Metabonomics Analysis of Brain Stem Tissue in Rats with Primary Brain Stem Injury Caused Death.

Qin Su, Qian-Ling Chen, Wei-Bin Wu, Qing-Qing Xiang, Cheng-Liang Yang, Dong-Fang Qiao, Zhi-Gang Li
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Abstract

Objectives: To explore the potential biomarkers for the diagnosis of primary brain stem injury (PBSI) by using metabonomics method to observe the changes of metabolites in rats with PBSI caused death.

Methods: PBSI, non-brain stem brain injury and decapitation rat models were established, and metabolic maps of brain stem were obtained by LC-MS metabonomics method and annotated to the HMDB database. Partial least square-discriminant analysis (PLS-DA) and random forest methods were used to screen potential biomarkers associated with PBSI diagnosis.

Results: Eighty-six potential metabolic markers associated with PBSI were screened by PLS-DA. They were modeled and predicted by random forest algorithm with an accuracy rate of 83.3%. The 818 metabolic markers annotated to HMDB database were used for random forest modeling and prediction, and the accuracy rate was 88.9%. According to the importance in the identification of cause of death, the most important metabolic markers that were significantly up-regulated in PBSI group were HMDB0038126 (genipinic acid, GA), HMDB0013272 (N-lauroylglycine), HMDB0005199 [(R)-salsolinol] and HMDB0013645 (N,N-dimethylsphingosine).

Conclusions: GA, N-lauroylglycine, (R)-salsolinol and N,N-dimethylsphingosine are expected to be important metabolite indicators in the diagnosis of PBSI caused death, thus providing clues for forensic medicine practice.

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原发性脑干损伤致死大鼠脑干组织的代谢组学分析。
目的:应用代谢组学方法观察原发性脑干损伤死亡大鼠代谢产物的变化,探讨诊断原发性脑损伤的潜在生物标志物。方法:建立PBSI、非脑干脑损伤和斩首大鼠模型,采用LC-MS代谢组学方法获得脑干代谢图谱,并在HMDB数据库中进行注释。偏最小二乘判别分析(PLS-DA)和随机森林方法用于筛选与PBSI诊断相关的潜在生物标志物。结果:PLS-DA筛选出86个与PBSI相关的潜在代谢标志物。采用随机森林算法对其进行建模和预测,准确率为83.3%。HMDB数据库中注释的818个代谢标志物用于随机森林建模和预测的准确率为88.9%。根据其在死因识别中的重要性,在PBSI组中显著上调的最重要的代谢标志物是HMDB0038126(genipinic acid,GA)、HMDB0013272(N-月桂酰甘氨酸)、HMDB 0005199[(R)-沙索醇]和HMDB0013645(N,N-二甲基鞘氨醇),从而为法医学实践提供线索。
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法医学杂志
法医学杂志 Medicine-Pathology and Forensic Medicine
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Advances in the Study of Cerebrocardiac Syndrome and Its Forensic Significance.
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