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Applying Inductive Logic Programming to Predicting Gene Function

机译:归纳逻辑编程在基因功能预测中的应用

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One of the fastest advancing areas of modern science is functional genomics. This science seeks to understand how the complete complement of molecular components of living organisms (nucleic acid, protein, small molecules, and so on) interact together to form living organisms. Functional genomics is of interest to AI because the relationship between machines and living organisms is central to AI and because the field is an instructive and fun domain to apply and sharpen AI tools and ideas, requiring complex knowledge representation, reasoning, learning, and so on. This article describes two machine learning (inductive logic programming [ILP])-based approaches to the bioinformatic problem of predicting protein function from amino acid sequence. The first approach is based on using ILP as a way of bootstrapping from conventional sequence-based homology methods. The second approach used protein-functional ontologies to provide function classes and a hybrid ILP method to predict function directly from sequence. Both ILP approaches were successful in producing accurate prediction rules that could biologically be interpreted. The work was also of interest to machine learning research because it highlighted the flexibility of ILP systems in dealing with heterogeneous data, the importance of problems where classes are related hierarchically, and problems where examples have more than one functional class.
机译:功能基因组学是现代科学中发展最快的领域之一。该科学旨在了解活生物体的分子组成部分(核酸,蛋白质,小分子等)的完整互补如何相互作用形成活生物体。功能基因组学是AI感兴趣的,因为机器与活生物体之间的关系对于AI至关重要,并且因为该领域是应用和完善AI工具和思想的指导性和有趣领域,需要复杂的知识表示,推理,学习等。 。本文介绍了两种基于机器学习(归纳逻辑编程[ILP])的方法,用于从氨基酸序列预测蛋白质功能的生物信息学问题。第一种方法是基于使用ILP作为从常规基于序列的同源性方法自举的一种方法。第二种方法使用蛋白质功能本体来提供功能类别,并使用混合ILP方法直接根据序列预测功能。两种ILP方法均成功产生了可以生物学解释的准确预测规则。机器学习研究也很感兴趣,因为它强调了ILP系统在处理异构数据方面的灵活性,类在层次上相关的问题的重要性以及示例具有多个功能类的问题的重要性。

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