Gao Niu, Li Junli, Yang Fenglong, Yu Daijing, Huo Yumei, Liu Xiaonan, Ji Zhimin, Xing Yangfeng, Zhang Xiaomeng, Yuan Piao, Liu Jinding, Yan Jiangwei
School of Forensic Medicine, Shanxi Medical University, Jinzhong, Shanxi, China.
Shanxi Key Laboratory of Forensic Medicine, Jinzhong, Shanxi, China.
Electrophoresis. 2025 Apr;46(7-8):424-432. doi: 10.1002/elps.8133. Epub 2025 Mar 18.
Age estimation is important in criminal investigations and forensic practice, and extensive studies have focused on age determination based on DNA methylation (DNAm) and miRNA markers. Interestingly, it has been reported that combining different types of molecular omics data helps build more accurate predictive models. However, few studies have compared the application of combined DNAm and miRNA data to predict age in the same cohort. In this study, a novel multiplex droplet digital PCR (ddPCR) system that allows for the simultaneous detection of age-associated DNAm and miRNA markers, including KLF14, miR-106b-5p, and two reference genes (C-LESS-C1 and RNU6B), was developed. Next, we examined and calculated the methylation levels of KLF14 and relative expression levels of miR-106b-5p in 132 blood samples. The collected data were used to establish age prediction models. Finally, the optimal models were evaluated using bloodstain samples. The results revealed that the random forest (RF) model had a minimum mean absolute deviation (MAD) value of 3.51 years and a maximum R of 0.84 for the validation sets in the combined age prediction models. However, the MAD was 5.66 years and the absolute error ranged from 3.16 to 10.54 years for bloodstain samples. Larger sample sizes and validation datasets are required to confirm these results in future studies. Overall, a stable method for the detection of KLF14, miR-106b-5p, C-LESS-C1, and RNU6B by 4-plex ddPCR was successfully established, and our study suggests that combining DNAm and miRNA data can improve the accuracy of age prediction, which has potential applications in forensic science.
年龄估计在刑事调查和法医实践中很重要,并且广泛的研究集中在基于DNA甲基化(DNAm)和miRNA标记物进行年龄测定。有趣的是,据报道,结合不同类型的分子组学数据有助于构建更准确的预测模型。然而,很少有研究在同一队列中比较联合DNAm和miRNA数据预测年龄的应用。在本研究中,开发了一种新型的多重液滴数字PCR(ddPCR)系统,该系统能够同时检测与年龄相关的DNAm和miRNA标记物,包括KLF14、miR-106b-5p以及两个参考基因(C-LESS-C1和RNU6B)。接下来,我们检测并计算了132份血液样本中KLF14的甲基化水平和miR-106b-5p的相对表达水平。收集的数据用于建立年龄预测模型。最后,使用血迹样本对最佳模型进行评估。结果显示,在联合年龄预测模型中,随机森林(RF)模型对于验证集的最小平均绝对偏差(MAD)值为3.51岁,最大相关系数R为0.84。然而,对于血迹样本,MAD为5.66岁,绝对误差范围为3.16至10.54岁。未来的研究需要更大的样本量和验证数据集来证实这些结果。总体而言,成功建立了一种通过四重ddPCR检测KLF14、miR-106b-5p、C-LESS-C1和RNU6B的稳定方法,并且我们的研究表明,结合DNAm和miRNA数据可以提高年龄预测的准确性,这在法医学中有潜在的应用。