A new simplex machine learning approach for analysis of structural chemical diversification processes. Comparison with other molecular modeling methods.

N. Semmar, A. Sarraj-Laabidi, A. Hammami-Semmar
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Abstract

Graphical Abstract Abstract. Metabolism represents highly organized system characterized by strong regulations satisfying the mass conservation principle. In this work, a new simplex-based simulation approach was developed to learn scaffold information on metabolic processes controlling molecular diversity from a wide set of observed chemical structures. This approach is based on iterative in silico combinations of molecular profiles using Scheffé’s mixture design. It was illustrated by cycloartane-based saponins of Astragalus genus containing one, two or three ramification chains with variable relative glycosylation levels. Competing and sequential glycosylation processes of different carbons were highlighted by the machine-learning simplex method. Comparisons between this simplex approach and other molecular modeling approaches were made to highlight advantages and limits of the new one.
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结构化学多样化过程分析的一种新的单纯形机器学习方法。与其他分子建模方法的比较。
图形抽象抽象。代谢是一种高度组织化的系统,具有满足质量守恒原理的强调节特性。在这项工作中,研究人员开发了一种新的基于simplex的模拟方法,从一系列观察到的化学结构中了解控制分子多样性的代谢过程的支架信息。这种方法是基于迭代的分子剖面的硅组合使用谢弗斯的混合物设计。黄芪属的环artan基皂苷含有一个、两个或三个不同相对糖基化水平的分支链。机器学习单纯形法突出了不同碳的竞争性和顺序性糖基化过程。将该方法与其他分子建模方法进行了比较,突出了新方法的优点和局限性。
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