Prediction of Cyclin Protein Using Two-Step Feature Selection Technique

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Abstract

Cyclins are a family of proteins that regulate the cell cycle by activating cyclin-dependent kinases or a group of enzymes required in the cell cycle. Constructing a model to classify Cyclins is of importance to understand their function. It is urgent to construct a machine learning based model to identify Cyclins because of low similarity between the sequence of Cyclins. In this study, a method based on support vector machine (SVM) is developed to recognize Cyclins only using amino acid sequence information. 18 feature descriptors with a total of 13151-dimension features were extracted, and the feature dimension were reduced to 8 through feature selection technique. The reserved features show some of feature descriptors such as Autocorrelation, AAC and CTDC are important in the identification of Cyclins. Jackknife cross-validation results indicate our model would classify Cyclins with an accuracy of 91.9%, which is superior to a recent study using the same data set. Our work provides an important tool for discriminating Cyclins.

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APA

Sun, J. N., Yang, H. Y., Yao, J., DIng, H., Han, S. G., Wu, C. Y., … Tang, H. (2020). Prediction of Cyclin Protein Using Two-Step Feature Selection Technique. IEEE Access, 8, 109535–109542. https://doi.org/10.1109/ACCESS.2020.2999394

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