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Development of a UHPLC method for the detection of organic gunshot residues using artificial neural networks

机译:使用人工神经网络开发用于检测有机枪支残留物的UHPLC方法

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摘要

The introduction of lead and heavy-metal free ammunition to the market challenges the current protocol for gunshot residue (GSR) investigations, which focuses on the inorganic components. Future proofing GSR analysis requires the development and implementation of new methods for the collection and analysis of organic GSR (OGSR) into operational protocols. This paper describes the development and optimisation of an ultra high performance liquid chromatography method for the analysis of 32 compounds potentially present in OGSR. An artificial neural network was applied to predict the retention times of the target analytes for various gradients for rapid determination of optimum separation conditions. The final separation and analysis time for the 32 target analytes was 27 minutes with limits of detection ranging from 0.03 to 0.21 ng. The method was applied to the analysis of smokeless powder and samples collected from the hands of a shooter following the discharge of a firearm. The results demonstrate that the method has the potential for use in cases involving GSR.
机译:向市场引入无铅和重金属免费弹药对目前的枪支残留物(GSR)研究协议提出了挑战,该协议侧重于无机成分。面向未来的GSR分析需要开发和实施新方法,以将有机GSR(OGSR)收集和分析到操作协议中。本文介绍了用于分析OGSR中可能存在的32种化合物的超高效液相色谱方法的开发和优化。应用人工神经网络预测目标分析物在各种梯度下的保留时间,以快速确定最佳分离条件。 32种目标分析物的最终分离和分析时间为27分钟,检出限为0.03至0.21 ng。该方法用于分析无烟粉末和枪支放电后从射击者手中收集的样品。结果表明,该方法在涉及GSR的案例中具有使用潜力。

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