使用Exomiser有效地重新解释罕见疾病病例。

IF 4.7 2区 医学 Q1 GENETICS & HEREDITY
Letizia Vestito, Julius O B Jacobsen, Susan Walker, Valentina Cipriani, Nomi L Harris, Melissa A Haendel, Christopher J Mungall, Peter Robinson, Damian Smedley
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引用次数: 0

摘要

全基因组测序改变了罕见病的研究;然而,50-80%的罕见病患者在进行此类检测后仍未得到诊断。定期重新分析可以确定新的诊断,特别是在新发现的疾病-基因关联中,但需要有效的工具来支持临床解释。Exomiser是一种表型驱动的变异优先排序工具,可以发挥这一作用;在100,000基因组计划(100kGP)中,在先前对已知疾病基因变异进行分析的24,015名未解决的患者中,有463名(2%)在重新分析后得到诊断。但是,需要大量的人工口译。这导致我们开发了一种再分析策略,以有效地揭示最近发现的疾病基因或新指定的致病/可能致病变异的候选基因。当包括Exomiser的自动ACMG/AMP分类器时,从Exomiser再分析中突出新候选物的最佳设置具有高召回率(82%)和精度(88%),该分类器正确地将92%的变异从未知显著性转换为致病性/可能致病性。总之,Exomiser有效地重新解释了以前未解决的案件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient reinterpretation of rare disease cases using Exomiser.

Whole genome sequencing has transformed rare disease research; however, 50-80% of rare disease patients remain undiagnosed after such testing. Regular reanalysis can identify new diagnoses, especially in newly discovered disease-gene associations, but efficient tools are required to support clinical interpretation. Exomiser, a phenotype-driven variant prioritisation tool, fulfils this role; within the 100,000 Genomes Project (100kGP), diagnoses were identified after reanalysis in 463 (2%) of 24,015 unsolved patients after previous analysis for variants in known disease genes. However, extensive manual interpretation was required. This led us to develop a reanalysis strategy to efficiently reveal candidates from recent disease gene discoveries or newly designated pathogenic/likely pathogenic variants. Optimal settings to highlight new candidates from Exomiser reanalysis were identified with high recall (82%) and precision (88%) when including Exomiser's automated ACMG/AMP classifier, which correctly converted 92% of variants from unknown significance to pathogenic/likely pathogenic. In conclusion, Exomiser efficiently reinterprets previously unsolved cases.

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来源期刊
NPJ Genomic Medicine
NPJ Genomic Medicine Biochemistry, Genetics and Molecular Biology-Molecular Biology
CiteScore
9.40
自引率
1.90%
发文量
67
审稿时长
17 weeks
期刊介绍: npj Genomic Medicine is an international, peer-reviewed journal dedicated to publishing the most important scientific advances in all aspects of genomics and its application in the practice of medicine. The journal defines genomic medicine as "diagnosis, prognosis, prevention and/or treatment of disease and disorders of the mind and body, using approaches informed or enabled by knowledge of the genome and the molecules it encodes." Relevant and high-impact papers that encompass studies of individuals, families, or populations are considered for publication. An emphasis will include coupling detailed phenotype and genome sequencing information, both enabled by new technologies and informatics, to delineate the underlying aetiology of disease. Clinical recommendations and/or guidelines of how that data should be used in the clinical management of those patients in the study, and others, are also encouraged.
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