Journal article
EM-stellar: benchmarking deep learning for electron microscopy image segmentation
A Khadangi, T Boudier, V Rajagopal
Bioinformatics | OXFORD UNIV PRESS | Published : 2021
Abstract
Motivation: The inherent low contrast of electron microscopy (EM) datasets presents a significant challenge for rapid segmentation of cellular ultrastructures from EM data. This challenge is particularly prominent when working with high-resolution big-datasets that are now acquired using electron tomography and serial block-face imaging techniques. Deep learning (DL) methods offer an exciting opportunity to automate the segmentation process by learning from manual annotations of a small sample of EM data. While many DL methods are being rapidly adopted to segment EM data no benchmark analysis has been conducted on these methods to date. Results: We present EM-stellar, a platform that is host..
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Funding Acknowledgements
This research was undertaken using the LIEF HPC-GPGPU Facility hosted at the University of Melbourne. This Facility was established with the assistance of [LIEF Grant LE170100200]. We also thank Dr. Brian Glancy at NIH/NHLBI for access to the FIB-SEM data.