2020
DOI: 10.31219/osf.io/wd2gu
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Viv: Multiscale Visualization of High-Resolution Multiplexed Bioimaging Data on the Web

Abstract: Recent advances in highly multiplexed imaging have enabled the comprehensive profiling of complex tissues in healthy and diseased states, facilitating the study of fundamental biology and human disease in spatially-resolved contexts at subcellular resolution. However, current computational infrastructure to distribute and visualize these data on the web remains complex to set up and maintain. To address these limitations, we have developed Viv—an open-source image visualization library for high-resolution mult… Show more

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Cited by 12 publications
(13 citation statements)
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“…To address this problem, we will likely have to abandon our initial design goal of retaining the data on our collaborator's Google Drive so that Loon integrates nicely with their workflow. Imagepyramid-based approaches have been successfully used for microscopy visualization [26], and combined with other precomputations and efficient data structures, we expect to achieve significantly improved performance.…”
Section: Discussionmentioning
confidence: 99%
“…To address this problem, we will likely have to abandon our initial design goal of retaining the data on our collaborator's Google Drive so that Loon integrates nicely with their workflow. Imagepyramid-based approaches have been successfully used for microscopy visualization [26], and combined with other precomputations and efficient data structures, we expect to achieve significantly improved performance.…”
Section: Discussionmentioning
confidence: 99%
“…To address this problem, we will likely have to abandon our initial design goal of retaining the data on our collaborator's Google Drive so that Loon integrates nicely with their workflow. Imagepyramid based approaches have been successfully used for microscopy visualization [26] and combined with other pre-computations and efficient data structures, we expect to achieve significantly improved performance.…”
Section: Discussionmentioning
confidence: 99%
“…We implemented client-side data loaders for accessing files stored on static web servers and cloud object stores, including for Zarr 12 , AnnData 4 , JSON and OME-TIFF [13][14][15] . Vitessce integrates the previously described Viv 16 and HiGlass 17 toolkits for visualization of multi-scale multiplexed imaging data and genome-mapped data, respectively.…”
Section: Mainmentioning
confidence: 99%