探索利用 DNA 甲基化估算法定年龄。

IF 3.2 2区 医学 Q2 GENETICS & HEREDITY Forensic Science International-Genetics Pub Date : 2024-09-05 DOI:10.1016/j.fsigen.2024.103142
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引用次数: 0

摘要

未成年人(本研究中法定年龄为 18 岁以下的受试者)享有一系列旨在保护他们和保障他们福利的法律权利。然而,全世界有许多未成年人无法证明自己未到法定年龄,因此,人们对尽可能准确地预测法定年龄产生了浓厚的兴趣。目前的方法主要涉及 X 射线分析,具有很强的侵入性,因此人们正在研究预测法定年龄的新方法,如 DNA 甲基化。为了进一步开展此类研究,我们根据五个表观遗传标记(cg21572722 (ELOVL2)、cg02228185 (ASPA)、cg06639320 (FHL2)、cg19283806 (CCDC102B)和 cg07082267 (无相关基因))创建了两个年龄预测模型,并对血液样本进行了分析,以确定 DNA 甲基化作为法定年龄估计的有效工具可能存在的局限性。利用一组广泛的样本(14-94 岁)创建了一个宽年龄范围预测模型,得出的平均绝对误差 (MAE) 为 ±4.32 岁。第二个模型是受限年龄预测模型,使用的样本范围较小(14-25 岁),平均绝对误差为 ±1.54。除了 Horvath 的皮肤和血液表观遗传时钟外,这两个模型还使用了一个测试集进行评估,该测试集由 732 对 18 岁的双胞胎(N=426 对单卵双生(MZ)和 N=306 对双卵双生(DZ))组成,代表了相关的研究年龄。通过对前两个年龄预测模型的分析,我们发现,将构成训练集的样本年龄限制在理想学习年龄附近可显著降低预测误差(MZ 和 DZ 双胞胎的 MAE 分别为 ±4.07 和 ±4.27 岁;MZ 和 DZ 双胞胎的 MAE 分别为 ±1.31 和 ±1.3岁)。然而,尽管预测误差较低,DNA 甲基化模型仍容易将同龄人分为不同类别(未成年人或成年人),尽管每个样本都属于同一对双胞胎。对 Horvath 的皮肤与血液模型(391 个 CpGs)进行额外评估后,在年龄预测误差方面与仅使用五个表观遗传标记的结果相似(MZ 双胞胎和 DZ 双胞胎的 MAE 分别为 ±1.87 和 ±1.99)。
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Exploring legal age estimation using DNA methylation

Minors (subjects under the legal age, established at this study at 18 years) benefit from a series of legal rights created to protect them and guarantee their welfare. However, throughout the world there are many minors who have no way to prove they are underaged, leading to a great interest in predicting legal age with the highest possible accuracy. Current methods, mainly involving X-ray analysis, are highly invasive, so new methods to predict legal age are being studied, such as DNA methylation. To further such studies, we created two age prediction models based on five epigenetic markers: cg21572722 (ELOVL2), cg02228185 (ASPA), cg06639320 (FHL2), cg19283806 (CCDC102B) and cg07082267 (no associated gene), that were analysed in blood samples to determine possible limitations regarding DNA methylation as an effective tool for legal age estimation. A wide age range prediction model was created using a broad set of samples (14–94 years) yielding a mean absolute error (MAE) of ±4.32 years. A second model, the constrained age prediction model, was created using a reduced range of samples (14–25 years) yielding an MAE of ±1.54 years. Both models, in addition to Horvath’s Skin & Blood epigenetic clock, were evaluated using a test set comprising 732 pairs of 18-year-old twins (N=426 monozygotic (MZ) and N=306 dizygotic (DZ) pairs), representing a relevant age of study. Through analysis of the two former age prediction models, we found that constraining the age of the samples forming the training set around the desired age of study significantly reduced the prediction error (from MAE: ±4.07 and ±4.27 years for MZ and DZ twins, respectively; to ±1.31 and ±1.3 years). However, despite low prediction errors, DNA methylation models are still prone to classify same-aged individuals in different categories (minors or adults), despite each sample belonging to the same twin pair. Additional evaluation of Horvath’s Skin & Blood model (391 CpGs) led to similar results in terms of age prediction errors than if using only five epigenetic markers (MAE: ±1.87 and ±1.99 years for MZ and DZ twins, respectively).

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来源期刊
CiteScore
7.50
自引率
32.30%
发文量
132
审稿时长
11.3 weeks
期刊介绍: Forensic Science International: Genetics is the premier journal in the field of Forensic Genetics. This branch of Forensic Science can be defined as the application of genetics to human and non-human material (in the sense of a science with the purpose of studying inherited characteristics for the analysis of inter- and intra-specific variations in populations) for the resolution of legal conflicts. The scope of the journal includes: Forensic applications of human polymorphism. Testing of paternity and other family relationships, immigration cases, typing of biological stains and tissues from criminal casework, identification of human remains by DNA testing methodologies. Description of human polymorphisms of forensic interest, with special interest in DNA polymorphisms. Autosomal DNA polymorphisms, mini- and microsatellites (or short tandem repeats, STRs), single nucleotide polymorphisms (SNPs), X and Y chromosome polymorphisms, mtDNA polymorphisms, and any other type of DNA variation with potential forensic applications. Non-human DNA polymorphisms for crime scene investigation. Population genetics of human polymorphisms of forensic interest. Population data, especially from DNA polymorphisms of interest for the solution of forensic problems. DNA typing methodologies and strategies. Biostatistical methods in forensic genetics. Evaluation of DNA evidence in forensic problems (such as paternity or immigration cases, criminal casework, identification), classical and new statistical approaches. Standards in forensic genetics. Recommendations of regulatory bodies concerning methods, markers, interpretation or strategies or proposals for procedural or technical standards. Quality control. Quality control and quality assurance strategies, proficiency testing for DNA typing methodologies. Criminal DNA databases. Technical, legal and statistical issues. General ethical and legal issues related to forensic genetics.
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