Author/Authors :
Xi, Qilemuge Inner Mongolia University - Hohhot, China , Wang, Hao Inner Mongolia University - Hohhot, China , Yi, Liuxi Inner Mongolia Agricultural University - Hohhot - Inner Mongolia, China , Zhou, Jian Inner Mongolia University - Hohhot, China , Liang, Yuchao Inner Mongolia University - Hohhot, China , Zhao, Xiaoqing Inner Mongolia Academy of Agricultural and Animal Husbandry Science - Hohhot, China , Zuo, Yongchun Inner Mongolia University - Hohhot, China
Abstract :
Antioxidant proteins perform significant functions in disease control and delaying aging which can prevent free radicals from
damaging organisms. Accurate identification of antioxidant proteins has important implications for the development of new
drugs and the treatment of related diseases, as they play a critical role in the control or prevention of cancer and aging-related
conditions. Since experimental identification techniques are time-consuming and expensive, many computational methods have
been proposed to identify antioxidant proteins. Although the accuracy of these methods is acceptable, there are still some
challenges. In this study, we developed a computational model called ANPrAod to identify antioxidant proteins based on a
support vector machine. In order to eliminate potential redundant features and improve prediction accuracy, 673 amino acid
reduction alphabets were calculated by us to find the optimal feature representation scheme. The final model could produce an
overall accuracy of 87.53% with the ROC of 0.7266 in five-fold cross-validation, which was better than the existing methods.
The results of the independent dataset also demonstrated the excellent robustness and reliability of ANPrAod, which could be a
promising tool for antioxidant protein identification and contribute to hypothesis-driven experimental design.
Keywords :
N-Peptide , ANPrAod , Combination , DNA/RNA