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Predicting Ion Channels Genes and Their Types With Machine Learning Techniques

机译:用机器学习技术预测离子通道基因及其类型

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摘要

Motivation: The number of ion channels is increasing rapidly. As many of them are associated with diseases, they are the targets of more than 700 drugs. The discovery of new ion channels is facilitated by computational methods that predict ion channels and their types from protein sequences.Methods: We used the SVMProt and the k-skip-n-gram methods to extract the feature vectors of ion channels, and obtained 188- and 400-dimensional features, respectively. The 188- and 400-dimensional features were combined to obtain 588-dimensional features. We then employed the maximum-relevance-maximum-distance method to reduce the dimensions of the 588-dimensional features. Finally, the support vector machine and random forest methods were used to build the prediction models to evaluate the classification effect.Results: Different methods were employed to extract various feature vectors, and after effective dimensionality reduction, different classifiers were used to classify the ion channels. We extracted the ion channel data from the Universal Protein Resource (UniProt, ) and Ligand-Gated Ion Channel databases (), and then verified the performance of the classifiers after screening. The findings of this study could inform the research and development of drugs.
机译:动机:离子通道的数量正在迅速增加。由于其中许多与疾病有关,它们是700多种药物的目标。从蛋白质序列预测离子通道及其类型的计算方法促进了新离子通道的发现。方法:我们使用SVMProt和k-skip-n-gram方法提取特征向量离子通道,并分别获得188维和400维特征。将188维和400维特征相结合以获得588维特征。然后,我们采用最大相关性最大距离方法来减小588维特征的维数。最后,使用支持向量机和随机森林方法建立预测模型,以评估分类效果。结果:采用不同的方法提取各种特征向量,并在有效降维后使用不同的分类器。用于对离子通道进行分类。我们从通用蛋白资源(UniProt,)和配体门离子通道数据库()中提取了离子通道数据,然后在筛选后验证了分类器的性能。这项研究的发现可以为药物的研究和开发提供参考。

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