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Construction of New Medicines via Game Proof Search

机译:通过博弈证明搜索构建新药

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摘要

The production of any new medicine requires solutions to many planning problems. The most fundamental of these is determining the sequence of chemical reactions necessary to physically create the drug. Surprisingly, these organic syntheses can be modeled as branching paths in a discrete, fully-observable state space, making the construction of new medicines an application of heuristic search. We describe a model of organic chemistry that is amenable to traditional AI techniques from game tree search, regression, and automatic assembly sequencing. We demonstrate the applicability of AND/OR graph search by developing the first chemistry solver to use proof-number search. Finally, we construct a benchmark suite of organic synthesis problems collected from undergraduate organic chemistry exams, and we analyze our solvers performance both on this suite and in recreating the synthetic plan for a multibillion dollar drug.
机译:任何新药的生产都需要解决许多计划问题。这些中最基本的是确定物理上产生药物所必需的化学反应的顺序。令人惊讶的是,这些有机合成可以建模为离散的,完全可观察的状态空间中的分支路径,从而使新药的构建成为启发式搜索的应用。我们描述了一种有机化学模型,该模型适用于传统AI技术(从游戏树搜索,回归和自动装配排序)。通过开发第一个使用证明编号搜索的化学求解器,我们证明了AND / OR图搜索的适用性。最后,我们构建了一个从本科生有机化学考试中收集到的有机合成问题的基准套件,并且我们分析了该套件上以及重新创建数十亿美元药物的合成计划时求解器的性能。

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