Alberto García S, Mireia Costa, Ana Perez, Oscar Pastor
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First, we define a data model to support the representation of the heterogeneous information. Second, we instantiate this data model to integrate and represent all the genomics knowledge available for familiar cardiopathies. In this step, we consider genomic data sources and the scientific literature. Third, the design and implementation of the CardioGraph platform. A three-tier structure was used: the database, the backend, and the frontend.</p><p><strong>Results: </strong>Three main results were obtained: the data model, the knowledge base generated with the instantiation of the data model, and the platform itself. The platform code has been included as supplemental material in this manuscript. Besides, an instance is publicly available in the following link: https://genomics-hub.pros.dsic.upv.es:3090 .</p><p><strong>Conclusion: </strong>CardioGraph is a platform that supports the analysis of novel variations. 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引用次数: 0
摘要
背景:常见心脏病是影响心脏的遗传性疾病。心脏病专家在治疗这些疾病的患者时面临着一个重大问题:大多数 DNA 变异都是新型的(即以前未被分类)。为了便于分析新型变异,我们推出了 CardioGraph,这是一个专门用于支持分析新型变异并帮助确定它们是否与诊断相关的平台。为此,CardioGraph 可识别和注释变异的后果,并提供有关这些变异可能影响哪些心脏结构、通路和生物过程的上下文信息:我们的工作分为三个步骤。首先,我们定义了一个数据模型,以支持异构信息的表示。其次,我们将这一数据模型实例化,以整合和表示熟悉的心脏病的所有基因组学知识。在这一步中,我们将考虑基因组数据源和科学文献。第三,CardioGraph 平台的设计与实现。采用了三层结构:数据库、后台和前台:取得了三项主要成果:数据模型、数据模型实例化产生的知识库以及平台本身。平台代码已作为本手稿的补充材料。此外,以下链接还提供了一个公开实例:https://genomics-hub.pros.dsic.upv.es:3090 .结论:CardioGraph 是一个支持新型变异分析的平台。未来的工作将扩展有关熟悉的心脏病的知识体系,并包括有关热点、功能研究和先前报告的变异的新信息。
CardioGraph: a platform to study variations associated with familiar cardiopathies.
Background: Familiar cardiopathies are genetic disorders that affect the heart. Cardiologists face a significant problem when treating patients suffering from these disorders: most DNA variations are novel (i.e., they have not been classified before). To facilitate the analysis of novel variations, we present CardioGraph, a platform specially designed to support the analysis of novel variations and help determine whether they are relevant for diagnosis. To do this, CardioGraph identifies and annotates the consequence of variations and provides contextual information regarding which heart structures, pathways, and biological processes are potentially affected by those variations.
Methods: We conducted our work through three steps. First, we define a data model to support the representation of the heterogeneous information. Second, we instantiate this data model to integrate and represent all the genomics knowledge available for familiar cardiopathies. In this step, we consider genomic data sources and the scientific literature. Third, the design and implementation of the CardioGraph platform. A three-tier structure was used: the database, the backend, and the frontend.
Results: Three main results were obtained: the data model, the knowledge base generated with the instantiation of the data model, and the platform itself. The platform code has been included as supplemental material in this manuscript. Besides, an instance is publicly available in the following link: https://genomics-hub.pros.dsic.upv.es:3090 .
Conclusion: CardioGraph is a platform that supports the analysis of novel variations. Future work will expand the body of knowledge about familiar cardiopathies and include new information about hotspots, functional studies, and previously reported variations.