抗精神病药
化学
多巴胺受体D2
受体
药理学
5-羟色胺受体
非定型抗精神病薬
神经递质系统
体内
安全概况
血清素
抗精神病薬
精神分裂症(面向对象编程)
心理学
生物化学
不利影响
精神科
医学
生物
生物技术
作者
Piotr Stępnicki,Katarzyna M. Targowska‐Duda,Antón L. Martínez,Agata Zięba,Olga Wronikowska‐Denysiuk,Martyna Z. Wróbel,Agata Bartyzel,Alicja Trzpil,Tomasz M. Wróbel,Andrzej Chodkowski,Karolina Mirecka,Tadeusz Karcz,Katarzyna Szczepańska,Marı́a Isabel Loza,Barbara Budzyńska,Jadwiga Turło,Jadwiga Handzlik,Emilia Fornal,Ewa Poleszak,Mariàn Castro,Agnieszka A. Kaczor
标识
DOI:10.1016/j.ejmech.2023.115285
摘要
Schizophrenia is a mental disorder with a complex pathomechanism involving many neurotransmitter systems. Among the currently used antipsychotics, classical drugs acting as dopamine D2 receptor antagonists, and drugs of a newer generation, the so-called atypical antipsychotics, can be distinguished. The latter are characterized by a multi-target profile of action, affecting, apart from the D2 receptor, also serotonin receptors, in particular 5-HT2A and 5-HT1A. Such profile of action is considered superior in terms of both efficacy in treating symptoms and safety. In the search for new potential antipsychotics of such atypical receptor profile, an attempt was made to optimize the arylpiperazine based virtual hit, D2AAK3, which in previous studies displayed an affinity for D2, 5-HT1A and 5-HT2A receptors, and showed antipsychotic activity in vivo. In this work, we present the design of D2AAK3 derivatives (1–17), their synthesis, and structural and pharmacological evaluation. The obtained compounds show affinities for the receptors of interest and their efficacy as antagonists/agonists towards them was confirmed in functional assays. For the selected compound 11, detailed structural studies were carried out using molecular modeling and X-ray methods. Additionally, ADMET parameters and in vivo antipsychotic activity, as well as influence on memory and anxiety processes were evaluated in mice, which indicated good therapeutic potential and safety profile of the studied compound.
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