Intelligent framework for cannabis classification using visualization of gas chromatography/mass spectrometry data and transfer learning

Ting-Yu Huang, J. Yu
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Abstract

Introduction: Gas chromatography combined with mass spectrometry (GC/MS) is popular analytical instrumentation for chemical separation and identification. A novel framework for chemical forensics based on the visualization of GC/MS data and transfer learning is proposed. Methods: To evaluate the framework, 228 GC/MS data collected from two standard cannabis varieties, i.e., hemp and marijuana, were utilized. By processing the raw GC/MS data, analytical features, including retention times, mass-to-charge ratios, intensities, and summed ion mass spectra, were successfully transformed into two types of image representations. The GC/MS data transformed images were fed into a pre-trained convolutional neural network (CNN) to develop intelligent classifiers for the sample classification tasks. The effectiveness of several hyper-parameters for improving classification performance was investigated during transfer learning. Results: The proposed analytical workflow could classify hemp and marijuana with 97% accuracy. Furthermore, the transfer-learning-based classifiers were established without requiring big data sets and peak alignment. Discussion: The potential application of the new artificial intelligence (AI)-powered framework for chemical forensics using GC/MS data has been demonstrated. This framework provides unique opportunities for classifying various types of physical evidence using chromatography and mass spectrometry signals.
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使用气相色谱/质谱数据可视化和迁移学习的大麻分类智能框架
简介:气相色谱-质谱联用(GC/MS)是目前流行的用于化学分离和鉴定的分析仪器。提出了一种基于GC/MS数据可视化和迁移学习的化学取证新框架。方法:为了评估该框架,使用了从两个标准大麻品种(即大麻和大麻)收集的228个GC/MS数据。通过处理原始GC/MS数据,分析特征,包括保留时间、质荷比、强度和总离子质谱,成功地转换为两种类型的图像表示。将GC/MS数据转换后的图像输入到预先训练的卷积神经网络(CNN)中,以开发用于样本分类任务的智能分类器。在迁移学习过程中,研究了几个超参数对提高分类性能的有效性。结果:所提出的分析工作流程可以对大麻和大麻进行分类,准确率为97%。此外,在不需要大数据集和峰值对齐的情况下,建立了基于迁移学习的分类器。讨论:新的人工智能(AI)驱动的框架在使用GC/MS数据的化学取证中的潜在应用已经得到证明。该框架为使用色谱和质谱信号对各种类型的物证进行分类提供了独特的机会。
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