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Design of fragrant molecules through the incorporation of rough sets into computer-aided molecular design

机译:设计的芳香分子通过将粗糙集计算机辅助分子设计

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摘要

Design and screening of fragrances based on experiments or experiences of specialists can overlook potentially better fragrance products. To overcome this issue, a systematic mathematical programming-based approach is developed for the design of fragrant molecules. A novel data-driven rough set-based machine learning (RSML) model is utilised as a predictive or diagnostic modelling tool for odour properties. RSML generates deterministic rules based on the relationship between the topology of fragrant molecules and their odour characters elicited from an existing odour database. The rules generated are then integrated as constraints into a computer-aided molecular design (CAMD) problem. The CAMD framework also involves other relevant properties such as diffusion coefficient, vapour pressure, viscosity, LC_(50) and solubility parameter which are predicted using a group contribution (GC) method. Since there are different types of models involved in the prediction of various attributes, molecular signature descriptors are utilised as the common platform that links machine learning and other predictive models in a CAMD problem. The application of the new design method is demonstrated through a case study to design fragrant molecules for shampoo additives with desirable physical and environmental properties. The results indicate the ability of the novel method in identifying non-intuitive and promising fragrant molecules that can be used for various applications.
机译:香水的设计和筛选的基础上实验或经验的专家忽视潜在的更好的香水产品。为了克服这个问题,一个系统的数学programming-based方法是发达的芳香分子的设计。粗糙的基于集合的机器学习(RSML)模型利用预测或诊断模型气味特性的工具。确定的规则基础上的关系芳香分子的拓扑和之间他们的气味从现有的人物了气味数据库。成一个计算机辅助集成作为约束分子设计(CAMD)问题。框架还包括其他相关属性如扩散系数、蒸汽压力,粘度、LC_(50)和溶度参数预计使用一组贡献(GC)方法。参与各种属性的预测,利用分子特征描述符共同的平台,机器学习的链接和其他预测模型在一个CAMD问题。新的设计方法的应用通过案例研究设计了香洗发水添加剂的分子理想的物理和环境属性。结果表明小说的能力方法在识别不直观和有前途的可用于各种芳香分子应用程序。

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