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RCK: accurate and efficient inference of sequence- and structure-based protein-RNA binding models from RNAcompete data

机译:RCK:从RNA竞争数据中准确有效地推断基于序列和结构的蛋白质-RNA结合模型

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Motivation: Protein-RNA interactions, which play vital roles in many processes, are mediated through both RNA sequence and structure. CLIP-based methods, which measure protein-RNA binding in vivo, suffer from experimental noise and systematic biases, whereas in vitro experiments capture a clearer signal of protein RNA-binding. Among them, RNAcompete provides binding affinities of a specific protein to more than 240 000 unstructured RNA probes in one experiment. The computational challenge is to infer RNA structure-and sequence-based binding models from these data. The state-of-the-art in sequence models, Deepbind, does not model structural preferences. RNAcontext models both sequence and structure preferences, but is outperformed by GraphProt. Unfortunately, GraphProt cannot detect structural preferences from RNAcompete data due to the unstructured nature of the data, as noted by its developers, nor can it be tractably run on the full RNACompete dataset.
机译:动机:蛋白质-RNA相互作用在许多过程中起着至关重要的作用,是通过RNA序列和结构介导的。基于CLIP的方法在体内测量蛋白质与RNA的结合会遭受实验噪声和系统偏差,而体外实验则捕获了蛋白质与RNA结合的更清晰信号。其中,RNAcompete在一项实验中提供了特定蛋白质与24万多种非结构化RNA探针的结合亲和力。计算上的挑战是从这些数据中推断基于RNA结构和序列的结合模型。序列模型的最新技术Deepbind无法对结构偏好进行建模。 RNAcontext可对序列和结构偏好进行建模,但其性能优于GraphProt。不幸的是,由于它的开发者指出,由于数据的非结构化性质,GraphProt无法从RNAcompete数据中检测结构偏好,也无法在完整的RNACompete数据集上灵活地运行。

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