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KELM-CPPpred: Kernel Extreme Learning Machine Based Prediction Model for Cell-Penetrating Peptides

机译:KELM-CPPPRED:基于内核的细胞穿透肽的预测模型

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Cell-penetrating peptides (CPPs) facilitate the transport of pharmacologically active molecules, such as plasmid DNA, short interfering RNA, nanoparticles, and small peptides. The accurate identification of new and unique CPPs is the initial step to gain insight into CPP activity. Experiments can provide detailed insight into the cell-penetration property of CPPs. However, the synthesis and identification of CPPs through wet-lab experiments is both resource- and time-expensive. Therefore, the development of an efficient prediction tool is essential for the identification of unique CPP prior to experiments. To this end, we developed a kernel extreme learning machine (KELM) based CPP prediction model called KELM-CPPpred. The main data set used in this study consists of 408 CPPs and an equal number of non-CPPs. The input features, used to train the proposed prediction model, include amino acid composition, dipeptide amino acid composition, pseudo amino acid composition, and the motif-based hybrid features. We further used an independent data set to validate the proposed model. In addition, we have also tested the prediction accuracy of KELM-CPPpred models with the existing artificial neural network (ANN), random forest (RF), and support vector machine (SVM) approaches on respective benchmark data sets used in the previous studies. Empirical tests showed that KELM-CPPpred outperformed existing prediction approaches based on SVM, RF, and ANN. We developed a web interface named KELM-CPPpred, which is freely available at http://sairam.people.iitgn.ac.in/KELM-CPPpred.html
机译:细胞穿透肽(CPP)促进药理学活性分子的转运,例如质粒DNA,短干扰RNA,纳米颗粒和小肽。准确识别新的和独特的CPP是获得CPP活动深入了解的最初步骤。实验可以提供对CPP的细胞渗透性的详细洞察。然而,通过湿实验室实验的CPP的合成和鉴定是资源和较昂贵的。因此,在实验之前,有效预测工具的开发对于识别独特的CPP是必不可少的。为此,我们开发了一个名为Kelm-CPPPRED的内核极端学习机(KELM)的CPP预测模型。本研究中使用的主要数据集由408个CPP和相同数量的非CPP组成。用于培训所提出的预测模型的输入特征包括氨基酸组合物,二肽氨基酸组合物,伪氨基酸组合物和基于基于基序的杂化特征。我们进一步使用了独立的数据集来验证所提出的模型。此外,我们还测试了与前一项研究中使用的各个基准数据集上的现有人工神经网络(ANN),随机森林(RF)和支持向量机(SVM)方法的预测准确性。实证测试表明,基于SVM,RF和ANN的KelM-CPPPPPRED优于现有的现有预测方法。我们开发了一个名为Kelm-CPPPRED的Web界面,它可以在http://sairam.people.iitgn.ac.in/kelm-cpppred.html上自由使用

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