Makara Gergely M, Kovács László, Szabó István, Pőcze Gábor
ChemPass Ltd., 7 Záhony St, Budapest 1031, Hungary.
ACS Med Chem Lett. 2021 Jan 7;12(2):185-194. doi: 10.1021/acsmedchemlett.0c00540. eCollection 2021 Feb 11.
Molecular design is of utmost importance in lead optimization programs ultimately determining the fate of the project and the speed to reach preclinical stage. Newly designed lead analogues or new chemotypes must successfully address the challenges in the multidimensional optimization process throughout several optimization cycles. The speed, quality, and creativity of the designs can have a major impact on the cycle time, the number of required cycles, and the number of compounds needed to be synthesized and evaluated that in combination affect the overall timeline and cost of the lead optimization phase. Recently, a new concept, generative design with deep learning, has become popular for de novo design of project relevant analogue sets. We have developed a de novo design technology called "derivatization design" that applies artificial-intelligence-assisted forward synthesis for the generation of near neighbor lead analogues as well as scaffold variations. The several attractive features of the methodology include synthetic feasibility, reagent availability and cost data associated with each new molecule; thus, detailed synthetic assessment is automatically generated during the design. As a result, these practically important data types can become an early part of the ranking and selection process for cycle time reduction. The power of derivatization design is demonstrated in a simple design study of DDR1 inhibitors and comparison of the produced molecules to a recently published data set obtained with deep generative design.
在先导化合物优化项目中,分子设计至关重要,它最终决定项目的成败以及进入临床前阶段的速度。新设计的先导类似物或新的化学类型必须在多个优化周期中成功应对多维优化过程中的挑战。设计的速度、质量和创造性会对周期时间、所需周期的数量以及需要合成和评估的化合物数量产生重大影响,这些因素共同影响先导化合物优化阶段的总体时间表和成本。最近,一种新的概念——深度学习生成式设计,在从头设计与项目相关的类似物集方面变得流行起来。我们开发了一种名为“衍生化设计”的从头设计技术,该技术应用人工智能辅助的正向合成来生成近邻先导类似物以及骨架变体。该方法的几个吸引人的特点包括合成可行性、试剂可用性以及与每个新分子相关的成本数据;因此,在设计过程中会自动生成详细的合成评估。结果,这些具有实际重要性的数据类型可以成为缩短周期时间的排名和选择过程的早期部分。衍生化设计的威力在DDR1抑制剂的一个简单设计研究中得到了证明,并将所生成的分子与最近通过深度生成设计获得的一个数据集进行了比较。