College of Computer Science and Information Technology, Northeast Normal University, Changchun, People's Republic of China.
PLoS One. 2012;7(10):e46302. doi: 10.1371/journal.pone.0046302. Epub 2012 Oct 22.
As one of the most widespread protein post-translational modifications, phosphorylation is involved in many biological processes such as cell cycle, apoptosis. Identification of phosphorylated substrates and their corresponding sites will facilitate the understanding of the molecular mechanism of phosphorylation. Comparing with the labor-intensive and time-consuming experiment approaches, computational prediction of phosphorylation sites is much desirable due to their convenience and fast speed. In this paper, a new bioinformatics tool named CKSAAP_PhSite was developed that ignored the kinase information and only used the primary sequence information to predict protein phosphorylation sites. The highlight of CKSAAP_PhSite was to utilize the composition of k-spaced amino acid pairs as the encoding scheme, and then the support vector machine was used as the predictor. The performance of CKSAAP_PhSite was measured with a sensitivity of 84.81%, a specificity of 86.07% and an accuracy of 85.43% for serine, a sensitivity of 78.59%, a specificity of 82.26% and an accuracy of 80.31% for threonine as well as a sensitivity of 74.44%, a specificity of 78.03% and an accuracy of 76.21% for tyrosine. Experimental results obtained from cross validation and independent benchmark suggested that our method was very promising to predict phosphorylation sites and can be served as a useful supplement tool to the community. For public access, CKSAAP_PhSite is available at http://59.73.198.144/cksaap_phsite/.
作为最广泛的蛋白质翻译后修饰之一,磷酸化参与许多生物过程,如细胞周期、细胞凋亡。鉴定磷酸化底物及其相应的位点将有助于理解磷酸化的分子机制。与劳动密集型和耗时的实验方法相比,由于其方便和快速的速度,计算预测磷酸化位点是非常可取的。在本文中,开发了一种新的生物信息学工具 CKSAAP_PhSite,该工具忽略了激酶信息,仅使用原始序列信息来预测蛋白质磷酸化位点。CKSAAP_PhSite 的亮点是利用 k 间隔氨基酸对的组成作为编码方案,然后使用支持向量机作为预测器。使用丝氨酸的灵敏度为 84.81%、特异性为 86.07%和准确性为 85.43%、苏氨酸的灵敏度为 78.59%、特异性为 82.26%和准确性为 80.31%、酪氨酸的灵敏度为 74.44%、特异性为 78.03%和准确性为 76.21%来衡量 CKSAAP_PhSite 的性能。交叉验证和独立基准的实验结果表明,我们的方法非常有希望预测磷酸化位点,可以作为社区的有用补充工具。供公众访问,CKSAAP_PhSite 可在 http://59.73.198.144/cksaap_phsite/ 获得。