两亲性
图形
可见性图
计算机科学
膜蛋白
生物系统
人工智能
膜
理论计算机科学
化学
数学
生物化学
生物
正多边形
聚合物
有机化学
几何学
共聚物
作者
Baoli Jia,Qingfang Meng,Yuehui Chen,Hongri Yang
标识
DOI:10.1109/tcbb.2023.3305493
摘要
Membrane protein amphiphilic helices play an important role in many biological processes. Based on the graph convolution network and the horizontal visibility graph the prediction method of membrane protein amphiphilic helix structure is proposed in this paper. The new dataset of amphiphilic helix is constructed. In this paper, we propose the novel feature extraction method, which characterize the amphiphilicity of membrane protein. We also extract three commonly used protein features together with the new features as protein node features. The neighbor information and long-distance dependence information of proteins are further extracted by sliding window and bidirectional long-short term memory network respectively. From the perspective of horizontal visibility algorithm, we transform protein sequences into complex networks to obtain the graph features of proteins. Then, graph convolutional network model is employed to predict the amphiphilic helix structure of membrane protein. A rigorous ten-fold cross-validation shows that the proposed method outperforms other AH prediction methods on the newly constructed dataset.
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