King Ross D, Wise Paul H, Clare Amanda
Department of Computer Science, University of Wales, Aberystwyth, Wales SY23 3DB, UK.
Bioinformatics. 2004 May 1;20(7):1110-8. doi: 10.1093/bioinformatics/bth047. Epub 2004 Feb 5.
A central problem in bioinformatics is the assignment of function to sequenced open reading frames (ORFs). The most common approach is based on inferred homology using a statistically based sequence similarity (SIM) method, e.g. PSI-BLAST. Alternative non-SIM based bioinformatic methods are becoming popular. One such method is Data Mining Prediction (DMP). This is based on combining evidence from amino-acid attributes, predicted structure and phylogenic patterns; and uses a combination of Inductive Logic Programming data mining, and decision trees to produce prediction rules for functional class. DMP predictions are more general than is possible using homology. In 2000/1, DMP was used to make public predictions of the function of 1309 Escherichia coli ORFs. Since then biological knowledge has advanced allowing us to test our predictions.
We examined the updated (20.02.02) Riley group genome annotation, and examined the scientific literature for direct experimental derivations of ORF function. Both tests confirmed the DMP predictions. Accuracy varied between rules, and with the detail of prediction, but they were generally significantly better than random. For voting rules, accuracies of 75-100% were obtained. Twenty-one of these DMP predictions have been confirmed by direct experimentation. The DMP rules also have interesting biological explanations. DMP is, to the best of our knowledge, the first non-SIM based prediction method to have been tested directly on new data.
We have designed the "Genepredictions" database for protein functional predictions. This is intended to act as an open repository for predictions for any organism and can be accessed at http://www.genepredictions.org
生物信息学中的一个核心问题是将功能赋予已测序的开放阅读框(ORF)。最常见的方法是基于使用基于统计的序列相似性(SIM)方法(例如PSI-BLAST)推断的同源性。基于非SIM的替代生物信息学方法正变得越来越流行。一种这样的方法是数据挖掘预测(DMP)。这是基于结合来自氨基酸属性、预测结构和系统发育模式的证据;并使用归纳逻辑编程数据挖掘和决策树的组合来生成功能类别的预测规则。DMP预测比使用同源性可能的预测更具通用性。在2000/1年,DMP被用于对1309个大肠杆菌ORF的功能进行公开预测。从那时起,生物学知识不断进步,使我们能够检验我们的预测。
我们检查了更新后的(2002年2月20日)莱利小组基因组注释,并查阅了科学文献以获取ORF功能的直接实验推导。这两项测试都证实了DMP预测。准确性因规则而异,也因预测的详细程度而异,但总体上明显优于随机猜测。对于投票规则,准确率达到了75%至100%。其中21个DMP预测已通过直接实验得到证实。DMP规则也有有趣的生物学解释。据我们所知,DMP是第一种直接在新数据上进行测试的基于非SIM的预测方法。
我们设计了“基因预测”数据库用于蛋白质功能预测。这旨在作为任何生物体预测的开放存储库,可在http://www.genepredictions.org上访问。