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Modeling positional effects of regulatory sequences with spline transformations increases prediction accuracy of deep neural networks

机译:用样条变换对调节序列的位置效应进行建模可提高深度神经网络的预测精度

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摘要

MotivationRegulatory sequences are not solely defined by their nucleic acid sequence but also by their relative distances to genomic landmarks such as transcription start site, exon boundaries or polyadenylation site. Deep learning has become the approach of choice for modeling regulatory sequences because of its strength to learn complex sequence features. However, modeling relative distances to genomic landmarks in deep neural networks has not been addressed.
机译:动机调节序列不仅由其核酸序列定义,而且由其与基因组标志物如转录起始位点,外显子边界或聚腺苷酸化位点的相对距离定义。由于深度学习具有学习复杂序列特征的能力,因此深度学习已成为建模调控序列的首选方法。但是,尚未解决在深度神经网络中建模相对于基因组界标的相对距离的问题。

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