[Estimating Postmortem Interval by Protein Chip Detection Technology Combined with Multidimensional Statistics]

Fa Yi Xue Za Zhi. 2020 Oct;36(5):660-665. doi: 10.12116/j.issn.1004-5619.2020.05.010.
[Article in Chinese]

Abstract

Objective To obtain the protein expression profile of rat liver tissue after death by the 2100 bioanalyzer combined with protein chip, and infer the relationship between protein expression profile and postmortem interval. Methods Rats were killed by abdominal anesthesia and placed at 16 ℃. Water-soluble proteins in liver tissues were extracted at 14 time points after death. The expression profile data of proteins with relative molecular weight of 14 000-230 000 were obtained using protein chip, and principal component analysis (PCA), partial least squares-discriminant analysis (PLS-DA) and Fisher discriminant were used to analyze the data. Results According to the changes of protein expression profile, the postmortem interval was divided into group A (0 d), group B (1-9 d), group C (12-30 d) according to the result of PLS-DA. The prediction accuracy of the training set and test set of the model were all 100.0%, and the internal cross-validation of the training set was 100.0% according to Fisher discriminant. The Fisher discriminant model at each time point of group B and C was established to narrow the time window of postmortem interval estimation. The prediction accuracy of the training set and test set were all 100.0%, and the internal cross-validation accuracy of the training set was 100.0% in group B. The prediction accuracy of the training set and test set were respectively 95.2% and 78.6% in group C, and the internal cross-validation of the training set was 88.1%. Conclusion Protein chip detection technology can quickly and easily obtain the expression profile of water-soluble proteins of rat liver tissue with a relative molecular weight of 14 000-230 000 at different time points after death. PLS-DA and Fisher discriminant models are established to classify and predict the postmortem interval, in order to provide new ideas and methods for postmortem interval estimation.

题目: 蛋白芯片检测技术结合多维统计推断死亡时间.

摘要: 目的 利用2100生物分析仪结合蛋白芯片获取死后大鼠肝组织蛋白质表达谱,推测其与死亡时间的关系。 方法 大鼠腹腔麻醉致死后置于16 ℃环境中,提取死后14个时间点肝组织中的水溶性蛋白质,使用蛋白芯片获取相对分子质量在14 000~230 000的蛋白质表达谱数据,并利用主成分分析(principal component analysis,PCA)、偏最小二乘-判别分析(partial least squares-discriminant analysis,PLS-DA)、Fisher判别对数据进行分析。 结果 根据蛋白质表达谱的变化和PLS-DA结果将死亡时间分为A组(0 d)、B组(1~9 d)、C组(12~30 d)。经Fisher判别,模型的训练集及测试集的预测准确率均为100.0%,训练集的内部交叉验证准确率为100.0%。通过建立B、C组各时间点的Fisher判别模型缩小推断死亡时间窗口,B组中训练集及测试集的预测准确率均为100.0%,训练集的内部交叉验证准确率为100.0%;C组中训练集及测试集的预测准确率分别为95.2%、78.6%,训练集的内部交叉验证准确率为88.1%。 结论 蛋白芯片检测技术可以快捷简便地获取大鼠死后不同时间点肝组织相对分子质量在14 000~230 000的水溶性蛋白质表达谱,建立PLS-DA及Fisher判别模型对死亡时间进行分类预测判断,有望为死亡时间推断提供新的思路和方法。.

关键词: 法医病理学;芯片分析技术;蛋白质类;死亡时间;肝;大鼠.

Keywords: forensic pathology; microchip analytical procedures; proteins; postmortem interval; liver; rats.

MeSH terms

  • Animals
  • Autopsy
  • Discriminant Analysis
  • Least-Squares Analysis
  • Postmortem Changes
  • Protein Array Analysis*
  • Rats
  • Technology*