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Memory-efficient semantic segmentation of large microscopy images using graph-based neural networks

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MICROSCOPY
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OXFORD UNIV PRESS
DOI: 10.1093/jmicro/dfad049

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graph neural networks; semantic segmentation; deep learning; computer vision; machine learning; artificial intelligence

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A graph neural network-based framework is proposed for large-scale microscopy image segmentation tasks. The framework converts large-scale images into graphs using superpixels, allowing information from the entire image to be inputted. Comparisons between GNN-based and CNN-based segmentation show that the former requires significantly fewer computational resources with a minor change in accuracy.
We present a graph neural network (GNN)-based framework applied to large-scale microscopy image segmentation tasks. While deep learning models, like convolutional neural networks (CNNs), have become common for automating image segmentation tasks, they are limited by the image size that can fit in the memory of computational hardware. In a GNN framework, large-scale images are converted into graphs using superpixels (regions of pixels with similar color/intensity values), allowing us to input information from the entire image into the model. By converting images with hundreds of millions of pixels to graphs with thousands of nodes, we can segment large images using memory-limited computational resources. We compare the performance of GNN- and CNN-based segmentation in terms of accuracy, training time and required graphics processing unit memory. Based on our experiments with microscopy images of biological cells and cell colonies, GNN-based segmentation used one to three orders-of-magnitude fewer computational resources with only a change in accuracy of -2% to +0.3%. Furthermore, errors due to superpixel generation can be reduced by either using better superpixel generation algorithms or increasing the number of superpixels, thereby allowing for improvement in the GNN framework's accuracy. This trade-off between accuracy and computational cost over CNN models makes the GNN framework attractive for many large-scale microscopy image segmentation tasks in biology.

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