GLMFD: An Attention-Based CNN-LSTM Model for Transmembrane Domains Localization

Quanchao Ma, F. Yang, Kai Zou, Zhihai Zhang
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Abstract

The transmembrane domains (TMDs) are involved in many significant protein-protein interactions. Structural information of TMDs is necessary for increasing our understanding of such biological processes. However, experimental determination of TMDs position was laborious and inefficient for mass integral membrane proteins. In the past two decades, many statistical algorithms were proposed to predict TMDs and achieved excellent results. These algorithms were both limited in large amounts of detailed protein topology data. In this paper, we proposed an attention-based global-local model to locate TMDs called GLMFD. TMD as a functional domain has its particular hydrophobicity patterns that the right-sized local window can capture. Different from these traditional TMD prediction models, the position information of TMDs was an extra ‘byproduct’ of our localization model. Moreover, our model combined with proposed penalization terms successful located TMDs by learning the quantity distribution of TMDs. Experimental results show that our model and strategy perform well in TMD localization.
GLMFD:一种基于注意力的CNN-LSTM跨膜域定位模型
跨膜结构域(TMDs)参与了许多重要的蛋白质-蛋白质相互作用。tmd的结构信息对于提高我们对这些生物过程的理解是必要的。然而,对于质量积分膜蛋白,tmd位置的实验测定既费力又低效。在过去的二十年里,人们提出了许多统计算法来预测tmd,并取得了很好的效果。这些算法都受到大量详细的蛋白质拓扑数据的限制。在本文中,我们提出了一种基于注意力的全局-局部模型来定位tmd,称为GLMFD。TMD作为一个功能域具有其特定的疏水性模式,适当大小的局部窗口可以捕获这些模式。与这些传统的TMD预测模型不同,TMD的位置信息是我们定位模型的额外“副产品”。此外,我们的模型结合提出的惩罚项,通过学习tmd的数量分布,成功地定位了tmd。实验结果表明,我们的模型和策略在TMD定位中表现良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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