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Distributed computing in image analysis using open source frameworks and application to image sharpness assessment of histological whole slide images

机译:使用开源框架和应用程序分析在图像分析中的分布计算,并应用于组织学整幻灯片的图像清晰度评估

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Background Automated image analysis on virtual slides is evolving rapidly and will play an important role in the future of digital pathology. Due to the image size, the computational cost of processing whole slide images (WSIs) in full resolution is immense. Moreover, image analysis requires well focused images in high magnification. Methods We present a system that merges virtual microscopy techniques, open source image analysis software, and distributed parallel processing. We have integrated the parallel processing framework JPPF, so batch processing can be performed distributed and in parallel. All resulting meta data and image data are collected and merged. As an example the system is applied to the specific task of image sharpness assessment. ImageJ is an open source image editing and processing framework developed at the NIH having a large user community that contributes image processing algorithms wrapped as plug-ins in a wide field of life science applications. We developed an ImageJ plug-in that supports both basic interactive virtual microscope and batch processing functionality. For the application of sharpness inspection we employ an approach with non-overlapping tiles. Compute nodes retrieve image tiles of moderate size from the streaming server and compute the focus measure. Each tile is divided into small sub images to calculate an edge based sharpness criterion which is used for classification. The results are aggregated in a sharpness map. Results Based on the system we calculate a sharpness measure and classify virtual slides into one of the following categories - excellent, okay, review and defective. Generating a scaled sharpness map enables the user to evaluate sharpness of WSIs and shows overall quality at a glance thus reducing tedious assessment work. Conclusions Using sharpness assessment as an example, the introduced system can be used to process, analyze and parallelize analysis of whole slide images based on open source software.
机译:背景技术虚拟幻灯片上的自动图像分析正在快速发展,并将在数字病理学的未来发挥重要作用。由于图像尺寸,整个分辨率处理整个幻灯片图像(WSI)的计算成本是巨大的。此外,图像分析需要高放大率的良好聚焦的图像。方法我们提出了一种合并虚拟显微镜技术,开源图像分析软件和分布式并行处理的系统。我们已经集成了并行处理框架JPPF,因此可以分布和并行地执行批处理。收集并合并所有结果元数据和图像数据。作为一个示例,系统应用于图像清晰度评估的特定任务。 imagej是在NIH开发的开源图像编辑和处理框架,其具有大型用户社区,这些用户社区贡献作为在宽生命科学应用领域中包装的图像处理算法。我们开发了一个支持基本交互式虚拟显微镜和批处理功能的Imagej插件。为了应用清晰度检查,我们采用了一种具有非重叠瓷砖的方法。计算节点从流式服务器检索中等大小的图像图块,并计算焦点测量。每个瓦片分为小子图像,以计算用于分类的基于边的锐度标准。结果在锐度图中聚集。结果基于系统,我们计算了一个锐度测量并将虚拟幻灯片分类为以下类别之一 - 优秀,好的,评论和有缺陷。生成缩放的清晰度图使用户能够评估WSI的清晰度,并透明地显示整体质量,从而减少繁琐的评估工作。结论使用清晰度评估作为示例,引入的系统可用于根据开源软件处理,分析和并行化整个幻灯片图像的分析。

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