Visual cohort comparison for spatial single-cell omics-data

Journal Article (2021)
Authors

Antonios Somarakis (Universiteit Leiden)

Marieke E. Ijsselsteijn (Leiden University Medical Center)

Sietse J. Luk (Universiteit Leiden)

Boyd Kenkhuis (Universiteit Leiden)

Noel F. C. C. De Miranda (Leiden University Medical Center)

Boudewijn P F Lelieveldt (Universiteit Leiden)

Thomas Höllt (TU Delft - Computer Graphics and Visualisation)

Research Group
Computer Graphics and Visualisation
Copyright
© 2021 Antonios Somarakis, Marieke E. Ijsselsteijn, Sietse J. Luk, Boyd Kenkhuis, Noel F. C. C. de Miranda, B.P.F. Lelieveldt, T. Höllt
To reference this document use:
https://doi.org/10.1109/TVCG.2020.3030336
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 Antonios Somarakis, Marieke E. Ijsselsteijn, Sietse J. Luk, Boyd Kenkhuis, Noel F. C. C. de Miranda, B.P.F. Lelieveldt, T. Höllt
Research Group
Computer Graphics and Visualisation
Issue number
2
Volume number
27
Pages (from-to)
733 - 743
DOI:
https://doi.org/10.1109/TVCG.2020.3030336
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Abstract

Spatially-resolved omics-data enable researchers to precisely distinguish cell types in tissue and explore their spatial interactions, enabling deep understanding of tissue functionality. To understand what causes or deteriorates a disease and identify related biomarkers, clinical researchers regularly perform large-scale cohort studies, requiring the comparison of such data at cellular level. In such studies, with little a-priori knowledge of what to expect in the data, explorative data analysis is a necessity. Here, we present an interactive visual analysis workflow for the comparison of cohorts of spatially-resolved omics-data. Our workflow allows the comparative analysis of two cohorts based on multiple levels-of-detail, from simple abundance of contained cell types over complex co-localization patterns to individual comparison of complete tissue images. As a result, the workflow enables the identification of cohort-differentiating features, as well as outlier samples at any stage of the workflow. During the development of the workflow, we continuously consulted with domain experts. To show the effectiveness of the workflow, we conducted multiple case studies with domain experts from different application areas and with different data modalities.

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