Back to Search Start Over

Detecting Temporal shape changes with the Euler Characteristic Transform

Authors :
Marsh, Lewis
Zhou, Felix Y.
Qin, Xiao
Lu, Xin
Byrne, Helen M.
Harrington, Heather A.
Publication Year :
2022

Abstract

Organoids are multi-cellular structures which are cultured in vitro from stem cells to resemble specific organs (e.g., brain, liver) in their three-dimensional composition. Dynamic changes in the shape and composition of these model systems can be used to understand the effect of mutations and treatments in health and disease. In this paper, we propose a new technique in the field of topological data analysis for DEtecting Temporal shape changes with the Euler Characteristic Transform (DETECT). DETECT is a rotationally invariant signature of dynamically changing shapes. We demonstrate our method on a data set of segmented videos of mouse small intestine organoid experiments and show that it outperforms classical shape descriptors. We verify our method on a synthetic organoid data set and illustrate how it generalises to 3D. We conclude that DETECT offers rigorous quantification of organoids and opens up computationally scalable methods for distinguishing different growth regimes and assessing treatment effects.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2212.10883
Document Type :
Working Paper