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A novel method for predicting activity of cis-regulatory modules based on a diverse training set

机译:一种基于多种训练集的预测顺式调控模块活性的新方法

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摘要

MotivationWith the rapid emergence of technologies for locating cis-regulatory modules (CRMs) genome-wide, the next pressing challenge is to assign precise functions to each CRM, i.e. to determine the spatiotemporal domains or cell-types where it drives expression. A popular approach to this task is to model the typical k-mer composition of a set of CRMs known to drive a common expression pattern, and assign that pattern to other CRMs exhibiting a similar k-mer composition. This approach does not rely on prior knowledge of transcription factors relevant to the CRM or their binding motifs, and is thus more widely applicable than motif-based methods for predicting CRM activity, but is also prone to false positive predictions.
机译:动机随着在全基因组范围内定位顺式调控模块(CRM)的技术的迅速兴起,下一个紧迫的挑战是为每个CRM指定精确的功能,即确定驱动表达的时空域或细胞类型。一种流行的方法是对一组已知驱动共同表达模式的CRM的典型k-mer组成进行建模,并将该模式​​分配给表现出类似k-mer组成的其他CRM。该方法不依赖于与CRM或其结合基序相关的转录因子的先验知识,因此比基于基序的方法可更广泛地用于预测CRM活动,但也容易产生假阳性预测。

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