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Prediction of Lysine Acetylation Sites Based on Neural Network

机译:基于神经网络的赖氨酸乙酰化位点预测

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Lysine acetylation is a crucial type of protein post-translational modification, which is involved in many important cellular processes and serious diseases. In practice, identification of protein acetylated sites through traditional experiment methods is time-consuming and laborious. Computational methods are not suitable to identify a large number of acetylated sites quickly. Therefore, machine learning methods are still very valuable to accelerate lysine acetylated site finding. In this study, many biological characteristics of acetylated sites have been investigated, such as the amino acid sequence around the acetylated sites, the physicochemical property of the amino acids and the transition probability of adjacent amino acids. A special structure neural network, which is named flexible neural tree (FNT), was then utilized to integrate such information for generating a novel lysine acetylation prediction system named LA+FNT. When compared with existing methods, our proposed method overwhelms most of state-of-the-art methods. Such method has the ability to integrating different biological features to predict lysine acetylation with high accuracy.
机译:赖氨酸乙酰化是蛋白质翻译后修饰的关键类型,它参与许多重要的细胞过程和严重的疾病。在实践中,通过传统实验方法鉴定蛋白质乙酰化位点既费时又费力。计算方法不适合快速识别大量乙酰化位点。因此,机器学习方法对于加速赖氨酸乙酰化位点的发现仍然非常有价值。在这项研究中,已研究了乙酰化位点的许多生物学特性,例如乙酰化位点周围的氨基酸序列,氨基酸的理化性质和相邻氨基酸的转移概率。然后,利用一种特殊的结构神经网络(称为柔性神经树(FNT))来集成这些信息,以生成一个名为LA + FNT的新型赖氨酸乙酰化预测系统。当与现有方法进行比较时,我们提出的方法使大多数最先进的方法不堪重负。这种方法具有整合不同生物学特征以高精度预测赖氨酸乙酰化的能力。

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