Laboratory of Toxicology, Department of Bioanalysis, Faculty of Pharmaceutical Sciences, Ghent University, Ghent, Belgium.
KERMIT, Department of Data Analysis and Mathematical Modelling, Ghent University, Ghent, Belgium.
Clin Chem. 2022 Jul 3;68(7):906-916. doi: 10.1093/clinchem/hvac027.
Synthetic cannabinoid receptor agonists (SCRAs) are amongst the largest groups of new psychoactive substances (NPS). Their often high activity at the CB1 cannabinoid receptor frequently results in intoxication, imposing serious health risks. Hence, continuous monitoring of these compounds is important, but challenged by the rapid emergence of novel analogues that are missed by traditional targeted detection strategies. We addressed this need by performing an activity-based, universal screening on a large set (n = 968) of serum samples from patients presenting to the emergency department with acute recreational drug or NPS toxicity.
We assessed the performance of an activity-based method in detecting newly circulating SCRAs compared with liquid chromatography coupled to high-resolution mass spectrometry. Additionally, we developed and evaluated machine learning models to reduce the screening workload by automating interpretation of the activity-based screening output.
Activity-based screening delivered outstanding performance, with a sensitivity of 94.6% and a specificity of 98.5%. Furthermore, the developed machine learning models allowed accurate distinction between positive and negative patient samples in an automatic manner, closely matching the manual scoring of samples. The performance of the model depended on the predefined threshold, e.g., at a threshold of 0.055, sensitivity and specificity were both 94.0%.
The activity-based bioassay is an ideal candidate for untargeted screening of novel SCRAs. The combination of this universal screening assay and a machine learning approach for automated sample scoring is a promising complement to conventional analytical methods in clinical practice.
合成大麻素受体激动剂(SCRAs)是新精神活性物质(NPS)中最大的一类。它们经常在 CB1 大麻素受体上表现出高活性,经常导致中毒,带来严重的健康风险。因此,对这些化合物进行持续监测非常重要,但由于新型类似物的快速出现,传统的靶向检测策略无法检测到这些化合物,这一任务面临挑战。我们通过对一组(n=968)来自因急性娱乐性药物或 NPS 毒性而到急诊科就诊的患者的血清样本进行基于活性的通用筛查,解决了这一需求。
我们评估了一种基于活性的方法在检测新出现的 SCRAs 方面的性能,与液相色谱-高分辨率质谱联用进行比较。此外,我们开发并评估了机器学习模型,通过自动化解释基于活性的筛查结果来减少筛查工作量。
基于活性的筛查具有出色的性能,灵敏度为 94.6%,特异性为 98.5%。此外,开发的机器学习模型可以自动准确地区分阳性和阴性患者样本,与手动评分样本非常匹配。模型的性能取决于预设的阈值,例如,在阈值为 0.055 时,灵敏度和特异性均为 94.0%。
基于活性的生物测定是用于新型 SCRAs 非靶向筛查的理想候选物。这种通用筛查测定与用于自动样本评分的机器学习方法相结合,是临床实践中对传统分析方法的有前途的补充。