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Predicting opioid receptor binding affinity of pharmacologically unclassified designer substances using molecular docking

机译:使用分子对接预测药理学上未分类的设计物质的阿片受体结合亲和力

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摘要

Opioids represent a highly-abused and highly potent class of drugs that have become a significant threat to public safety. Often there are little to no pharmacological and toxicological data available for new, illicitly used and abused opioids, and this has resulted in a growing number of serious adverse events, including death. The large influx of new synthetic opioids permeating the street-drug market, including fentanyl and fentanyl analogs, has generated the need for a fast and effective method to evaluate the risk a substance poses to public safety. In response, the US FDA’s Center for Drug Evaluation and Research (CDER) has developed a rapidly-deployable, multi-pronged computational approach to assess a drug’s risk to public health. A key component of this approach is a molecular docking model to predict the binding affinity of biologically uncharacterized fentanyl analogs to the mu opioid receptor. The model was validated by correlating the docking scores of structurally diverse opioids with experimentally determined binding affinities. Fentanyl derivatives with sub-nanomolar binding affinity at the mu receptor (e.g. carfentanil and lofentanil) have significantly lower binding scores, while less potent fentanyl derivatives have increased binding scores. The strong correlation between the binding scores and the experimental binding affinities suggests that this approach can be used to accurately predict the binding strength of newly identified fentanyl analogs at the mu receptor in the absence of in vitro data and may assist in the temporary scheduling of those substances that pose a risk to public safety.
机译:阿片类药物代表高度滥用和高度有效的一类药物,已成为对公共安全的重大威胁。对于新的,非法使用和滥用的阿片类药物,几乎没有药理学或毒理学数据,这已导致越来越多的严重不良事件,包括死亡。大量涌入街头药品市场的新型合成阿片类药物,包括芬太尼和芬太尼类似物,已经产生了对一种快速有效方法评估该物质对公众安全构成风险的需求。作为回应,美国FDA药物评估和研究中心(CDER)开发了一种可快速部署,多管齐下的计算方法,以评估药物对公共健康的风险。该方法的关键组成部分是分子对接模型,用于预测生物学上未表征的芬太尼类似物与μ阿片受体的结合亲和力。通过将结构上不同的阿片类药物的对接得分与实验确定的结合亲和力相关联来验证模型。在mu受体上具有亚纳摩尔摩尔结合亲和力的芬太尼衍生物(例如卡芬太尼和洛芬太尼)具有较低的结合得分,而效力较弱的芬太尼衍生物具有更高的结合得分。结合得分和实验结合亲和力之间的强相关性表明,该方法可用于在没有体外数据的情况下准确预测新鉴定出的芬太尼类似物在mu受体处的结合强度,并可能有助于临时调度那些危害公共安全的物质。

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