DiscoVari:一种基于Web的精确医学工具,用于预测心肌病和血管病相关基因的变异致病性。

IF 6 2区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS Circulation: Genomic and Precision Medicine Pub Date : 2023-08-01 Epub Date: 2023-07-06 DOI:10.1161/CIRCGEN.122.003911
Leonie M Kurzlechner, Sujata Kishnani, Shawon Chowdhury, Sage L Atkins, Mary E Moya-Mendez, Lauren E Parker, Michael B Rosamilia, Hanna J Tadros, Leslie A Pace, Viraj Patel, C Anwar A Chahal, Andrew P Landstrom
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引用次数: 0

摘要

背景:随着基因检测的进步,偶然发现的心脏病相关基因变异的负担正在增加。这些变体可能具有心脏性猝死的风险,这突出了准确诊断解释的必要性。我们试图使用氨基酸水平信噪比(S:N)分析来确定心源性猝死相关基因的致病热点,并开发了一种基于网络的精准医学工具DiscoVari,以改进变异评估。方法:假定致病变异的次要等位基因频率来源于文献中基于队列的心肌病和通道病研究。我们将疾病相关的次要等位基因频率标准化为表面健康人群中的罕见变异(基因组聚集数据库),以计算氨基酸水平S:N。S:N高于基因特异性阈值的氨基酸被定义为热点。DiscoVari是使用JavaScript ES6和开源JavaScript库ReactJS、web开发框架Next.js和JavaScript运行时NodeJS构建的。我们使用ClinVar和杜克大学医院临床评估的个体的变异,通过心脏基因测试,验证了DiscoVari识别致病变异的能力。结果:我们开发了DiscoVari作为一种基于互联网的工具,用于基于S:N的变体热点。经验证,定位于DiscoVari热点的ClinVar可能致病/致病变体的比例(43.1%)高于可能的良性/良性变体(17.8%;P0.001),相比之下,41.3%的被重新分类为不确定显著性变异(P0.001)和23.4%的被重新归类为可能的良性/良性变异(PP0.01)。
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DiscoVari: A Web-Based Precision Medicine Tool for Predicting Variant Pathogenicity in Cardiomyopathy- and Channelopathy-Associated Genes.

Background: With genetic testing advancements, the burden of incidentally identified cardiac disease-associated gene variants is rising. These variants may carry a risk of sudden cardiac death, highlighting the need for accurate diagnostic interpretation. We sought to identify pathogenic hotspots in sudden cardiac death-associated genes using amino acid-level signal-to-noise (S:N) analysis and develop a web-based precision medicine tool, DiscoVari, to improve variant evaluation.

Methods: The minor allele frequency of putatively pathogenic variants was derived from cohort-based cardiomyopathy and channelopathy studies in the literature. We normalized disease-associated minor allele frequencies to rare variants in an ostensibly healthy population (Genome Aggregation Database) to calculate amino acid-level S:N. Amino acids with S:N above the gene-specific threshold were defined as hotspots. DiscoVari was built using JavaScript ES6 and using open-source JavaScript library ReactJS, web development framework Next.js, and JavaScript runtime NodeJS. We validated the ability of DiscoVari to identify pathogenic variants using variants from ClinVar and individuals clinically evaluated at the Duke University Hospitals with cardiac genetic testing.

Results: We developed DiscoVari as an internet-based tool for S:N-based variant hotspots. Upon validation, a higher proportion of ClinVar likely pathogenic/pathogenic variants localized to DiscoVari hotspots (43.1%) than likely benign/benign variants (17.8%; P<0.0001). Further, 75.3% of ClinVar variants reclassified to likely pathogenic/pathogenic were in hotspots, compared with 41.3% of those reclassified as variants of uncertain significance (P<0.0001) and 23.4% of those reclassified as likely benign/benign (P<0.0001). Of the clinical cohort variants, 73.1% of likely pathogenic/pathogenic were in hotspots, compared with 0.0% of likely benign/benign (P<0.01).

Conclusions: DiscoVari reliably identifies disease-susceptible amino acid residues to evaluate variants by searching amino acid-specific S:N ratios.

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来源期刊
Circulation: Genomic and Precision Medicine
Circulation: Genomic and Precision Medicine Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
9.20
自引率
5.40%
发文量
144
期刊介绍: Circulation: Genomic and Precision Medicine is a distinguished journal dedicated to advancing the frontiers of cardiovascular genomics and precision medicine. It publishes a diverse array of original research articles that delve into the genetic and molecular underpinnings of cardiovascular diseases. The journal's scope is broad, encompassing studies from human subjects to laboratory models, and from in vitro experiments to computational simulations. Circulation: Genomic and Precision Medicine is committed to publishing studies that have direct relevance to human cardiovascular biology and disease, with the ultimate goal of improving patient care and outcomes. The journal serves as a platform for researchers to share their groundbreaking work, fostering collaboration and innovation in the field of cardiovascular genomics and precision medicine.
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