Forensic Postmortem Interval Estimation from Skeletal Muscle Tissue: A Lipidomics Approach

Natalie R. Langley, P. Wood, Patrick Herling, D. Steadman
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引用次数: 6

Abstract

Lipidomic analyses of human skeletal muscle tissue were conducted to detect biomarkers of time-dependent postmortem degradation and to test the predictive capacity of lipids in human skeletal muscle cell membranes. High-resolution mass spectrometry analytical platforms were used to isolate phospholipids in muscle cell membranes that are specific to the corpse tissues and not invading microbes, thus eliminating potential noise from the surrounding microenvironment. The most consistently extracted cell membrane phospholipids were phosphatidylglycerol (PG) 34:0 and phosphatidylethanolamine (PtdE) 36:4. The actual accumulated degree days of all validation samples fell within the 95% prediction interval limits for the simple linear regression models with PtdE 36:4 and PG 34:0, though the prediction intervals for the latter were wider. The analysis requires only a small amount of tissue, is less subjective than visual methods for estimating postmortem interval, and is robust to drastic fluctuations in temperature. Sophisticated quantitative methods for estimating PMI from biomolecules unique to the corpse, and the human microbiome may provide a means of overcoming the geographic limitations of methods based on subjective visual observations of decomposition changes.
从骨骼肌组织估计法医死后间隔:脂质组学方法
对人类骨骼肌组织进行脂质组学分析,以检测时间依赖性死后降解的生物标志物,并测试人类骨骼肌细胞膜中脂质的预测能力。高分辨率质谱分析平台用于分离肌肉细胞膜中的磷脂,这些磷脂是尸体组织特有的,而不是入侵微生物,从而消除了周围微环境的潜在噪音。最一致的细胞膜磷脂为磷脂酰甘油(PG) 34:0和磷脂酰乙醇胺(PtdE) 36:4。对于PtdE为36:4和PG为34:0的简单线性回归模型,所有验证样本的实际累积度均落在95%的预测区间范围内,但后者的预测区间更宽。这种分析只需要少量的组织,与视觉方法相比,在估计死后时间间隔方面不那么主观,而且对温度的剧烈波动也很稳定。从尸体独特的生物分子和人类微生物组中估计PMI的复杂定量方法可能提供一种克服基于主观视觉观察分解变化的方法的地理限制的手段。
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