Topological classification of tumour-immune interactions and dynamics
Jingjie Yang, Heidi Fang, Jagdeep Dhesi, Iris H.R. Yoon, Joshua A., Bull, Helen M. Byrne, Heather A. Harrington, Gillian Grindstaff

TL;DR
This paper introduces a topological data analysis approach to predict tumour-immune interaction outcomes from spatial cell data, outperforming traditional markers in early detection of tumour escape.
Contribution
It develops four specialized topological vectorizations for spatial cell data and demonstrates their effectiveness in early prediction of tumour metastasis in synthetic models.
Findings
Topological methods predict perivascular niche formation earlier than traditional markers.
Dimension 0 persistence of macrophage data is most effective at early stages.
Time-dependent topological data improves classification accuracy.
Abstract
The complex and dynamic crosstalk between tumour and immune cells results in tumours that can exhibit distinct qualitative behaviours - elimination, equilibrium, and escape - and intricate spatial patterns, yet share similar cell configurations in the early stages. We offer a topological approach to analyse time series of spatial data of cell locations (including tumour cells and macrophages) in order to predict malignant behaviour. We propose four topological vectorisations specialised to such cell data: persistence images of Vietoris-Rips and radial filtrations at static time points, and persistence images for zigzag filtrations and persistence vineyards varying in time. To demonstrate the approach, synthetic data are generated from an agent-based model with varying parameters. We compare the performance of topological summaries in predicting - with logistic regression at various time…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Topological and Geometric Data Analysis · Bioinformatics and Genomic Networks
MethodsLogistic Regression
