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临床外显子组测序中利用软夹断读取簇的诊断效果和难点。

The Diagnostic Yield and Difficulties of Utilizing Soft-clipped Read Clusters Encountered in Clinical Exome Sequencing.

出版信息

Clin Lab. 2023 Apr 1;69(4). doi: 10.7754/Clin.Lab.2022.220731.

Abstract

BACKGROUND

Despite the wide use of next generation sequencing, there are still many difficulties in detecting structural variants. A split read is one of the clues of structural variants and is represented as a soft-clipped read in the raw sequencing data. Considering that most of the breakpoints of structural variants reside in non-coding regions, split read information has not been routinely used in exome sequencing or targeted panel sequencing. Recently, SCRAMble, a software capable of detecting mobile element insertion (MEI) and deletion based on soft-clipped read clusters (SCRCs), was shown to provide an additional diagnostic yield of 0.03 - 0.25%. SCRAMble is the only software that can be used for exome sequencing or targeted panel sequencing to detect structural variants based on SCRC information. The aim of present study was to establish a working procedure of utilizing SCRC information using SCRAMble in clinical exome sequencing and to assess its diagnostic yield.

METHODS

Raw sequencing data of clinical exome sequencing were retrospectively analyzed using SCRAMble to search MEIs and deletions. SCRAMble software was installed according to the manufacturer's instructions and default parameters except for one, mei-score, which was adjusted for sensitivity, were used. RefSeq gene annotation was performed for both MEI and deletion calls using ANNOVAR. Blacklist-based filtering was used to reduce candidate MEI/deletion calls. Clinical relevance was manually evaluated for the remaining variant calls.

RESULTS

One diagnostic MEI, which is a founder variant in East Asia, was detected in two cases (2/266, 0.75%). In addition, two diagnostic deletions, which had been previously detected in depth-of-coverage (DOC)-based copy number variant (CNV) callers, were detected (2/266, 0.75%). Base-level breakpoints that could not be derived by the DOC-based callers were identified for these two deletions using SCRAMble. Most SCRCs were repetitive among cases and blacklist-based filtering reduced candidate MEI/deletion calls by 49.5 - 94.5%, leaving a considerable number of variant calls to be manually validated.

CONCLUSIONS

SCRC screening in exome or targeted panel sequencing may provide additional diagnostic yield either by pathogenic MEI detection or reassurance of deletions identified by DOC-based CNV callers. Development of an efficient filtering algorithm is warranted.

摘要

背景

尽管下一代测序技术得到了广泛应用,但在检测结构变异方面仍然存在许多困难。分裂读取是结构变异的线索之一,在原始测序数据中表现为软剪辑读取。考虑到大多数结构变异的断点位于非编码区域,因此在外显子组测序或靶向panel 测序中并未常规使用分裂读取信息。最近,一种名为 SCRAMble 的软件能够基于软剪辑读取簇(SCRC)检测移动元件插入(MEI)和缺失,该软件显示出 0.03-0.25%的额外诊断收益。SCRAMble 是唯一可用于基于 SCRC 信息检测外显子组测序或靶向 panel 测序中的结构变异的软件。本研究的目的是建立一种利用 SCRAMble 在临床外显子组测序中利用 SCRC 信息的工作流程,并评估其诊断收益。

方法

使用 SCRAMble 对临床外显子组测序的原始测序数据进行回顾性分析,以搜索 MEI 和缺失。根据制造商的说明和默认参数安装 SCRAMble 软件,除了一个参数 mei-score 用于调整灵敏度外,其余参数均保持不变。使用 ANNOVAR 对 MEI 和缺失调用进行 RefSeq 基因注释。使用基于黑名单的过滤方法减少候选 MEI/缺失调用。对剩余的变异调用进行手动评估以确定其临床相关性。

结果

在 266 例患者中发现了 2 例(2/266,0.75%)有诊断意义的 MEI,这是一种在东亚的创始变体。此外,还检测到了 2 例先前在深度覆盖(DOC)-基于拷贝数变异(CNV)调用器中检测到的有诊断意义的缺失(2/266,0.75%)。使用 SCRAMble 可以确定这两个缺失的碱基水平断点,而 DOC 调用器无法确定这些断点。SCRC 在病例之间具有很强的重复性,基于黑名单的过滤将候选 MEI/缺失调用减少了 49.5-94.5%,留下了相当数量的变异调用需要手动验证。

结论

在外显子组或靶向 panel 测序中进行 SCRC 筛查,通过检测致病性 MEI 或通过 DOC 基于 CNV 调用器确认缺失,可以提供额外的诊断收益。有必要开发一种有效的过滤算法。

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