Unlabelled landmark matching via Bayesian data selection, and application to cell matching across imaging modalities

05/30/2022
by   Jessica E. Forsyth, et al.
0

We consider the problem of landmark matching between two unlabelled point sets, in particular where the number of points in each cloud may differ, and where points in each cloud may not have a corresponding match. We invoke a Bayesian framework to identify the transformation of coordinates that maps one cloud to the other, alongside correspondence of the points. This problem necessitates a novel methodology for Bayesian data selection; simultaneous inference of model parameters, and selection of the data which leads to the best fit of the model to the majority of the data. We apply this to a problem in developmental biology where the landmarks correspond to segmented cell centres, where potential death or division of cells can lead to discrepancies between the point-sets from each image. We validate the efficacy of our approach using in silico tests and a microinjected fluorescent marker experiment. Subsequently we apply our approach to the matching of cells between real time imaging and immunostaining experiments, facilitating the combination of single-cell data between imaging modalities. Furthermore our approach to Bayesian data selection is broadly applicable across data science, and has the potential to change the way we think about fitting models to data.

READ FULL TEXT

page 14

page 19

page 35

page 36

page 37

page 38

page 39

page 40

research
08/05/2022

Hierarchical Bayesian data selection

There are many issues that can cause problems when attempting to infer m...
research
04/20/2021

An Exact Hypergraph Matching Algorithm for Nuclear Identification in Embryonic Caenorhabditis elegans

Finding an optimal correspondence between point sets is a common task in...
research
09/25/2019

Automated identification of neural cells in the multi-photon images using deep-neural networks

The advancement of the neuroscientific imaging techniques has produced a...
research
01/25/2019

Finding Archetypal Spaces for Data Using Neural Networks

Archetypal analysis is a type of factor analysis where data is fit by a ...
research
03/25/2021

Learning landmark geodesics using Kalman ensembles

We study the problem of diffeomorphometric geodesic landmark matching wh...
research
01/06/2020

MREC: a fast and versatile framework for aligning and matching point clouds with applications to single cell molecular data

Comparing and aligning large datasets is a pervasive problem occurring a...
research
07/31/2023

A Flow Artist for High-Dimensional Cellular Data

We consider the problem of embedding point cloud data sampled from an un...

Please sign up or login with your details

Forgot password? Click here to reset