HCCVGROct 10, 2021

Scope2Screen: Focus+Context Techniques for Pathology Tumor Assessment in Multivariate Image Data

arXiv:2110.04875v121 citations
Originality Incremental advance
AI Analysis

This addresses the problem of effectively supporting pathology workflows in digital environments for diagnosing diseases like cancer, though it appears incremental as it builds on existing focus+context techniques.

The paper tackles the challenge of visualizing and analyzing highly multiplexed tissue image data in pathology workflows by developing Scope2Screen, a scalable software system that enables focus+context exploration and annotation of whole-slide images, handling up to 100GB images with millions of cells, and validates it through case studies in lung and colorectal cancers to discover cancer-relevant features.

Inspection of tissues using a light microscope is the primary method of diagnosing many diseases, notably cancer. Highly multiplexed tissue imaging builds on this foundation, enabling the collection of up to 60 channels of molecular information plus cell and tissue morphology using antibody staining. This provides unique insight into disease biology and promises to help with the design of patient-specific therapies. However, a substantial gap remains with respect to visualizing the resulting multivariate image data and effectively supporting pathology workflows in digital environments on screen. We, therefore, developed Scope2Screen, a scalable software system for focus+context exploration and annotation of whole-slide, high-plex, tissue images. Our approach scales to analyzing 100GB images of 10^9 or more pixels per channel, containing millions of cells. A multidisciplinary team of visualization experts, microscopists, and pathologists identified key image exploration and annotation tasks involving finding, magnifying, quantifying, and organizing ROIs in an intuitive and cohesive manner. Building on a scope2screen metaphor, we present interactive lensing techniques that operate at single-cell and tissue levels. Lenses are equipped with task-specific functionality and descriptive statistics, making it possible to analyze image features, cell types, and spatial arrangements (neighborhoods) across image channels and scales. A fast sliding-window search guides users to regions similar to those under the lens; these regions can be analyzed and considered either separately or as part of a larger image collection. A novel snapshot method enables linked lens configurations and image statistics to be saved, restored, and shared. We validate our designs with domain experts and apply Scope2Screen in two case studies involving lung and colorectal cancers to discover cancer-relevant image features.

Code Implementations1 repo
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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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