局部边缘计算用于放射图像重建和计算机辅助检测:可行性研究

Antti Isosalo, J. Islam, Henrik Mustonen, Ella Räinä, S. Inkinen, Mikael Brix, T. Kumar, J. Reponen, M. Nieminen, E. Harjula
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引用次数: 1

摘要

在放射学价值链的不同阶段,对数据处理的计算需求正在增加。锥形束计算机断层扫描(CBCT)是一种用于牙科和四肢成像的诊断成像技术,涉及高要求的图像重建任务。反过来,人工智能(AI)辅助诊断变得越来越流行,从而增加了计算资源的使用。此外,由于需要放射科以外的完全独立的成像单元和远程诊断,因此需要在成像单元和医院基础设施之间建立无线连接。在本可行性研究中,我们提出了一种基于分布式边缘云计算平台的方法,该平台由小型本地边缘节点和具有传统云资源的边缘服务器组成,以执行放射学中的数据处理任务。我们对图形处理单元(gpu)的本地计算资源的使用感兴趣,在我们的案例中是Jetson Xavier NX,用于托管两个用例的算法,即锥束计算机断层扫描中的图像重建和人工智能辅助乳房x线摄影图像的癌症检测。特别是,我们想确定这两项任务对本地边缘计算平台的技术要求,以及CBCT图像重建和乳腺癌检测任务是否可能在诊断可接受的时间范围内完成。我们分两个阶段验证了用例和提议的边缘计算平台。首先,通过比较边缘节点与参考设置(常规工作站)的计算性能,对算法进行了用例验证。其次,我们通过将算法作为纳米服务运行在边缘计算平台上进行定性评估。我们的研究结果是通过真实的原型设计获得的,表明在诊断可接受的计算时间内运行重建和人工智能辅助图像分析功能是可能的,技术上也是可行的。此外,在定性评估的基础上,我们确认了本地边缘计算能力可以在运行时通过添加或删除边缘设备来伸缩,而无需手动重新配置。我们还发现所有以前实现的软件组件都是可转移的。总的来说,结果是有希望的,并有助于开发未来的应用,例如,在移动成像场景中,这样的平台是有益的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local edge computing for radiological image reconstruction and computer-assisted detection: A feasibility study
Computational requirements for data processing at different stages of the radiology value chain are increasing. Cone beam computed tomography (CBCT) is a diagnostic imaging technique used in dental and extremity imaging, involving a highly demanding image reconstruction task. In turn, artificial intelligence (AI) assisted diagnostics are becoming increasingly popular, thus increasing the use of computation resources. Furthermore, the need for fully independent imaging units outside radiology departments and with remotely performed diagnostics emphasize the need for wireless connectivity between the imaging unit and hospital infrastructure. In this feasibility study, we propose an approach based on a distributed edge-cloud computing platform, consisting of small-scale local edge nodes, edge servers with traditional cloud resources to perform data processing tasks in radiology. We are interested in the use of local computing resources with Graphics Processing Units (GPUs), in our case Jetson Xavier NX, for hosting the algorithms for two use-cases, namely image reconstruction in cone beam computed tomography and AI-assisted cancer detection from mammographic images. Particularly, we wanted to determine the technical requirements for local edge computing platform for these two tasks and whether CBCT image reconstruction and breast cancer detection tasks are possible in a diagnostically acceptable time frame. We validated the use-cases and the proposed edge computing platform in two stages. First, the algorithms were validated use-case-wise by comparing the computing performance of the edge nodes against a reference setup (regular workstation). Second, we performed qualitative evaluation on the edge computing platform by running the algorithms as nanoservices. Our results, obtained through real-life prototyping, indicate that it is possible and technically feasible to run both reconstruction and AI-assisted image analysis functions in a diagnostically acceptable computing time. Furthermore, based on the qualitative evaluation, we confirmed that the local edge computing capacity can be scaled up and down during runtime by adding or removing edge devices without the need for manual reconfigurations. We also found all previously implemented software components to be transferable as such. Overall, the results are promising and help in developing future applications, e.g., in mobile imaging scenarios, where such a platform is beneficial.
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