Deep learning based domain adaptation for mitochondria segmentation on EM volumes
Daniel Franco-Barranco, Julio Pastor-Tronch, Aitor, Gonzalez-Marfil, Arrate Mu\~noz-Barrutia, Ignacio Arganda-Carreras

TL;DR
This paper introduces three unsupervised domain adaptation strategies to improve mitochondria segmentation in electron microscopy images across different datasets, addressing the challenge of domain shift in deep learning models.
Contribution
The work proposes novel unsupervised domain adaptation methods, including style transfer, self-supervised pre-training, and multi-task learning, tailored for mitochondria segmentation in EM volumes.
Findings
Proposed methods outperform baseline models.
Strategies compare favorably to state-of-the-art approaches.
Morphology-based stopping criterion is effective without validation labels.
Abstract
Accurate segmentation of electron microscopy (EM) volumes of the brain is essential to characterize neuronal structures at a cell or organelle level. While supervised deep learning methods have led to major breakthroughs in that direction during the past years, they usually require large amounts of annotated data to be trained, and perform poorly on other data acquired under similar experimental and imaging conditions. This is a problem known as domain adaptation, since models that learned from a sample distribution (or source domain) struggle to maintain their performance on samples extracted from a different distribution or target domain. In this work, we address the complex case of deep learning based domain adaptation for mitochondria segmentation across EM datasets from different tissues and species. We present three unsupervised domain adaptation strategies to improve mitochondria…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Advanced Electron Microscopy Techniques and Applications · Machine Learning in Materials Science
