Department of Forensic Science, Central Police University, Taoyuan City, Taiwan (ROC); Forensic Science Center, Taoyuan Police Department, Taoyuan City, Taiwan (ROC).
Department of Forensic Science, Central Police University, Taoyuan City, Taiwan (ROC).
Forensic Sci Int. 2024 Aug;361:112134. doi: 10.1016/j.forsciint.2024.112134. Epub 2024 Jul 6.
Synthetic cathinones are some of the most prevalent new psychoactive substances (NPSs) globally, with alpha-pyrrolidinoisohexanophenone (α-PiHP) being particularly noted for its widespread use in the United States, Europe, and Taiwan. However, the analysis of isomeric NPSs such as α-PiHP and alpha-pyrrolidinohexiophenone (α-PHP) is challenging owing to similarities in their retention times and mass spectra. This study proposes a dual strategy based on in vitro metabolic experiments and machine learning-based classification modelling for differentiating α-PHP and α-PiHP in urine samples: (1) in vitro metabolic experiments using pooled human liver microsomes and liquid chromatography tandem quadrupole time-of-flight mass spectrometry (LC-QTOF-MS) were conducted to identify the key metabolites of α-PHP and α-PiHP from the high-resolution MS/MS spectra. After 5 h incubation, 71.4 % of α-PHP and 64.7 % of α-PiHP remained unmetabolised. Nine phase I metabolites were identified for each compound, including primary β-ketone reduction (M1) metabolites. Comparing the metabolites and retention times confirmed the efficacy of in vitro metabolic experiments for differentiating NPS isomers. Subsequently, analysis of seven real urine samples revealed the presence for various metabolites, including M1, that could be used as suitable detection markers at low concentrations. The aliphatic hydroxylation (M2) metabolite peak counts and metabolite retention times were used to determine α-PiHP use. (2) Classification models for the parent compounds and M1 metabolites were developed using principal component analysis for feature extraction and logistic regression for classification. The training and test sets were devised from the spectra of standard samples or supernatants from in vitro metabolism experiments with different incubation times. Both models had classification accuracies of 100 % and accurately identified α-PiHP and its M1 metabolite in seven real urine samples. The proposed methodology effectively distinguished between such isomers and confirmed their presence at low concentrations. Overall, this study introduces a novel concept that addresses the complexities in analysing isomeric NPSs and suggests a path towards enhancing the accuracy and reliability of NPS detection.
合成卡西酮是全球最普遍的新型精神活性物质(NPS)之一,其中α-吡咯烷异己酮(α-PiHP)尤为突出,因其在美国、欧洲和台湾广泛使用而备受关注。然而,由于 α-PiHP 和 α-吡咯烷己基酮(α-PHP)等同分异构体在保留时间和质谱方面存在相似性,因此对其进行分析具有一定的挑战性。本研究提出了一种基于体外代谢实验和基于机器学习的分类建模的双重策略,用于区分尿液样品中的 α-PHP 和 α-PiHP:(1)使用人肝微粒体和液相色谱串联四极杆飞行时间质谱(LC-QTOF-MS)进行体外代谢实验,从高分辨 MS/MS 谱中鉴定 α-PHP 和 α-PiHP 的关键代谢物。孵育 5 小时后,α-PHP 有 71.4%和 α-PiHP 有 64.7%未发生代谢。两种化合物均鉴定出 9 种 I 相代谢物,包括主要的β-酮还原(M1)代谢物。通过比较代谢物和保留时间,证实了体外代谢实验在区分 NPS 异构体方面的有效性。随后,对 7 份真实尿液样本进行分析,发现存在多种代谢物,包括 M1,可作为低浓度下的合适检测标志物。利用 M2 代谢物峰计数和代谢物保留时间来确定 α-PiHP 的使用情况。(2)采用主成分分析进行特征提取,逻辑回归进行分类,建立母体化合物和 M1 代谢物的分类模型。训练集和测试集由标准样品的光谱或不同孵育时间的体外代谢实验上清液的光谱设计。两种模型的分类准确率均为 100%,准确识别了 7 份真实尿液样本中的 α-PiHP 和其 M1 代谢物。所提出的方法能够有效地区分这些同分异构体,并证实它们在低浓度下的存在。总的来说,本研究提出了一种新的概念,解决了分析同分异构体 NPS 的复杂性,并为提高 NPS 检测的准确性和可靠性提供了一种方法。