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有害单核苷酸多态性预测:留意你的训练数据!

Deleterious SNP prediction: be mindful of your training data!

作者信息

Care Matthew A, Needham Chris J, Bulpitt Andrew J, Westhead David R

机构信息

Institute of Molecular and Cellular Biology, University of Leeds, Leeds, LS2 9JT, UK and School of Computing, University of Leeds, Leeds, LS2 9JT, UK.

出版信息

Bioinformatics. 2007 Mar 15;23(6):664-72. doi: 10.1093/bioinformatics/btl649. Epub 2007 Jan 18.

Abstract

MOTIVATION

To predict which of the vast number of human single nucleotide polymorphisms (SNPs) are deleterious to gene function or likely to be disease associated is an important problem, and many methods have been reported in the literature. All methods require data sets of mutations classified as 'deleterious' or 'neutral' for training and/or validation. While different workers have used different data sets there has been no study of which is best. Here, the three most commonly used data sets are analysed. We examine their contents and relate this to classifiers, with the aims of revealing the strengths and pitfalls of each data set, and recommending a best approach for future studies.

RESULTS

The data sets examined are shown to be substantially different in content, particularly with regard to amino acid substitutions, reflecting the different ways in which they are derived. This leads to differences in classifiers and reveals some serious pitfalls of some data sets, making them less than ideal for non-synonymous SNP prediction.

AVAILABILITY

Software is available on request from the authors.

摘要

动机

预测大量人类单核苷酸多态性(SNP)中哪些对基因功能有害或可能与疾病相关是一个重要问题,文献中已报道了许多方法。所有方法都需要将突变分类为“有害”或“中性”的数据集用于训练和/或验证。虽然不同的研究人员使用了不同的数据集,但尚未有关于哪个数据集最佳的研究。在此,对三个最常用的数据集进行分析。我们检查它们的内容,并将其与分类器相关联,目的是揭示每个数据集的优点和缺陷,并为未来的研究推荐最佳方法。

结果

所检查的数据集在内容上存在很大差异,特别是在氨基酸替换方面,这反映了它们的不同来源方式。这导致分类器的差异,并揭示了一些数据集的严重缺陷,使其对于非同义SNP预测不太理想。

可用性

可根据作者要求提供软件。

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