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The predictive performance of short-linear motif features in the prediction of calmodulin-binding proteins

机译:短线性基序特征在钙调蛋白结合蛋白预测中的预测性能

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The prediction of calmodulin-binding (CaM-binding) proteins plays a very important role in the fields of biology and biochemistry, because the calmodulin protein binds and regulates a multitude of protein targets affecting different cellular processes. Computational methods that can accurately identify CaM-binding proteins and CaM-binding domains would accelerate research in calcium signaling and calmodulin function. Short-linear motifs (SLiMs), on the other hand, have been effectively used as features for analyzing protein-protein interactions, though their properties have not been utilized in the prediction of CaM-binding proteins. We propose a new method for the prediction of CaM-binding proteins based on both the total and average scores of known and new SLiMs in protein sequences using a new scoring method called sliding window scoring (SWS) as features for the prediction module. A dataset of 194 manually curated human CaM-binding proteins and 193 mitochondrial proteins have been obtained and used for testing the proposed model. The motif generation tool, Multiple EM for Motif Elucidation (MEME), has been used to obtain new motifs from each of the positive and negative datasets individually (the SM approach) and from the combined negative and positive datasets (the CM approach). Moreover, the wrapper criterion with random forest for feature selection (FS) has been applied followed by classification using different algorithms such as k-nearest neighbors (k-NN), support vector machines (SVM), naive Bayes (NB) and random forest (RF). Our proposed method shows very good prediction results and demonstrates how information contained in SLiMs is highly relevant in predicting CaM-binding proteins. Further, three new CaM-binding motifs have been computationally selected and biologically validated in this study, and which can be used for predicting CaM-binding proteins.
机译:钙调蛋白结合(CaM结合)蛋白的预测在生物学和生物化学领域起着非常重要的作用,因为钙调蛋白结合并调节影响不同细胞过程的多种蛋白质靶标。能够准确识别CaM结合蛋白和CaM结合域的计算方法将加速钙信号传导和钙调蛋白功能的研究。另一方面,短线性基序(SLiMs)已有效地用作分析蛋白质-蛋白质相互作用的特征,尽管它们的性质尚未用于预测CaM结合蛋白。我们提出了一种新的方法来预测CaM结合蛋白,它基于已知的和新的SLiMs在蛋白质序列中的总分数和平均分数,使用一种称为滑动窗口评分(SWS)的新评分方法作为预测模块的功能。已经获得了194个人工管理的人CaM结合蛋白和193个线粒体蛋白的数据集,并用于测试该模型。主题生成工具“用于基元解析的多重EM(MEME)”已用于分别从正和负数据集(SM方法)以及组合的负和正数据集(CM方法)中获取新的主题。此外,已应用具有随机森林特征选择(FS)的包装标准,然后使用不同算法(例如k近邻(k-NN),支持向量机(SVM),朴素贝叶斯(NB)和随机森林)进行分类(RF)。我们提出的方法显示出非常好的预测结果,并证明了SLiMs中包含的信息如何与预测CaM结合蛋白高度相关。此外,在本研究中,已通过计算选择了三种新的CaM结合基序并对其进行了生物学验证,它们可用于预测CaM结合蛋白。

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