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Mixing a Symbolic and a Subsymbolic Expert to Improve Carcinogenicity Prediction of Aromatic Compounds

机译:混合符号和次锁专家以改善芳族化合物的致癌性预测

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One approach to deal with real complex systems is to use two or more techniques in order to combine their different strengths and overcome each other's weakness to generate hybrid solutions. In this project we pointed out the needs of an improved system in toxicology prediction. An architecture able to satisfy these needs has been developed. The main tools we integrated are rules and ANN. We defined chemical structures of fragments responsible for carcinogenicity according to human experts. After them we developed specialized rules to recognize these fragments into a given chemical and to assess their toxicity. In practice the rule-based expert associates a category to each fragment found, then a category to the molecule. Furthermore, we developed an ANN-based expert that uses molecular descriptors in input and predicts carcinogenicity as a numerical value. Finally we added a classifier program to combine the results obtained from the two previous experts into a single predictive class of carcinogenicity to man.
机译:处理真正复杂系统的一种方法是使用两种或更多种技术,以便将其不同的优点结合并克服彼此的弱点以产生混合解决方案。在该项目中,我们指出了毒理学预测中改进系统的需求。已经开发了一种能够满足这些需求的体系结构。我们整合的主要工具是规则和安。我们根据人体专家定义了负责致癌性的片段的化学结构。在他们之后,我们开发了专门的规则,以将这些碎片识别为给定的化学品并评估它们的毒性。在实践中,基于规则的专家将一个类别与发现的每个片段相关联,然后是分子的类别。此外,我们开发了一种基于ANN的专家,该专家使用输入中的分子描述符,并将致癌性预测为数值。最后,我们添加了分类程序,将从前两位专家获得的结果与人类的单一预测类致癌性相结合。

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