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Ilyas, S., Hussain, W., Ashraf, A., Khan, Y.D., Khan, S.A. and Chou, K.C. (2019) iMethylK-PseAAC: Improving Accuracy for Lysine Methylation Sites Identification by Incorporating Statistical Moments and Position Relative Features into General PseAAC via Chou’s 5-Steps Rule. Current Genomics, 20, 275-292.
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Jia, J., Liu, Z., Xiao, X., Liu, B. and Chou, K.C. (2016) iCar-PseCp: Identify Carbonylation Sites in Proteins by Monto Carlo Sampling and Incorporating Sequence Coupled Effects into General PseAAC. Oncotarget, 7, 34558-34570. https://doi.org/10.18632/oncotarget.9148
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Liu, B., Long, R. and Chou, K.C. (2016) iDHS-EL: Identifying DNase I Hypersensi-Tivesites by Fusing Three Different Modes of Pseudo Nucleotide Composition into an Ensemble Learning Framework. Bioinformatics, 32, 2411-2418. https://doi.org/10.1093/bioinformatics/btw186
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