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Fast, Simple Calcium Imaging Segmentation with Fully Convolutional Networks...

by Alex Klibisz, Derek C Rose, Matthew R Eicholtz, Jay Blundon, Stanislav Zakharenko
Publication Type
Conference Paper
Book Title
Deep Learning in Medical Image Analysis and Multimodal Learning for Clinical Decision Support
Publication Date
Page Numbers
285 to 293
Volume
10553
Publisher Location
New York, New York, United States of America
Conference Name
International Workshop on Deep Learning in Medical Image Analysis (DMLIA 2017)
Conference Location
Quebec City, Canada
Conference Sponsor
Various
Conference Date

Calcium imaging is a technique for observing neuron activity as a series of images showing indicator fluorescence over time. Manually segmenting neurons is time-consuming, leading to research on automated calcium imaging segmentation (ACIS). We evaluated several deep learning models for ACIS on the Neurofinder competition datasets and report our best model: U-Net2DS, a fully convolutional network that operates on 2D mean summary images. U-Net2DS requires minimal domain-specific pre/post-processing and parameter adjustment, and predictions are made on full 512×512 images at ≈9K images per minute. It ranks third in the Neurofinder competition (F1=0.57) and is the best model to exclusively use deep learning. We also demonstrate useful segmentations on data from outside the competition. The model’s simplicity, speed, and quality results make it a practical choice for ACIS and a strong baseline for more complex models in the future.