Viana-Ferreira Carlos, Guerra António, Silva João F, Matos Sérgio, Costa Carlos
Departamento de Electronica Telecomunicacoes e Informatica Aveiro, Universidade de Aveiro, Aveiro, Portugal.
J Med Syst. 2017 Sep;41(9):141. doi: 10.1007/s10916-017-0790-8. Epub 2017 Aug 5.
Historically, medical imaging repositories have been supported by indoor infrastructures. However, the amount of diagnostic imaging procedures has continuously increased over the last decades, imposing several challenges associated with the storage volume, data redundancy and availability. Cloud platforms are focused on delivering hardware and software services over the Internet, becoming an appealing solution for repository outsourcing. Although this option may bring financial and technological benefits, it also presents new challenges. In medical imaging scenarios, communication latency is a critical issue that still hinders the adoption of this paradigm. This paper proposes an intelligent Cloud storage gateway that optimizes data access times. This is achieved through a new cache architecture that combines static rules and pattern recognition for eviction and prefetching. The evaluation results, obtained from experiments over a real-world dataset, show that cache hit ratios can reach around 80%, leading to reductions of image retrieval times by over 60%. The combined use of eviction and prefetching policies proposed can significantly reduce communication latency, even when using a small cache in comparison to the total size of the repository. Apart from the performance gains, the proposed system is capable of adjusting to specific workflows of different institutions.
从历史上看,医学影像存储库一直由室内基础设施提供支持。然而,在过去几十年中,诊断成像程序的数量持续增加,带来了与存储容量、数据冗余和可用性相关的诸多挑战。云平台专注于通过互联网提供硬件和软件服务,成为存储库外包的一个有吸引力的解决方案。尽管这种选择可能带来财务和技术效益,但也带来了新的挑战。在医学影像场景中,通信延迟是一个关键问题,仍然阻碍着这种模式的采用。本文提出了一种智能云存储网关,可优化数据访问时间。这是通过一种新的缓存架构实现的,该架构结合了用于逐出和预取的静态规则和模式识别。从对真实数据集进行的实验中获得的评估结果表明,缓存命中率可达到约80%,图像检索时间减少超过60%。即使与存储库的总大小相比使用较小的缓存,所提出的逐出和预取策略的联合使用也可以显著降低通信延迟。除了性能提升外,所提出的系统还能够适应不同机构的特定工作流程。