Visinity: Visual Spatial Neighborhood Analysis for Multiplexed Tissue Imaging Data

Author:

Warchol SimonORCID,Krueger RobertORCID,Nirmal Ajit JohnsonORCID,Gaglia GiorgioORCID,Jessup JaredORCID,Ritch Cecily C.ORCID,Hoffer JohnORCID,Muhlich JeremyORCID,Burger Megan L.ORCID,Jacks TylerORCID,Santagata SandroORCID,Sorger Peter K.ORCID,Pfister HanspeterORCID

Abstract

AbstractNew highly-multiplexed imaging technologies have enabled the study of tissues in unprecedented detail. These methods are increasingly being applied to understand how cancer cells and immune response change during tumor development, progression, and metastasis, as well as following treatment. Yet, existing analysis approaches focus on investigating small tissue samples on a per-cell basis, not taking into account the spatial proximity of cells, which indicates cell-cell interaction and specific biological processes in the larger cancer microenvironment. We present Visinity, a scalable visual analytics system to analyze cell interaction patterns across cohorts of whole-slide multiplexed tissue images. Our approach is based on a fast regional neighborhood computation, leveraging unsupervised learning to quantify, compare, and group cells by their surrounding cellular neighborhood. These neighborhoods can be visually analyzed in an exploratory and confirmatory workflow. Users can explore spatial patterns present across tissues through a scalable image viewer and coordinated views highlighting the neighborhood composition and spatial arrangements of cells. To verify or refine existing hypotheses, users can query for specific patterns to determine their presence and statistical significance. Findings can be interactively annotated, ranked, and compared in the form of small multiples. In two case studies with biomedical experts, we demonstrate that Visinity can identify common biological processes within a human tonsil and uncover novel white-blood cell networks and immune-tumor interactions.

Publisher

Cold Spring Harbor Laboratory

Reference98 articles.

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