一种新的信号处理方法,通过机器学习实现,用于使用GC-QEPAS系统检测和识别化学战剂模拟物。

IF 1.8 4区 医学 Q3 MEDICINE, LEGAL
Forensic Sciences Research Pub Date : 2025-01-20 eCollection Date: 2025-09-01 DOI:10.1093/fsr/owaf002
Nicola Liberatore, Giorgio Felizzato, Sandro Mengali, Roberto Viola, Francesco Saverio Romolo
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引用次数: 0

摘要

探测和识别化学战剂对应急情景和安全与安保应用构成了挑战。本研究提出了一种使用气相色谱(GC)和石英增强光声光谱(QEPAS)传感器检测六种CWAs兴奋剂的创新分析方法的开发和验证。根据欧洲法医科学研究所网络(ENFSI)和欧盟委员会实施条例(EU) 2021/808的指导方针,对分析方法进行了验证。验证结果证明了GC和QEPAS模块的鲁棒性和可靠性。此外,关于毒理学阈值水平,本研究强调了便携式设备原型的有效性,用于真正的安全和安全应用。此外,还开发了一种机器学习(ML)方法来自动检测和识别CWAs的兴奋剂。工作流程包括两个相互关联的阶段:基于色谱保留时间(RTs)的检测,以及通过一类支持向量机分类器使用红外光谱进行识别。分类器只有在基于RTs获得阳性检测后才会被激活。结果表明,ML模型结合RT分析和IR光谱分类,在CWA检测和识别中具有良好的有效性,在95.5%的置信区间内达到97%的准确率,在99.7%的置信区间内达到99%的准确率;这个结果证明了该模型对于cwa的实际安全性和安全性应用程序的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A novel signal processing approach enabled by machine learning for the detection and identification of chemical warfare agent simulants using a GC-QEPAS system.

A novel signal processing approach enabled by machine learning for the detection and identification of chemical warfare agent simulants using a GC-QEPAS system.

A novel signal processing approach enabled by machine learning for the detection and identification of chemical warfare agent simulants using a GC-QEPAS system.

A novel signal processing approach enabled by machine learning for the detection and identification of chemical warfare agent simulants using a GC-QEPAS system.

The detection and identification of chemical warfare agents (CWAs) present challenges in emergency response scenarios and for safety and security applications. This study presents the development and validation of an innovative analytical method using a gas chromatography (GC) and quartz-enhanced photoacoustic spectroscopy (QEPAS) sensor for the detection of stimulants for six CWAs. Following the guidelines of the European Network of Forensic Science Institute (ENFSI) and the Commission Implementing Regulation (EU) 2021/808, the analytical method was validated. The validation results demonstrated the robustness and reliability of both the GC and QEPAS modules. Moreover, with regard to the toxicological threshold levels, this study highlights the efficacy of a prototype of a portable device for real security and safety applications. Furthermore, a machine learning (ML) approach was developed to automate the detection and identification of CWAs' stimulants. The workflow involved two interconnected stages: detection based on chromatographic retention times (RTs), and identification using infrared (IR) spectra through the one-class support vector machines classifier. The classifier was activated only after obtaining a positive detection based on RTs. The results highlight the ML model's effectiveness in CWA detection and identification, combining RT analysis and IR spectrum classification, achieving 97% accuracy at a 95.5% confidence interval and 99% accuracy at a 99.7% confidence interval; this result demonstrates the model's utility for real-world security and safety applications for CWAs.

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来源期刊
Forensic Sciences Research
Forensic Sciences Research MEDICINE, LEGAL-
CiteScore
3.60
自引率
7.70%
发文量
158
审稿时长
26 weeks
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