或死后样本时,软骨样本也是重要的生物来源,因此本研究基于使用 VISAGE 增强工具收集的甲基化数据,为软骨生成了一个年龄预测模型。通过这种方式,我们使用基于三个 CpG 的 FHL2、TRIM59 和 KLF14 中的 DNA 甲基化水平,基于来自 109 个样本(19-74 年龄范围)的训练集,使用多元分位数回归生成了一个法医软骨年龄预测模型,该模型提供了一个平均绝对误差(MAE)±4.41 年。还分析了由 72 个样本(19-75 年龄范围)组成的独立测试集,提供了一个 MAE ±4.26 年。此外,我们证明了 8 个 VISAGE 标记物,包括 EDARADD、TRIM59、ELOVL2、MIR29B2CHG、PDE4C、ASPA、FHL2 和 KLF14,可以用作组织预测标记物,使用开发的多项逻辑回归模型可以可靠地区分血液、口腔细胞、骨骼和软骨。一个由 392 个样本(n=87 个血液、n=86 个口腔细胞、n=110 个骨骼和 n=109 个软骨)组成的训练集用于构建模型(正确分类:98.72%,灵敏度:0.988,特异性:0.996),并使用由 192 个样本(n=38 个血液、n=36 个口腔细胞、n=46 个骨骼和 n=72 个软骨)组成的测试集进行验证,结果表明与训练集有相似的预测成功率(正确分类:97.4%,灵敏度:0.968,特异性:0.991)。通过开发新的软骨年龄模型和组织分化模型,我们的研究显著扩展了 VISAGE 增强工具的使用范围,同时增加了从单个样本和单个法医实验室分析中获得的基于 DNA 甲基化的信息量。这两个模型都已经放在开放访问的 Snipper 法医分类网站上。