广告
化学空间
药理学
药物发现
药品
体外
中枢神经系统
计算生物学
神经科学
计算机科学
医学
化学
生物
生物信息学
生物化学
作者
Travis T. Wager,Ramalakshmi Y. Chandrasekaran,Xinjun Hou,Matthew D. Troutman,Patrick R. Verhoest,Anabella Villalobos,Yvonne Will
摘要
As part of our effort to increase survival of drug candidates and to move our medicinal chemistry design to higher probability space for success in the Neuroscience therapeutic area, we embarked on a detailed study of the property space for a collection of central nervous system (CNS) molecules. We carried out a thorough analysis of properties for 119 marketed CNS drugs and a set of 108 Pfizer CNS candidates. In particular, we focused on understanding the relationships between physicochemical properties, in vitro ADME (absorption, distribution, metabolism, and elimination) attributes, primary pharmacology binding efficiencies, and in vitro safety data for these two sets of compounds. This scholarship provides guidance for the design of CNS molecules in a property space with increased probability of success and may lead to the identification of druglike candidates with favorable safety profiles that can successfully test hypotheses in the clinic.
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