TY - JOUR
T1 - Quantifying Topology In Pancreatic Tubular Networks From Live Imaging 3D
Microscopy
AU - Arnavaz, Kasra
AU - Krause, Oswin
AU - Zepf, Kilian
AU - Krivokapic, Jelena M.
AU - Heilmann, Silja
AU - Bærentzen, Jakob Andreas
AU - Nyeng, Pia
AU - Feragen, Aasa
PY - 2022
Y1 - 2022
N2 - Motivated by the challenging segmentation task of pancreatic tubular
networks, this paper tackles two commonly encountered problems in biomedical
imaging: Topological consistency of the segmentation, and expensive or
difficult annotation. Our contributions are the following: a) We propose a
topological score which measures both topological and geometric consistency
between the predicted and ground truth segmentations, applied to model
selection and validation. b) We provide a full deep-learning methodology for
this difficult noisy task on time-series image data. In our method, we first
use a semisupervised U-net architecture, applicable to generic segmentation
tasks, which jointly trains an autoencoder and a segmentation network. We then
use tracking of loops over time to further improve the predicted topology. This
semi-supervised approach allows us to utilize unannotated data to learn feature
representations that generalize to test data with high variability, in spite of
our annotated training data having very limited variation. Our contributions
are validated on a challenging segmentation task, locating tubular structures
in the fetal pancreas from noisy live imaging confocal microscopy. We show that
our semi-supervised model outperforms not only fully supervised and pre-trained
models but also an approach which takes topological consistency into account
during training. Further, our approach achieves a mean loop score of 0.808 for
detecting loops in the fetal pancreas, compared to a U-net trained with clDice
with mean loop score 0.762.
AB - Motivated by the challenging segmentation task of pancreatic tubular
networks, this paper tackles two commonly encountered problems in biomedical
imaging: Topological consistency of the segmentation, and expensive or
difficult annotation. Our contributions are the following: a) We propose a
topological score which measures both topological and geometric consistency
between the predicted and ground truth segmentations, applied to model
selection and validation. b) We provide a full deep-learning methodology for
this difficult noisy task on time-series image data. In our method, we first
use a semisupervised U-net architecture, applicable to generic segmentation
tasks, which jointly trains an autoencoder and a segmentation network. We then
use tracking of loops over time to further improve the predicted topology. This
semi-supervised approach allows us to utilize unannotated data to learn feature
representations that generalize to test data with high variability, in spite of
our annotated training data having very limited variation. Our contributions
are validated on a challenging segmentation task, locating tubular structures
in the fetal pancreas from noisy live imaging confocal microscopy. We show that
our semi-supervised model outperforms not only fully supervised and pre-trained
models but also an approach which takes topological consistency into account
during training. Further, our approach achieves a mean loop score of 0.808 for
detecting loops in the fetal pancreas, compared to a U-net trained with clDice
with mean loop score 0.762.
KW - Topological consistency
KW - Semisupervised
KW - Segmentation
KW - Tubular
KW - Confocal microscopy
M3 - Journal article
SN - 2766-905X
JO - Journal of Machine Learning for Biomedical Imaging
JF - Journal of Machine Learning for Biomedical Imaging
ER -