Evaluating the impact of sequencing error correction for RNA-seq data with ERCC RNA spike-in controls.

Li Tong, Cheng Yang, Po-Yen Wu, May D Wang
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引用次数: 6

Abstract

Sequencing errors are a major issue for several next-generation sequencing-based applications such as de novo assembly and single nucleotide polymorphism detection. Several error-correction methods have been developed to improve raw data quality. However, error-correction performance is hard to evaluate because of the lack of a ground truth. In this study, we propose a novel approach which using ERCC RNA spike-in controls as the ground truth to facilitate error-correction performance evaluation. After aligning raw and corrected RNA-seq data, we characterized the quality of reads by three metrics: mismatch patterns (i.e., the substitution rate of A to C) of reads aligned with one mismatch, mismatch patterns of reads aligned with two mismatches and the percentage increase of reads aligned to reference. We observed that the mismatch patterns for reads aligned with one mismatch are significantly correlated between ERCC spike-ins and real RNA samples. Based on such observations, we conclude that ERCC spike-ins can serve as ground truths for error correction beyond their previous applications for validation of dynamic range and fold-change response. Also, the mismatch patterns for ERCC reads aligned with one mismatch can serve as a novel and reliable metric to evaluate the performance of error-correction tools.

Abstract Image

用ERCC RNA刺入对照评估测序错误校正对RNA-seq数据的影响。
测序错误是一些基于新一代测序应用的主要问题,如从头组装和单核苷酸多态性检测。为了提高原始数据的质量,已经开发了几种纠错方法。然而,由于缺乏基础真值,纠错性能很难评估。在本研究中,我们提出了一种使用ERCC RNA刺入控制作为基础真理的新方法,以促进纠错性能评估。在对原始和校正后的RNA-seq数据进行比对后,我们通过三个指标来表征reads的质量:与一个错配的reads的错配模式(即A到C的替代率),与两个错配的reads的错配模式以及与参考文献对齐的reads的增加百分比。我们观察到,在ERCC刺入和真实RNA样本之间,与一个错配对齐的reads的错配模式显着相关。基于这些观察,我们得出结论,ERCC尖峰输入可以作为纠错的基础真理,超越了它们之前在动态范围和折叠变化响应验证方面的应用。此外,与一个错配相匹配的ERCC读取的错配模式可以作为评估纠错工具性能的一种新颖可靠的度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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