Yang Xuemei, Han Henry
School of Mathematics and Information Science, Xianyang Normal University, Wenlin Road, Xianyang, 712000, China.
Department of Computer and Information Science, Fordham University, Lincoln Center, New York, NY, 10023, USA.
Comput Biol Chem. 2017 Dec;71:258-263. doi: 10.1016/j.compbiolchem.2017.09.005. Epub 2017 Sep 18.
To improve the prediction accuracy of O-glycosylation sites, and analyze the structure of the O-glycosylation sites, factor analysis based prediction is proposed in this study. Our studies show that factor analysis strongly boosts machine learning algorithms' performance in glycosylation site prediction besides demonstrates advantages compared to principal component analysis and nonnegative matrix factorization. In addition, we have found that factor analysis based linear discriminant analysis seem to be a desirable method in O-glycosylation site prediction for its advantage in both accuracy and time complexity than other machine learning methods. To the best of our knowledge, it is the first work to employ factor analysis in glycosylation site prediction and will inspire more future work in this topic.
为提高O-糖基化位点的预测准确性,并分析O-糖基化位点的结构,本研究提出了基于因子分析的预测方法。我们的研究表明,因子分析不仅能显著提高机器学习算法在糖基化位点预测中的性能,而且与主成分分析和非负矩阵分解相比具有优势。此外,我们发现基于因子分析的线性判别分析在O-糖基化位点预测中似乎是一种理想的方法,因为它在准确性和时间复杂度方面比其他机器学习方法更具优势。据我们所知,这是首次在糖基化位点预测中采用因子分析的工作,将激发该主题未来更多的研究工作。