根据血液 DNA 中 ELOVL2 的甲基化率,通过统计和机器学习方法开发和比较法医间隔期年龄预测模型

IF 3.2 2区 医学 Q2 GENETICS & HEREDITY
Takayuki Yamagishi, Wataru Sakurai, Ken Watanabe, Kochi Toyomane, Tomoko Akutsu
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引用次数: 0

摘要

在刑事调查中,年龄估计是缩小身份不明捐献者候选人范围的有用信息。在过去十年中,基于 DNA 甲基化生物标志物的各种年龄估计模型已被开发出来用于法医学。然而,由于年龄越大,预测误差越大,导致预测准确性下降,因此许多使用普通最小二乘回归的模型无法生成适当的估计值。在本研究中,为了解决这一问题,我们开发了年龄估计模型,通过两种方法为所有年龄组设定了适当的预测区间:一种是使用量化回归(QR)的统计方法,另一种是使用人工神经网络(ANN)的机器学习方法。QR 和 ANN 模型的开发使用了编码 ELOVL 脂肪酸伸长酶 2 基因启动子的甲基化数据集(n = 1,280 个,年龄 0-91 岁)。通过使用多个测试数据集进行验证,结果表明这两种模型都能随着年龄的增长而扩大预测范围,并且对老年群体的预测正确率很高(90%)。QR 模型和 ANN 模型还能准确预测点年龄。在测试数据集(n = 549)中,ANN 模型的平均绝对误差(MAE)为 5.3 岁,均方根误差(RMSE)为 7.3 岁,与 QR 模型的误差(MAE = 5.6 岁,RMSE = 7.8 岁)相当。使用存储了不同时间段(1-14 年)的血迹样本也证实了它们在个案工作中的适用性,这表明模型对于老化血迹样本具有稳定性。从这些结果来看,建议的模型可以在法医环境中提供更有用、更有效的年龄估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and comparison of forensic interval age prediction models by statistical and machine learning methods based on the methylation rates of ELOVL2 in blood DNA

Age estimation can be useful information for narrowing down candidates of unidentified donors in criminal investigations. Various age estimation models based on DNA methylation biomarkers have been developed for forensic usage in the past decade. However, many of these models using ordinary least squares regression cannot generate an appropriate estimation due to the deterioration in prediction accuracy caused by an increased prediction error in older age groups. In the present study, to address this problem, we developed age estimation models that set an appropriate prediction interval for all age groups by two approaches: a statistical method using quantile regression (QR) and a machine learning method using an artificial neural network (ANN). Methylation datasets (n = 1280, age 0–91 years) of the promoter for the gene encoding ELOVL fatty acid elongase 2 were used to develop the QR and ANN models. By validation using several test datasets, both models were shown to enlarge prediction intervals in accordance with aging and have a high level of correct prediction (>90 %) for older age groups. The QR and ANN models also generated a point age prediction with high accuracy. The ANN model enabled a prediction with a mean absolute error (MAE) of 5.3 years and root mean square error (RMSE) of 7.3 years for the test dataset (n = 549), which were comparable to those of the QR model (MAE = 5.6 years, RMSE = 7.8 years). Their applicability to casework was also confirmed using bloodstain samples stored for various periods of time (1–14 years), indicating the stability of the models for aged bloodstain samples. From these results, it was considered that the proposed models can provide more useful and effective age estimation in forensic settings.

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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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