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Graphical Workflow System for Modification Calling by Machine Learning of Reverse Transcription Signatures

机译:通过逆转录签名的机器学习进行修改调用的图形工作流程系统

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摘要

Modification mapping from cDNA data has become a tremendously important approach in epitranscriptomics. So-called reverse transcription signatures in cDNA contain information on the position and nature of their causative RNA modifications. Data mining of, e.g. Illumina-based high-throughput sequencing data, is therefore fast growing in importance, and the field is still lacking effective tools. Here we present a versatile user-friendly graphical workflow system for modification calling based on machine learning. The workflow commences with a principal module for trimming, mapping, and postprocessing. The latter includes a quantification of mismatch and arrest rates with single-nucleotide resolution across the mapped transcriptome. Further downstream modules include tools for visualization, machine learning, and modification calling. From the machine-learning module, quality assessment parameters are provided to gauge the suitability of the initial dataset for effective machine learning and modification calling. This output is useful to improve the experimental parameters for library preparation and sequencing. In summary, the automation of the bioinformatics workflow allows a faster turnaround of the optimization cycles in modification calling.
机译:来自cDNA数据的修饰图谱已成为表观转录组学中极为重要的方法。 cDNA中的所谓逆转录标记包含有关其引起RNA修饰的位置和性质的信息。数据挖掘因此,基于Illumina的高通量测序数据的重要性正在迅速增长,并且该领域仍缺乏有效的工具。在这里,我们提出了一个通用的,用户友好的图形化工作流系统,用于基于机器学习的修改调用。工作流程从用于修剪,映射和后处理的主要模块开始。后者包括通过映射的转录组以单核苷酸分辨率对错配和停滞率进行定量。其他下游模块包括用于可视化,机器学习和修改调用的工具。从机器学习模块提供质量评估参数,以评估初始数据集对有效机器学习和修改调用的适用性。此输出对于改善文库制备和测序的实验参数很有用。总而言之,生物信息学工作流程的自动化可以使修改调用中的优化周期更快地周转。

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