Morphologically-Aware Consensus Computation via Heuristics-based
IterATive Optimization (MACCHIatO)
- URL: http://arxiv.org/abs/2309.08066v2
- Date: Tue, 10 Oct 2023 14:10:05 GMT
- Title: Morphologically-Aware Consensus Computation via Heuristics-based
IterATive Optimization (MACCHIatO)
- Authors: Dimitri Hamzaoui, Sarah Montagne, Rapha\"ele Renard-Penna, Nicholas
Ayache, Herv\'e Delingette
- Abstract summary: We propose a new method to construct a binary or a probabilistic consensus segmentation based on the Fr'echet means of carefully chosen distances.
We show that it leads to binary consensus masks of intermediate size between Majority Voting and STAPLE and to different posterior probabilities than Mask Averaging and STAPLE methods.
- Score: 1.8749305679160362
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The extraction of consensus segmentations from several binary or
probabilistic masks is important to solve various tasks such as the analysis of
inter-rater variability or the fusion of several neural network outputs. One of
the most widely used methods to obtain such a consensus segmentation is the
STAPLE algorithm. In this paper, we first demonstrate that the output of that
algorithm is heavily impacted by the background size of images and the choice
of the prior. We then propose a new method to construct a binary or a
probabilistic consensus segmentation based on the Fr\'{e}chet means of
carefully chosen distances which makes it totally independent of the image
background size. We provide a heuristic approach to optimize this criterion
such that a voxel's class is fully determined by its voxel-wise distance to the
different masks, the connected component it belongs to and the group of raters
who segmented it. We compared extensively our method on several datasets with
the STAPLE method and the naive segmentation averaging method, showing that it
leads to binary consensus masks of intermediate size between Majority Voting
and STAPLE and to different posterior probabilities than Mask Averaging and
STAPLE methods. Our code is available at
https://gitlab.inria.fr/dhamzaou/jaccardmap .
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