School of Forensic Medicine, Shanxi Medical University, 98 University Street, Yuci District, Jinzhong 030606, Shanxi, P.R. China.
Department of Biomedical Sciences, College of Osteopathic Medicine, New York Institute of Technology, Old Westbury, NY 11568-8000, USA.
Forensic Sci Int Genet. 2022 Jul;59:102722. doi: 10.1016/j.fsigen.2022.102722. Epub 2022 May 13.
Accurate estimation of the wound age is critical in investigating intentional injury cases. Establishing objective and reliable biological indicators to estimate wound age is still a significant challenge in forensic medicine. Therefore, exploring an objective, flexible, and reliable index system selection method for wound age estimation based on next-generation sequencing gene expression profiles is necessary. We randomly divided 63 Sprague-Dawley rats into a control group, seven experimental groups (n = 7 per group), and an external validation group. After rats in the experimental and external validation groups suffered contusions, we sacrificed them at 4, 8, 12, 16, 20, 24, and 48 h after contusion, respectively. We selected 54 genes with the most significant changes between adjacent time points after contusion and defined set A. The Hub genes with time-related expression patterns were set B, C, and D through next-generation sequencing and bioinformatics analysis. Four different machine learning classification algorithms, including logistic regression, support vector machine, multi-layer perceptron, and random forest were used to compare and verify the efficiency of four index systems to estimate the wound age. The best combination for wound age estimation is the Genes ascribed to set A combined with the random forest classification algorithm. The accuracy of external verification was 85.71%. Only one rat was incorrectly classified (4 h post-injury incorrectly classified as 8 h). This study demonstrated the potential advantage of the index system selection based on next-generation sequencing and bioinformatics analysis for wound age estimation.
准确估计伤口年龄对于调查故意伤害案件至关重要。建立客观可靠的生物学指标来估计伤口年龄仍然是法医学面临的重大挑战。因此,探索一种基于下一代测序基因表达谱的客观、灵活、可靠的伤口年龄估计指标体系选择方法是必要的。我们将 63 只 Sprague-Dawley 大鼠随机分为对照组、7 个实验组(每组 n=7)和外部验证组。实验组和外部验证组大鼠挫伤后,分别在挫伤后 4、8、12、16、20、24 和 48 小时处死。我们选择了 54 个在挫伤后相邻时间点之间变化最显著的基因,并将其定义为集合 A。通过下一代测序和生物信息学分析,我们选择了具有时间相关表达模式的 Hub 基因,将其定义为集合 B、C 和 D。我们使用了 4 种不同的机器学习分类算法,包括逻辑回归、支持向量机、多层感知机和随机森林,比较和验证了这 4 种指标体系估计伤口年龄的效率。估计伤口年龄的最佳组合是集合 A 中的基因与随机森林分类算法相结合。外部验证的准确率为 85.71%。只有一只大鼠被错误分类(4 小时受伤错误分类为 8 小时)。这项研究表明,基于下一代测序和生物信息学分析的指标体系选择在伤口年龄估计方面具有潜在优势。