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Integrated Image Data and Medical Record Management for Rare Disease Registries. A General Framework and its Instantiation to the German Calciphylaxis Registry

机译:罕见病登记处的集成图像数据和病历管理。通用框架及其对德国预防性疾病登记处的实例化

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摘要

Especially for investigator-initiated research at universities and academic institutions, Internet-based rare disease registries (RDR) are required that integrate electronic data capture (EDC) with automatic image analysis or manual image annotation. We propose a modular framework merging alpha-numerical and binary data capture. In concordance with the Office of Rare Diseases Research recommendations, a requirement analysis was performed based on several RDR databases currently hosted at Uniklinik RWTH Aachen, Germany. With respect to the study management tool that is already successfully operating at the Clinical Trial Center Aachen, the Google Web Toolkit was chosen with Hibernate and Gilead connecting a MySQL database management system. Image and signal data integration and processing is supported by Apache Commons FileUpload-Library and ImageJ-based Java code, respectively. As a proof of concept, the framework is instantiated to the German Calciphylaxis Registry. The framework is composed of five mandatory core modules: (1) Data Core, (2) EDC, (3) Access Control, (4) Audit Trail, and (5) Terminology as well as six optional modules: (6) Binary Large Object (BLOB), (7) BLOB Analysis, (8) Standard Operation Procedure, (9) Communication, (10) Pseudonymization, and (11) Biorepository. Modules 1–7 are implemented in the German Calciphylaxis Registry. The proposed RDR framework is easily instantiated and directly integrates image management and analysis. As open source software, it may assist improved data collection and analysis of rare diseases in near future.
机译:尤其是对于大学和学术机构中由研究人员发起的研究,需要基于Internet的罕见病注册中心(RDR),并将电子数据捕获(EDC)与自动图像分析或手动图像注释集成在一起。我们提出了一个合并Alpha数字和二进制数据捕获的模块化框架。根据罕见病研究办公室的建议,根据目前在德国亚琛工业大学的几个RDR数据库进行了需求分析。关于已经在亚琛临床试验中心成功运行的研究管理工具,选择了Hibernate和Gilead连接MySQL数据库管理系统的Google Web Toolkit。 Apache Commons FileUpload-Library和基于ImageJ的Java代码分别支持图像和信号数据的集成和处理。作为概念的证明,该框架已实例化到德国骨科预防病登记处。该框架由五个强制性核心模块组成:(1)数据核心,(2)EDC,(3)访问控制,(4)审计跟踪和(5)术语,以及六个可选模块:(6)Binary Large对象(BLOB),(7)BLOB分析,(8)标准操作程序,(9)通讯,(10)假名化和(11)生物存储库。模块1–7在德国预防性疾病登记处实施。所提出的RDR框架易于实例化,并直接集成了图像管理和分析。作为开源软件,它可能会在不久的将来帮助改善数据收集和罕见病分析。

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