Wu G, Yan S
Computational Mutation Project, DreamSciTech Consulting, Shenzhen, Guangdong Province, China.
Amino Acids. 2008 Aug;35(2):365-73. doi: 10.1007/s00726-007-0602-4. Epub 2007 Nov 2.
This is the continuation of our studies on the prediction of mutation engineered by randomness in proteins from influenza A virus. In our previous studies, we have demonstrated that randomness plays a role in engineering mutations because the measures of randomness in protein are different before and after mutations. Thus we built a cause-mutation relationship to count the mutation engineered by randomness, and conducted several concept-initiated studies to predict the mutations in proteins from influenza A virus, which demonstrated the possibility of prediction of mutations along this line of thought. On the other hand, these concept-initiated studies indicate the directions forwards the enhancement of predictability, of which we need to use the neural network instead of logistic regression that was used in those concept-initiated studies to enhance the predictability. In this proof-of-concept study, we attempt to apply the neural network to modeling the cause-mutation relationship to predict the possible mutation positions, and then we use the amino acid mutating probability to predict the would-be-mutated amino acids at predicted positions. The results confirm the possibility of use of internal cause-mutation relationship with neural network model to predict the mutation positions and use of amino acid mutating probability to predict the would-be-mutated amino acids.
这是我们关于甲型流感病毒蛋白质中随机性引发突变预测研究的延续。在我们之前的研究中,我们已经证明随机性在突变工程中发挥作用,因为蛋白质中随机性的度量在突变前后有所不同。因此,我们建立了一个因果突变关系来计算由随机性引发的突变,并开展了几项概念性研究以预测甲型流感病毒蛋白质中的突变,这些研究证明了沿着这一思路预测突变的可能性。另一方面,这些概念性研究指出了提高预测性的方向,其中我们需要使用神经网络而非那些概念性研究中所使用的逻辑回归来提高预测性。在这项概念验证研究中,我们尝试应用神经网络对因果突变关系进行建模以预测可能的突变位置,然后我们使用氨基酸突变概率来预测预测位置处可能发生突变的氨基酸。结果证实了利用神经网络模型的内部因果突变关系来预测突变位置以及利用氨基酸突变概率来预测可能发生突变的氨基酸的可能性。