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Multi-Instance Multilabel Learning with Weak-Label for Predicting Protein Function in Electricigens

机译:具有弱标签的多型多标签学习,用于预测电器中的蛋白质功能

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摘要

Nature often brings several domains together to form multidomain and multifunctional proteins with a vast number of possibilities. In our previous study, we disclosed that the protein function prediction problem is naturally and inherently Multi-Instance Multilabel (MIML) learning tasks. Automated protein function prediction is typically implemented under the assumption that the functions of labeled proteins are complete; that is, there are no missing labels. In contrast, in practice just a subset of the functions of a protein are known, and whether this protein has other functions is unknown. It is evident that protein function prediction tasks suffer from weak-label problem; thus protein function prediction with incomplete annotation matches well with the MIML with weak-label learning framework. In this paper, we have applied the state-of-the-art MIML with weak-label learning algorithm MIMLwel for predicting protein functions in two typical real-world electricigens organisms which have been widely used in microbial fuel cells (MFCs) researches. Our experimental results validate the effectiveness of MIMLwel algorithm in predicting protein functions with incomplete annotation.
机译:自然通常会带来多个域,形成多麦田和多功能蛋白,具有广大可能性。在我们以前的研究中,我们透露了蛋白质函数预测问题是自然而固有的多实例的多标签(MIML)学习任务。通常在假设标记蛋白质的功能完成的假设下实现自动蛋白质功能预测;也就是说,没有缺少的标签。相反,在实践中,只知道蛋白质的功能的子集,并且该蛋白质是否具有其他功能。很明显,蛋白质功能预测任务遭受弱标签问题;因此,具有不完全注释的蛋白质功能预测与具有弱标签学习框架的MIML匹配良好。在本文中,我们已经应用了弱标签学习算法MIMLWEL的最先进的MIML,用于预测两种典型的真实电影生物中的蛋白质功能,这些功能已被广泛用于微生物燃料电池(MFCS)研究。我们的实验结果验证了MIMLWEL算法在预测蛋白质功能中的有效性,不完全注释。

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