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A Multi-Instance Multi-Label Learning Approach for Protein Domain Annotation

机译:蛋白质域注释的多实例多标签学习方法

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Domains act as structural and functional units of proteins, playing an essential role in functional genomics. To investigate the annotation of finite protein domains is of much importance because the functions of a protein can be directly inferred if the functions of its component domains are determined. In this paper, we propose PDAMIML based on a novel multi-instance multi-label learning framework combined with auto-cross covariance transformation and SVM. It can effectively annotate functions for protein domains. We evaluate the performance of PDAMIML using a benchmark of 100 protein domains and 10 high-cycle functional labels. The experiment results reveal that PDAMIML yields significant performance gains when compared to the state-of-the-art approaches. Furthermore, we combine PDAMIML with the other two existing methods by using majority voting, and obtain encouraging results.
机译:结构域作为蛋白质的结构和功能单位,在功能基因组学中发挥重要作用。为了研究有限蛋白质结构域的注释是非常重要的,因为如果确定其组分结构域的功能,可以直接推断蛋白质的功能。在本文中,我们提出了基于新型多实例多标签学习框架的PDAmiml与自动交叉协方差转换和SVM相结合。它可以有效地注释蛋白质域的功能。我们使用100个蛋白质结构域和10个高循环功能标签的基准来评估PDAMIML的性能。实验结果表明,与最先进的方法相比,PDamiml在与最先进的方法相比时产生显着性能。此外,我们将PDAMIML与其他两个现有方法相结合,并获得了大多数投票,并获得了令人鼓舞的结果。

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