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首页> 外文期刊>Journal of Microscopy >The Viking viewer for connectomics: scalable multi-user annotation and summarization of large volume data sets.
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The Viking viewer for connectomics: scalable multi-user annotation and summarization of large volume data sets.

机译:Viking Viewer for Connectomics:可伸缩的多用户注释和大容量数据集的汇总。

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摘要

Modern microscope automation permits the collection of vast amounts of continuous anatomical imagery in both two and three dimensions. These large data sets present significant challenges for data storage, access, viewing, annotation and analysis. The cost and overhead of collecting and storing the data can be extremely high. Large data sets quickly exceed an individual's capability for timely analysis and present challenges in efficiently applying transforms, if needed. Finally annotated anatomical data sets can represent a significant investment of resources and should be easily accessible to the scientific community. The Viking application was our solution created to view and annotate a 16.5 TB ultrastructural retinal connectome volume and we demonstrate its utility in reconstructing neural networks for a distinctive retinal amacrine cell class. Viking has several key features. (1) It works over the internet using HTTP and supports many concurrent users limited only by hardware. (2) It supports a multi-user, collaborative annotation strategy. (3) It cleanly demarcates viewing and analysis from data collection and hosting. (4) It is capable of applying transformations in real-time. (5) It has an easily extensible user interface, allowing addition of specialized modules without rewriting the viewer.
机译:现代的显微镜自动化技术可以收集二维和三维的大量连续解剖图像。这些大型数据集对数据存储,访问,查看,注释和分析提出了重大挑战。收集和存储数据的成本和开销可能非常高。大数据集迅速超出了个人及时分析的能力,并在需要时提出了如何有效应用转换的挑战。最后,带注释的解剖数据集可以代表对资源的重大投资,并且科学界应该易于访问。 Viking应用程序是我们为查看和注释16.5 TB超微结构视网膜连接体体积而创建的解决方案,我们展示了其在重建独特的视网膜无长突细胞类型的神经网络中的效用。维京人有几个关键特征。 (1)它使用HTTP在Internet上运行,并支持许多仅受硬件限制的并发用户。 (2)它支持多用户协作注释策略。 (3)清楚地将查看和分析与数据收集和托管区分开来。 (4)能够实时应用转换。 (5)它具有易于扩展的用户界面,允许在不重写查看器的情况下添加专用模块。

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