BindCompare:新型蛋白质-核酸结合综合分析平台

Pranav Mahableshwarkar, Jasmine Shum, Mukulika Ray, Erica Larschan
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引用次数: 0

摘要

摘要:先进的基因组学技术已经产生了成千上万的蛋白质-核酸结合数据集,这些数据集有可能发现由因子间组合关联所支配的可检验的基因调控网络(GRNs)模型。转录因子(TFs)和 RNA 结合蛋白(RBPs)是调控基因表达的核酸结合蛋白,也是基因调控网络功能的关键驱动因素。然而,特定 TFs 和 RBPs 之间的相互作用调控基因表达的组合机制在很大程度上仍然未知。为了确定可能共同发挥作用的 TFs 和 RBPs 组合,有必要开发一种工具,比较和对比多种 TFs 和 RBPs 与核酸的相互作用,以确定它们的共同和独特靶标。因此,我们推出了 BindCompare,这是一种用户友好型工具,可在本地运行,预测 TF 和 RBP 之间的新组合关系。BindCompare 可以分析来自任何已知基因组注释信息的生物体的数据,并输出包含详细基因组位置和靶标基因信息的文件,供下游分析使用。总之,BindCompare 是一种新工具,它能识别共同结合到相同 DNA 和/或 RNA 位点的 TFs 和 RBPs,并就它们对靶基因的组合调控提出可检验的假设:BindCompare 是一个开源软件包,可在 Python Packaging Index (PyPI, https://pypi.org/project/bindcompare/) 上获取,源代码可在 GitHub (https://github.com/pranavmahabs/bindcompare) 上获取。该软件包的完整文档可在这两个链接上找到:补充数据可在 Bioinformatics online 上获取。
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BindCompare: a novel integrated protein-nucleic acid binding analysis platform.

Summary: Advanced genomic technologies have generated thousands of protein-nucleic acid binding datasets that have the potential to identify testable gene regulatory network (GRNs) models governed by combinatorial associations between factors. Transcription factors (TFs), and RNA binding proteins (RBPs) are nucleic-acid binding proteins regulating gene expression and are key drivers of GRN function. However, the combinatorial mechanisms by which the interactions between specific TFs and RBPs regulate gene expression remain largely unknown. To identify possible combinations of TFs and RBPs that may function together, developing a tool that compares and contrasts the interactions of multiple TFs and RBPs with nucleic acids to identify their common and unique targets is necessary. Therefore, we introduce BindCompare, a user-friendly tool that can be run locally to predict new combinatorial relationships between TFs and RBPs. BindCompare can analyze data from any organism with known annotated genome information and outputs files with detailed genomic locations and gene information for targets for downstream analysis. Overall, BindCompare is a new tool that identifies TFs and RBPs that co-bind to the same DNA and/or RNA loci, generating testable hypotheses about their combinatorial regulation of target genes.

Availability and implementation: BindCompare is an open-source package that is available on the Python Packaging Index (PyPI, https://pypi.org/project/bindcompare/) with the source code available on GitHub (https://github.com/pranavmahabs/bindcompare). Complete documentation for the package can be found at both links.

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