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An Efficient Middle Layer Platform for Medical Imaging Archives

机译:用于医学影像档案的高效中间层平台

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摘要

Digital medical image usage is common in health services and clinics. These data have a vital importance for diagnosis and treatment; therefore, preservation, protection, and archiving of these data are a challenge. Rapidly growing file sizes differentiated data formats and increasing number of files constitute big data, which traditional systems do not have the capability to process and store these data. This study investigates an efficient middle layer platform based on Hadoop and MongoDB architecture using the state-of-the-art technologies in the literature. We have developed this system to improve the medical image compression method that we have developed before to create a middle layer platform that performs data compression and archiving operations. With this study, a platform using MapReduce programming model on Hadoop has been developed that can be scalable. MongoDB, a NoSQL database, has been used to satisfy performance requirements of the platform. A four-node Hadoop cluster has been built to evaluate the developed platform and execute distributed MapReduce algorithms. The actual patient medical images have been used to validate the performance of the platform. The processing of test images takes 15,599 seconds on a single node, but on the developed platform, this takes 8,153 seconds. Moreover, due to the medical imaging processing package used in the proposed method, the compression ratio values produced for the non-ROI image are between 92.12% and 97.84%. In conclusion, the proposed platform provides a cloud-based integrated solution to the medical image archiving problem.
机译:在医疗服务和诊所中,数字医学图像的使用非常普遍。这些数据对于诊断和治疗至关重要。因此,这些数据的保存,保护和归档是一个挑战。快速增长的文件大小不同的数据格式和越来越多的文件构成了大数据,而传统系统则没有能力处理和存储这些数据。本研究使用文献中的最新技术,研究了基于Hadoop和MongoDB架构的高效中间层平台。我们已经开发了该系统,以改进以前开发的医学图像压缩方法,以创建执行数据压缩和归档操作的中间层平台。通过这项研究,已经开发了可在Hadoop上使用MapReduce编程模型的平台。 MongoDB(NoSQL数据库)已用于满足平台的性能要求。已构建了一个四节点Hadoop集群,以评估开发的平台并执行分布式MapReduce算法。实际的患者医学图像已用于验证平台的性能。在单个节点上处理测试图像需要15599秒,但是在开发的平台上需要8153秒。此外,由于在所提出的方法中使用了医学成像处理软件包,因此为非ROI图像生成的压缩率值在92.12%和97.84%之间。总之,该平台为医学图像存档问题提供了基于云的集成解决方案。

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