Division of Systems Biology, National Center for Toxicological Research, US Food and Drug Administration, 3900 NCTR Rd., Jefferson, AR, 72079, USA.
Arch Toxicol. 2020 Apr;94(4):1215-1227. doi: 10.1007/s00204-020-02684-8. Epub 2020 Feb 27.
Addiction is a complex behavioral phenomenon in which naturally occurring or synthetic chemicals modulate the response of the reward system through their binding to a variety of neuroreceptors, resulting in compulsive substance-seeking and use despite harmful consequences to the individual. Among these, the opioid receptor (OR) family and more specifically, the mu-opioid receptor (MOR) subtype plays a critical role in the addiction to powerful prescription and illicit drugs such as hydrocodone, oxycodone, fentanyl, cocaine, and methamphetamine (Contet et al. in Curr Opin Neurobiol 14(3):370-378, 2004). Conversely, agonists binding to kappa (KOR) and antagonists binding to delta opioid receptors (DOR) have been reported to induce negative reinforcing effects. As more than 700 new psychoactive substances were illegally sold between 2009 and 2016 (DEA-DCT-DIR-032-18), most of them lacking basic toxicological and pharmacological profiles, molecular modeling approaches that could quickly and reliably fill the gaps in our knowledge would be highly desirable tools for determining the effects of these synthetics. Here, we report accurate 3D-spectrometric data-activity relationship classification models for large and diverse datasets of MOR, KOR and DOR binders with areas under the receiver operating characteristic curve for the "blind" prediction sets exceeding 0.88. Structural features associated with (selective) binding to MOR, KOR and/or DOR were identified. These models could assist regulatory agencies in evaluating the health risks associated with the use of unprofiled substances as well as to help the pharmaceutical industry in its search for new drugs to combat addiction.
成瘾是一种复杂的行为现象,其中天然存在或合成的化学物质通过与各种神经受体结合来调节奖励系统的反应,导致尽管对个体有危害,但仍会强迫性地寻求和使用物质。在这些物质中,阿片受体(OR)家族,更具体地说是μ-阿片受体(MOR)亚型,在成瘾于强力处方和非法药物如氢可酮、羟考酮、芬太尼、可卡因和甲基苯丙胺方面起着关键作用(Contet 等人,《当代神经生物学观点》14(3):370-378, 2004)。相反,与κ(KOR)结合的激动剂和与δ阿片受体(DOR)结合的拮抗剂已被报道具有负强化作用。由于 2009 年至 2016 年间有超过 700 种新精神活性物质被非法销售(DEA-DCT-DIR-032-18),其中大多数缺乏基本的毒理学和药理学特征,因此能够快速可靠地填补我们知识空白的分子建模方法将是确定这些合成物影响的理想工具。在这里,我们报告了用于 MOR、KOR 和 DOR 配体的大型和多样化数据集的准确 3D 光谱数据-活性关系分类模型,对于“盲”预测集,接收者操作特征曲线下的面积超过 0.88。确定了与(选择性)结合 MOR、KOR 和/或 DOR 相关的结构特征。这些模型可以帮助监管机构评估与使用未描述物质相关的健康风险,并帮助制药行业寻找新的药物来对抗成瘾。