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Analysis and prediction of human acetylation using a cascade classifier based on support vector machine

机译:基于支持向量机的级联分类器对人体乙酰化的分析和预测

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摘要

BackgroundAcetylation on lysine is a widespread post-translational modification which is reversible and plays a crucial role in some biological activities. To better understand the mechanism, it is necessary to identify acetylation sites in proteins accurately. Computational methods are popular because they are more convenient and faster than experimental methods. In this study, we proposed a new computational method to predict acetylation sites in human by combining sequence features and structural features including physicochemical property (PCP), position specific score matrix (PSSM), auto covariation (AC), residue composition (RC), secondary structure (SS) and accessible surface area (ASA), which can well characterize the information of acetylated lysine sites. Besides, a two-step feature selection was applied, which combined mRMR and IFS. It finally trained a cascade classifier based on SVM, which successfully solved the imbalance between positive samples and negative samples and covered all negative sample information.
机译:背景赖氨酸的乙酰化是一种广泛的翻译后修饰,可逆且在某些生物学活动中起关键作用。为了更好地理解该机制,有必要准确地识别蛋白质中的乙酰化位点。计算方法之所以流行是因为它们比实验方法更方便,更快捷。在这项研究中,我们提出了一种通过结合序列特征和结构特征(包括理化性质(PCP),位置比分矩阵(PSSM),自协变(AC),残基组成(RC),二级结构(SS)和可及表面积(ASA),可以很好地表征乙酰化赖氨酸位点的信息。此外,应用了两步特征选择,将mRMR和IFS相结合。最后,它训练了基于支持向量机的级联分类器,成功地解决了正样本和负样本之间的不平衡问题,并涵盖了所有负样本信息。

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