%0 Journal Article %T PREDICTING SPLICE JUNCTION SITE IN DNA SEQUENCES WITH BAYESIAN NETWORK
基于贝叶斯网络的DNA序列剪接位点预测 %A LI Ao %A WANG Tao %A FENG Huan-qing %A WANG Ming-hui %A
李骜 %A 王涛 %A 冯焕清 %A 王明会 %J 生物物理学报 %D 2003 %I %X Two new models for predicting the splice junction in eukaryotic DNA sequences were developed by exploiting Bayesian network, one for donor site and the other for acceptor site. The topology structures and the upstream (downstream) nodes of these two models were optimized in consideration of the biological characters of acceptor site and donor site. Both of the models were trained by a ML (maximum likelihood) algorithm for Bayesian network learning, then the testing DNA sequence data were feed into the model and a 10-fold cross validation method was used to evaluate the performance of prediction. The experimental results show that in average, the sensitivity of acceptor site detection was 92.5% and the specificity was 94.0%, the sensitivity of donor site detection was 92.3% and the specificity was 93.5%. These results proved that the models were better than the models based on independent matrix and conditional probability matrix, as well as the hidden Markov model for splice junction site detection in some ways. These conclusions indicate that the optimized Bayesian network models are powerful tools for splice junction detection in eukaryotic genes. %K Bayesian network %K Splice junction site %K Acceptor site %K Donor site
贝叶斯网络 %K DNA序列 %K 剪接位点 %K 供体位点 %K 受体位点 %K 遗传信息 %U http://www.alljournals.cn/get_abstract_url.aspx?pcid=90BA3D13E7F3BC869AC96FB3DA594E3FE34FBF7B8BC0E591&jid=E0C9D9BBED813D6674AC13E942EAC86D&aid=714834CF870D6454&yid=D43C4A19B2EE3C0A&vid=2A8D03AD8076A2E3&iid=E158A972A605785F&sid=6D6BFCF0101BC091&eid=08076B8B3CC96095&journal_id=1000-6737&journal_name=生物物理学报&referenced_num=0&reference_num=8