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Integrating Genomics and Clinical Data for Statistical Analysis by Using GEnome MINIng (GEMINI) and Fast Healthcare Interoperability Resources (FHIR): System Design and Implementation

机译:通过使用基因组挖掘(Gemini)和快速医疗互操作性资源(FHIR)整合基因组学和临床数据进行统计分析:系统设计与实现

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Background The introduction of next-generation sequencing (NGS) into molecular cancer diagnostics has led to an increase in the data available for the identification and evaluation of driver mutations and for defining personalized cancer treatment regimens. The meaningful combination of omics data, ie, pathogenic gene variants and alterations with other patient data, to understand the full picture of malignancy has been challenging. Objective This study describes the implementation of a system capable of processing, analyzing, and subsequently combining NGS data with other clinical patient data for analysis within and across institutions. Methods On the basis of the already existing NGS analysis workflows for the identification of malignant gene variants at the Institute of Pathology of the University Hospital Erlangen, we defined basic requirements on an NGS processing and analysis pipeline and implemented a pipeline based on the GEMINI (GEnome MINIng) open source genetic variation database. For the purpose of validation, this pipeline was applied to data from the 1000 Genomes Project and subsequently to NGS data derived from 206 patients of a local hospital. We further integrated the pipeline into existing structures of data integration centers at the University Hospital Erlangen and combined NGS data with local nongenomic patient-derived data available in Fast Healthcare Interoperability Resources format. Results Using data from the 1000 Genomes Project and from the patient cohort as input, the implemented system produced the same results as already established methodologies. Further, it satisfied all our identified requirements and was successfully integrated into the existing infrastructure. Finally, we showed in an exemplary analysis how the data could be quickly loaded into and analyzed in KETOS, a web-based analysis platform for statistical analysis and clinical decision support. Conclusions This study demonstrates that the GEMINI open source database can be augmented to create an NGS analysis pipeline. The pipeline generates high-quality results consistent with the already established workflows for gene variant annotation and pathological evaluation. We further demonstrate how NGS-derived genomic and other clinical data can be combined for further statistical analysis, thereby providing for data integration using standardized vocabularies and methods. Finally, we demonstrate the feasibility of the pipeline integration into hospital workflows by providing an exemplary integration into the data integration center infrastructure, which is currently being established across Germany.
机译:背景技术下一代测序(NGS)进入分子癌诊断的情况导致可用于识别和评估驾驶员突变的数据以及用于定义个性化癌症治疗方案的数据增加。 omics数据的有意义组合,即致病基因变异和与其他患者数据的改变,了解恶性肿瘤的完整图片一直挑战。目的本研究描述了能够处理,分析和随后将NGS数据与其他临床患者数据组合的系统的实现,以便在机构内部和跨越机构。方法是在已经存在的NGS分析工作流程的基础上用于鉴定大学医院埃尔兰根病理研究所的恶性基因变体,我们定义了对NGS处理和分析管道的基本要求,并基于Gemini(基因组)实施了一条管道采矿)开源遗传变异数据库。出于验证的目的,该管道应用于来自1000个基因组项目的数据,随后源于来自当地医院206名患者的NGS数据。我们进一步将管道集成为现有的数据集成中心在大学医院Erlangen和NGS数据的现有结构中,并使用快速医疗互操作性资源格式提供的本地Nongenomic患者衍生数据。结果使用来自1000个基因组项目的数据和患者群组作为输入,所实施的系统产生与已经建立的方法相同的结果。此外,它满足了我们所确定的所有要求,并成功集成到现有的基础架构中。最后,我们在示例性分析中显示了如何在基于Web的统计分析和临床决策支持的基于网络的分析平台中快速加载数据和分析数据。结论本研究表明,可以增强Gemini开源数据库以创建NGS分析管道。管道产生与已经建立的基因变异注释和病理评估的工作流程一致的高质量结果。我们进一步证明了NGS衍生的基因组和其他临床数据可以组合用于进一步统计分析,从而提供使用标准化词汇表和方法的数据集成。最后,我们展示了通过在德国目前建立的数据集成中心基础架构中的示范性集成来证明管道整合到医院工作流中的可行性。

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