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Improving Start Codon Prediction Accuracy Using Naive Bayesian Classification

机译:使用Naive Bayesian分类提高开始密码子预测精度

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With an overwhelming amount of genetic data now becoming publicly available, there is a growing need to develop more effective gene location prediction methods that produce reliable results. Although prediction of the stop codon location for genes in prokaryotic organisms is largely considered to be a solved problem, accurate prediction of the exact start codon location continues to lag behind because of the ambiguity for these start codons in the genetic code. This paper will detail a new approach to predicting more precise gene locations for both the start and stop codon in prokaryotic organisms. This approach uses a set of gene location prediction results from other prediction programs to find consistently predicted gene locations. It then uses these "consistent genes" as a training set for Naive Bayesian classification to improve accuracy in the "ambiguous genes," those in which there is some variability or inconsistency in predicted locations among the prediction programs. The result is an improved accuracy in the location predictions when compared with the original set of prediction results.
机译:随着现在公开可用的压倒性的遗传数据,越来越需要开发更有效的基因定位预测方法,产生可靠的结果。虽然在原核生物基因终止密码子位置的预测在很大程度上被认为是一个解决问题,确切的起始密码子位置的准确预测仍然滞后,因为不确定性在遗传密码,这些起始密码子的后面。本文将详细介绍一种新方法,以预测原核生物中的起始和止扣密码子的更精确基因位置。该方法使用来自其他预测程序的一组基因位置预测结果,以找到一致预测的基因位置。然后,它将这些“一致基因”作为幼稚贝叶斯分类的训练集,以提高“暧昧基因”的准确性,其中预测程序之间的预测位置存在一些可变性或不一致。结果是与原始预测结果相比的位置预测中的精度提高。

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