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Simplifying Electronic Data Capture in Clinical Trials: Workflow Embedded Image and Biosignal File Integration and Analysis via Web Services

机译:简化临床试验中的电子数据捕获:通过Web服务进行工作流嵌入式图像和生物信号文件的集成和分析

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摘要

To improve data quality and save cost, clinical trials are nowadays performed using electronic data capture systems (EDCS) providing electronic case report forms (eCRF) instead of paper-based CRFs. However, such EDCS are insufficiently integrated into the medical workflow and lack in interfacing with other study-related systems. In addition, most EDCS are unable to handle image and biosignal data, although electrocardiography (EGC, as example for one-dimensional (1D) data), ultrasound (2D data), or magnetic resonance imaging (3D data) have been established as surrogate endpoints in clinical trials. In this paper, an integrated workflow based on OpenClinica, one of the world’s largest EDCS, is presented. Our approach consists of three components for (i) sharing of study metadata, (ii) integration of large volume data into eCRFs, and (iii) automatic image and biosignal analysis. In all components, metadata is transferred between systems using web services and JavaScript, and binary large objects (BLOBs) are sent via the secure file transfer protocol and hypertext transfer protocol. We applied the close-looped workflow in a multicenter study, where long term (7 days/24 h) Holter ECG monitoring is acquired on subjects with diabetes. Study metadata is automatically transferred into OpenClinica, the 4 GB BLOBs are seamlessly integrated into the eCRF, automatically processed, and the results of signal analysis are written back into the eCRF immediately.
机译:为了提高数据质量并节省成本,如今使用提供电子病例报告表(eCRF)而不是纸质CRF的电子数据捕获系统(EDCS)进行临床试验。但是,这样的EDCS没有充分集成到医疗工作流程中,并且缺乏与其他研究相关系统的接口。此外,尽管已建立了心电图(例如一维(1D)数据的心电图),超声(2D数据)或磁共振成像(3D数据)的替代方法,但大多数EDCS无法处理图像和生物信号数据。临床试验的终点。本文介绍了基于OpenClinica(全球最大的EDCS之一)的集成工作流。我们的方法由三个部分组成:(i)共享研究元数据,(ii)将大量数据集成到eCRF中,以及(iii)自动图像和生物信号分析。在所有组件中,使用Web服务和JavaScript在系统之间传输元数据,并通过安全文件传输协议和超文本传输​​协议发送二进制大对象(BLOB)。我们在多中心研究中应用了闭环工作流程,其中对糖尿病患者进行了长期(7天/ 24小时)动态心电图监测。研究元数据会自动传输到OpenClinica中,将4 GB BLOB无缝集成到eCRF中并自动处理,然后将信号分析结果立即写回到eCRF中。

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