Department of Chemistry, University of Alberta, Edmonton, Alberta, Canada.
Trace Evidence Services, Royal Canadian Mounted Police, Edmonton, Alberta, Canada.
Forensic Sci Int. 2014 Feb;235:24-31. doi: 10.1016/j.forsciint.2013.11.014. Epub 2013 Dec 16.
Detection and identification of ignitable liquids (ILs) in arson debris is a critical part of arson investigations. The challenge of this task is due to the complex and unpredictable chemical nature of arson debris, which also contains pyrolysis products from the fire. ILs, most commonly gasoline, are complex chemical mixtures containing hundreds of compounds that will be consumed or otherwise weathered by the fire to varying extents depending on factors such as temperature, air flow, the surface on which IL was placed, etc. While methods such as ASTM E-1618 are effective, data interpretation can be a costly bottleneck in the analytical process for some laboratories. In this study, we address this issue through the application of chemometric tools. Prior to the application of chemometric tools such as PLS-DA and SIMCA, issues of chromatographic alignment and variable selection need to be addressed. Here we use an alignment strategy based on a ladder consisting of perdeuterated n-alkanes. Variable selection and model optimization was automated using a hybrid backward elimination (BE) and forward selection (FS) approach guided by the cluster resolution (CR) metric. In this work, we demonstrate the automated construction, optimization, and application of chemometric tools to casework arson data. The resulting PLS-DA and SIMCA classification models, trained with 165 training set samples, have provided classification of 55 validation set samples based on gasoline content with 100% specificity and sensitivity.
在纵火案件调查中,检测和识别易燃液体(ILs)是至关重要的环节。这项任务的难点在于纵火残留物的化学性质复杂且难以预测,其中还包含了火灾产生的热解产物。IL 通常是汽油,是一种复杂的化学混合物,包含数百种化合物,这些化合物会因温度、气流、IL 放置的表面等因素的不同而在不同程度上被消耗或风化。虽然 ASTM E-1618 等方法有效,但对于一些实验室来说,数据分析可能会成为一个昂贵的瓶颈,数据解释是其中的一个关键步骤。在本研究中,我们通过应用化学计量学工具来解决这个问题。在应用 PLS-DA 和 SIMCA 等化学计量学工具之前,需要解决色谱对齐和变量选择的问题。在这里,我们使用一种基于全氘化正构烷烃梯级的对齐策略。变量选择和模型优化是通过使用聚类分辨率(CR)指标指导的混合向后消除(BE)和向前选择(FS)方法自动完成的。在这项工作中,我们展示了化学计量学工具在实际纵火案件数据中的自动化构建、优化和应用。使用 165 个训练集样本训练得到的 PLS-DA 和 SIMCA 分类模型,对 55 个验证集样本的汽油含量进行了分类,具有 100%的特异性和敏感性。