利用随机载体预测转录因子结合位点

F. Rezwan, Yi Sun, N. Davey, R. Adams, A. Rust, M. Robinson
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引用次数: 1

摘要

寻找DNA中结合位点的位置是一个难题。虽然一些结合位点的位置已经通过实验确定,但基因组的其他部分可能包含也可能不包含结合位点。这给可训练分类器中的负数据带来了问题。这里我们表明,与原始标记数据相比,使用随机化的负数据可以大大提高分类器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Randomised Vectors in Transcription Factor Binding Site Predictions
Finding the location of binding sites in DNA is a difficult problem. Although the location of some binding sites have been experimentally identified, other parts of the genome may or may not contain binding sites. This poses problems with negative data in a trainable classifier. Here we show that using randomized negative data gives a large boost in classifier performance when compared to the original labeled data.
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