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An Approach for Semantic Data Integration in Cancer Studies

机译:癌症研究中语义数据集成的方法

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Contemporary development in personalized medicine based both on extended clinical records and implementation of different high-throughput "omics" technologies has generated large amounts of data. To make use of these data, new approaches need to be developed for their search, storage, analysis, integration and processing. In this paper we suggest an approach for integration of data from diverse domains and various information sources enabling extraction of novel knowledge in cancer studies. Its application can contribute to the early detection and diagnosis of cancer as well as to its proper personalized treatment. The data used in our research consist of clinical records from two particular cancer studies with different factors and different origin, and also include gene expression datasets from different high-throughput technologies - microarray and next generation sequencing. An especially developed workflow, able to deal effectively with the heterogeneity of data and the enormous number of relations between patients and proteins, is used to automate the data integration process. During this process, our software tool performs advanced search for additional expressed protein relationships in a set of available knowledge sources and generates semantic links to them. As a result, a set of hidden common expressed protein mutations and their subsequent relations with patients is generated in the form of new knowledge about the studied cancer cases.
机译:基于扩展的临床记录和不同高通量“组学”技术的实施,个性化医学的当代发展产生了大量数据。为了利用这些数据,需要开发用于搜索,存储,分析,集成和处理的新方法。在本文中,我们提出了一种整合来自不同领域和各种信息源的数据的方法,从而能够提取癌症研究中的新知识。它的应用可以有助于癌症的早期检测和诊断以及适当的个性化治疗。我们研究中使用的数据包括来自两个具有不同因素和不同来源的特定癌症研究的临床记录,还包括来自不同高通量技术的基因表达数据集-微阵列和下一代测序。专门开发的工作流程能够有效处理数据的异质性以及患者与蛋白质之间的大量关系,可用于自动化数据集成过程。在此过程中,我们的软件工具会在一组可用的知识源中对其他表达的蛋白质关系进行高级搜索,并生成指向它们的语义链接。结果,以关于所研究的癌症病例的新知识的形式产生了一组隐藏的共同表达的蛋白质突变及其与患者的后续关系。

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