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OSCAR: One-class SVM for accurate recognition of cis-elements

机译:OSCAR:一类SVM,可准确识别顺式元素

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Motivation: Traditional methods to identify potential binding sites of known transcription factors still suffer from large number of false predictions. They mostly use sequence information in a position-specific manner and neglect other types of information hidden in the proximal promoter regions. Recent biological and computational researches, however, suggest that there exist not only locational preferences of binding, but also correlations between transcription factors. Results: In this article, we propose a novel approach, OSCAR, which utilizes one-class SVM algorithms, and incorporates multiple factors to aid the recognition of transcription factor binding sites. Using both synthetic and real data, we find that our method outperforms existing algorithms, especially in the high sensitivity region. The performance of our method can be further improved by taking into account locational preference of binding events. By testing on experimentally-verified binding sites of GATA and HNF transcription factor families, we show that our algorithm can infer the true co-occurring motif pairs accurately, and by considering the co-occurrences of correlated motifs, we not only filter out false predictions, but also increase the sensitivity.
机译:动机:识别已知转录因子潜在结合位点的传统方法仍然遭受大量错误预测。他们大多以位置特定的方式使用序列信息,而忽略了隐藏在近端启动子区域中的其他类型的信息。然而,最近的生物学和计算研究表明,不仅存在结合的位置偏好,而且存在转录因子之间的相关性。结果:在本文中,我们提出了一种新颖的方法OSCAR,该方法利用一类SVM算法,并结合了多种因素以帮助识别转录因子结合位点。使用合成数据和实际数据,我们发现我们的方法优于现有算法,尤其是在高灵敏度区域。考虑到绑定事件的位置偏好,可以进一步提高我们方法的性能。通过对经实验验证的GATA和HNF转录因子家族的结合位点进行测试,我们表明我们的算法可以准确地推断出真正的共现基序对,并且考虑到相关基序的共现,我们不仅滤除了错误的预测,还会增加灵敏度。

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