MDMA公司
灵霉素
氟西汀
氯胺酮
药理学
致幻剂
药品
即刻早期基因
神经科学
心理学
医学
血清素
化学
基因表达
内科学
基因
生物化学
受体
作者
Farid Aboharb,Pasha A. Davoudian,Ling-Xiao Shao,Clara Liao,Gillian N Rzepka,Cassandra Wojtasiewicz,Mark Dibbs,Jocelyne Rondeau,Alexander M. Sherwood,Alfred P. Kaye,Alex C. Kwan
标识
DOI:10.1101/2024.05.23.590306
摘要
Psilocybin, ketamine, and MDMA are psychoactive compounds that exert behavioral effects with distinguishable but also overlapping features. The growing interest in using these compounds as therapeutics necessitates preclinical assays that can accurately screen psychedelics and related analogs. We posit that a promising approach may be to measure drug action on markers of neural plasticity in native brain tissues. We therefore developed a pipeline for drug classification using light sheet fluorescence microscopy of immediate early gene expression at cellular resolution followed by machine learning. We tested male and female mice with a panel of drugs, including psilocybin, ketamine, 5-MeO-DMT, 6-fluoro-DET, MDMA, acute fluoxetine, chronic fluoxetine, and vehicle. In one-versus-rest classification, the exact drug was identified with 66% accuracy, significantly above the chance level of 12.5%. In one-versus-one classifications, psilocybin was discriminated from 5-MeO-DMT, ketamine, MDMA, or acute fluoxetine with >95% accuracy. We used Shapley additive explanation to pinpoint the brain regions driving the machine learning predictions. Our results support a novel approach for screening psychoactive drugs with psychedelic properties.
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