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SUGAR: graphical user interface-based data refiner for high-throughput DNA sequencing

机译:SUGAR:基于图形用户界面的数据优化程序,用于高通量DNA测序

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Background Next-generation sequencers (NGSs) have become one of the main tools for current biology. To obtain useful insights from the NGS data, it is essential to control low-quality portions of the data affected by technical errors such as air bubbles in sequencing fluidics. Results We develop a software SUGAR (subtile-based GUI-assisted refiner) which can handle ultra-high-throughput data with user-friendly graphical user interface (GUI) and interactive analysis capability. The SUGAR generates high-resolution quality heatmaps of the flowcell, enabling users to find possible signals of technical errors during the sequencing. The sequencing data generated from the error-affected regions of a flowcell can be selectively removed by automated analysis or GUI-assisted operations implemented in the SUGAR. The automated data-cleaning function based on sequence read quality (Phred) scores was applied to a public whole human genome sequencing data and we proved the overall mapping quality was improved. Conclusion The detailed data evaluation and cleaning enabled by SUGAR would reduce technical problems in sequence read mapping, improving subsequent variant analysis that require high-quality sequence data and mapping results. Therefore, the software will be especially useful to control the quality of variant calls to the low population cells, e.g., cancers, in a sample with technical errors of sequencing procedures.
机译:背景技术下一代测序仪(NGS)已成为当前生物学的主要工具之一。为了从NGS数据中获得有用的见解,至关重要的是控制受技术错误(如测序流体学中的气泡)影响的数据的低质量部分。结果我们开发了一个软件SUGAR(基于细分的GUI辅助的精炼器),该软件可以通过用户友好的图形用户界面(GUI)和交互式分析功能来处理超高通量数据。 SUGAR生成了流通池的高分辨率高质量热图,使用户能够在测序过程中发现可能的技术错误信号。从流通池中受错误影响的区域生成的测序数据可以通过SUGAR中实现的自动化分析或GUI辅助操作有选择地除去。将基于序列读取质量(Phred)评分的自动数据清洗功能应用于公开的全人类基因组测序数据,我们证明总体定位质量得到了改善。结论SUGAR支持的详细数据评估和清理将减少序列读取映射中的技术问题,从而改善需要高质量序列数据和映射结果的后续变异分析。因此,该软件在控制测序过程中存在技术错误的样品中,对控制低种群细胞(例如癌症)的变异的质量将特别有用。

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