RNA ac4C 沉积的深度学习建模揭示了植物替代剪接的重要性。

IF 3.9 2区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Bintao Guo, Xinlin Wei, Shuangcheng Liu, Wenchao Cui, Chao Zhou
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引用次数: 0

摘要

最近,N4-乙酰胞嘧啶(ac4C)修饰被定性为植物中的一种非典型 RNA 标记。虽然在单个植物转录本中精确定位 ac4C 位点仍是一项挑战,但 ac4C 在特定植物物种中的生物学作用正逐渐被破解。在这里,我们利用一种名为 iac4C(智能 ac4C)的深度学习技术来预测 mRNA 中的 ac4C 位点。iac4C 模型有效预测了 ac4C 的沉积(AUROC = 0.948),揭示了一种主要位于转录区而非非翻译区的可靠分布模式。iac4C深度学习方法结合了BiGRU和自我注意机制,既验证了以前的研究显示的植物物种中ac4C与RNA剪接之间的正相关性,又揭示了与ac4C相关的其他剪接事件的新实例。我们用于分析 ac4C 的先进深度学习算法能够迅速识别重要的生物现象,而这些现象通过传统的实验方法很难发现。这些发现让我们深入了解了特定位点 ac4C 沉积在替代剪接过程中的重要调控功能。iac4C 的源代码和数据集可在 https://github.com/xlwei507/iac4C 上获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning modeling of RNA ac4C deposition reveals the importance of plant alternative splicing.

The N4-acetylcytidine (ac4C) modification has recently been characterized as a noncanonical RNA marker in plants. While the precise installation of ac4C sites in individual plant transcripts continues to present challenges, the biological roles of ac4C in specific plant species are gradually being deciphered. Herein, we utilized a deep learning technique called iac4C (intelligent ac4C) to predict ac4C sites in mRNA. ac4C deposition was effectively forecasted by the iac4C model (AUROC = 0.948), revealing a reliable distribution pattern primarily situated in the transcribing area as opposed to regions that are not translated. The iac4C deep learning approach using a combination of BiGRU and self-attention mechanisms both validates previous studies showing a positive correlation between ac4C and RNA splicing in plant species and reveals new examples of other splicing events associated with ac4C. Our advanced deep learning algorithm for analyzing ac4C enables swift identification of important biological phenomena that would otherwise be challenging to uncover through traditional experimental approaches. These findings provide insight into the essential regulatory function of site-specific ac4C deposition in alternative splicing processes. The source code and datasets for iac4C are available at https://github.com/xlwei507/iac4C .

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来源期刊
Plant Molecular Biology
Plant Molecular Biology 生物-生化与分子生物学
自引率
2.00%
发文量
95
审稿时长
1.4 months
期刊介绍: Plant Molecular Biology is an international journal dedicated to rapid publication of original research articles in all areas of plant biology.The Editorial Board welcomes full-length manuscripts that address important biological problems of broad interest, including research in comparative genomics, functional genomics, proteomics, bioinformatics, computational biology, biochemical and regulatory networks, and biotechnology. Because space in the journal is limited, however, preference is given to publication of results that provide significant new insights into biological problems and that advance the understanding of structure, function, mechanisms, or regulation. Authors must ensure that results are of high quality and that manuscripts are written for a broad plant science audience.
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