Comprehensive Prediction of Molecular Recognition in a Combinatorial Chemical Space Using Machine Learning

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Alexander T. Taguchi, James Boyd, Chris W. Diehnelt, Joseph B. Legutki, Zhan-Gong Zhao, Neal W. Woodbury*
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引用次数: 7

Abstract

In combinatorial chemical approaches, optimizing the composition and arrangement of building blocks toward a particular function has been done using a number of methods, including high throughput molecular screening, molecular evolution, and computational prescreening. Here, a different approach is considered that uses sparse measurements of library molecules as the input to a machine learning algorithm which generates a comprehensive, quantitative relationship between covalent molecular structure and function that can then be used to predict the function of any molecule in the possible combinatorial space. To test the feasibility of the approach, a defined combinatorial chemical space consisting of ~1012 possible linear combinations of 16 different amino acids was used. The binding of a very sparse, but nearly random, sampling of this amino acid sequence space to 9 different protein targets is measured and used to generate a general relationship between peptide sequence and binding for each target. Surprisingly, measuring as little as a few hundred to a few thousand of the ~1012 possible molecules provides sufficient training to be highly predictive of the binding of the remaining molecules in the combinatorial space. Furthermore, measuring only amino acid sequences that bind weakly to a target allows the accurate prediction of which sequences will bind 10–100 times more strongly. Thus, the molecular recognition information contained in a tiny fraction of molecules in this combinatorial space is sufficient to characterize any set of molecules randomly selected from the entire space, a fact that potentially has significant implications for the design of new chemical function using combinatorial chemical libraries.

Abstract Image

利用机器学习综合预测组合化学空间中的分子识别
在组合化学方法中,利用高通量分子筛选、分子进化和计算预筛选等多种方法来优化构建块的组成和排列,以达到特定的功能。在这里,考虑了一种不同的方法,使用库分子的稀疏测量作为机器学习算法的输入,该算法生成共价分子结构和功能之间的全面定量关系,然后可用于预测可能组合空间中任何分子的功能。为了测试该方法的可行性,使用了一个定义的组合化学空间,由16种不同氨基酸的~1012种可能的线性组合组成。一个非常稀疏但几乎随机的氨基酸序列空间与9个不同蛋白质靶点的结合被测量,并用于生成肽序列与每个靶点的结合之间的一般关系。令人惊讶的是,只测量大约1012个可能分子中的几百到几千个,就足以高度预测组合空间中剩余分子的结合情况。此外,仅测量与靶标结合较弱的氨基酸序列,就可以准确预测哪些序列与靶标结合的强度要高10-100倍。因此,在这个组合空间中包含的一小部分分子的分子识别信息足以表征从整个空间中随机选择的任何一组分子,这一事实可能对使用组合化学文库设计新的化学功能具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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