访问量:   最后更新时间:--

胡学海

博士生导师
硕士生导师
教师姓名:胡学海
教师拼音名称:huxuehai
职务:大数据系系主任
职称:教授
学历:博士研究生毕业
学位:理学博士学位
办公地点:逸夫楼C609
电子邮箱:
毕业院校:武汉大学
所属院系:信息学院
所在单位:信息学院
学科:统计学其他专业    生物信息学    
其他联系方式
论文成果
Accurate prediction of nuclear receptors with conjoint triad feature
发布时间:2021-04-30    点击次数:

DOI码:10.1186/s12859-015-0828-1

发表刊物:BMC Bioinformatics

关键字:Nuclear receptors, Conjoint triad feature, Chaos game representation, Amino acid composition, Support vector machine

摘要:Abstract Background: Nuclear receptors (NRs) form a large family of ligand-inducible transcription factors that regulate gene expressions involved in numerous physiological phenomena, such as embryogenesis, homeostasis, cell growth and death. These nuclear receptors-related pathways are important targets of marketed drugs. Therefore, the design of a reliable computational model for predicting NRs from amino acid sequence has now been a significant biomedical problem. Results: Conjoint triad feature (CTF) mainly considers neighbor relationships in protein sequences by encoding each protein sequence using the triad (continuous three amino acids) frequency distribution extracted from a 7-letter reduced alphabet. In addition, chaos game representation (CGR) can investigate the patterns hidden in protein sequences and visually reveal previously unknown structure. In this paper, three methods, CTF, CGR, amino acid composition (AAC), are applied to formulate the protein samples. By considering different combinations of three methods, we study seven groups of features, and each group is evaluated by the 10-fold cross-validation test. Meanwhile, a new non-redundant dataset containing 474 NR sequences and 500 non-NR sequences is built based on the latest NucleaRDB database. Comparing the results of numerical experiments, the group of combined features with CTF and AAC gets the best result with the accuracy of 96.30 % for identifying NRs from non-NRs. Moreover, if it is classified as a NR, it will be further put into the second level, which will classify a NR into one of the eight main subfamilies. At the second level, the group of combined features with CTF and AAC also gets the best accuracy of 94.73 %. Subsequently, the proposed predictor is compared with two existing methods, and the comparisons show that the accuracies of two levels significantly increase to 98.79 % (NR-2L: 92.56 %; iNR-PhysChem: 98.18 %; the first level) and 93.71 % (NR-2L: 88.68 %; iNR-PhysChem: 92.45 %; the second level) with the introduction of our CTF-based method. Finally, each component of CTF features is analyzed via the statistical significant test, and a simplified model only with the resulting top-50 significant features achieves accuracy of 95.28 %. Conclusions: The experimental results demonstrate that our CTF-based method is an effective way for predicting nuclear receptor proteins. Furthermore, the top-50 significant features obtained from the statistical significant test are considered as the “ intrinsic features ” in predicting NRs based on the analysis of relative importance.

卷号:16

页面范围:402

是否译文:

发表时间:2015-01-01

收录刊物:SCI