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From binary presumptive assays to probabilistic assessments: Differentiation of shooters from non-shooters using IMS, OGSR, neural networks, and likelihood ratios

机译:从二元假设分析到概率评估:使用IMS,OGSR,神经网络和似然比将射击者与非射击者区分开

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Screening tests are used in forensic science for field testing and directing laboratory analysis of physical evidence. These tests are often binary in that the data produced is interpreted as yeso or present/absent. The utility of screening assays can be improved by evaluating a relevant background population and incorporating prior knowledge to refine the decision boundary. This paper describes the results of using ion mobility spectrometry (IMS) and hand swab samples collected from 73 individuals to differentiate shooters from non-shooters by targeting organic constituents of firearms discharge residues. Each individual completed a questionnaire helpful in analyzing positive results when they did occur. Pattern matching was undertaken using neural networks, and decision thresholds were established using likelihood ratios derived from the population study. This approach significantly reduced the background positive rates compared to an arbitrary decision threshold technique. This methodology could be extended to other pattern-recognition algorithms used with instrumental data. This paper also reports the largest population study to date focused on the organic residues of firearms discharge. The proportion of positives found in the population sample were less than 5%; when a likelihood ratio of 10: 1 (shooterot shooter) was used, the frequency of positives fell below 2%. The results suggest that background levels of organic gunshot residue will not be a significant analytic concern for assay development. (C) 2016 Elsevier Ireland Ltd. All rights reserved.
机译:筛查测试在法医科学中用于现场测试和指导实验室对物理证据的分析。这些测试通常是二进制的,因为生成的数据被解释为是/否或存在/不存在。通过评估相关的背景人群并结合先验知识来完善决策边界,可以提高筛选测定的效用。本文介绍了使用离子迁移谱(IMS)和从73个个体收集的拭子样品通过针对枪支排放残留物的有机成分来区分射击者和非射击者的结果。每个人都填写了一份调查表,有助于分析确实发生的积极结果。使用神经网络进行模式匹配,并使用从总体研究中得出的似然比确定决策阈值。与任意决策阈值技术相比,该方法显着降低了背景阳性率。该方法可以扩展到与工具数据一起使用的其他模式识别算法。本文还报告了迄今为止最大的人口研究,重点是枪支排放的有机残留物。总体样本中发现阳性的比例低于5%;当使用10:1的似然比(射击者/非射击者)时,阳性率降至2%以下。结果表明,有机枪支残留物的背景水平不会成为分析开发的重要分析关注点。 (C)2016 Elsevier Ireland Ltd.保留所有权利。

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