Deep-learning-based image compression for microscopy images: An empirical study.

Biological imaging Pub Date : 2024-12-20 eCollection Date: 2024-01-01 DOI:10.1017/S2633903X24000151
Yu Zhou, Jan Sollmann, Jianxu Chen
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Abstract

With the fast development of modern microscopes and bioimaging techniques, an unprecedentedly large amount of imaging data is being generated, stored, analyzed, and shared through networks. The size of the data poses great challenges for current data infrastructure. One common way to reduce the data size is by image compression. This study analyzes multiple classic and deep-learning-based image compression methods, as well as an empirical study on their impact on downstream deep-learning-based image processing models. We used deep-learning-based label-free prediction models (i.e., predicting fluorescent images from bright-field images) as an example downstream task for the comparison and analysis of the impact of image compression. Different compression techniques are compared in compression ratio, image similarity, and, most importantly, the prediction accuracy of label-free models on original and compressed images. We found that artificial intelligence (AI)-based compression techniques largely outperform the classic ones with minimal influence on the downstream 2D label-free tasks. In the end, we hope this study could shed light on the potential of deep-learning-based image compression and raise the awareness of the potential impacts of image compression on downstream deep-learning models for analysis.

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基于深度学习的显微图像压缩:实证研究。
随着现代显微镜和生物成像技术的快速发展,前所未有的大量成像数据正在通过网络生成、存储、分析和共享。数据的规模给当前的数据基础设施带来了巨大的挑战。减少数据大小的一种常用方法是图像压缩。本研究分析了多种经典和基于深度学习的图像压缩方法,并实证研究了它们对下游基于深度学习的图像处理模型的影响。我们使用基于深度学习的无标签预测模型(即从亮场图像中预测荧光图像)作为下游任务的示例,用于比较和分析图像压缩的影响。比较了不同的压缩技术在压缩比、图像相似度以及最重要的是无标签模型在原始图像和压缩图像上的预测精度。我们发现基于人工智能(AI)的压缩技术在很大程度上优于经典的压缩技术,对下游2D无标签任务的影响最小。最后,我们希望本研究能够揭示基于深度学习的图像压缩的潜力,并提高人们对图像压缩对下游深度学习模型进行分析的潜在影响的认识。
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Deep-learning-based image compression for microscopy images: An empirical study. The quest for early detection of retinal disease: 3D CycleGAN-based translation of optical coherence tomography into confocal microscopy. Bridging the gap: Integrating cutting-edge techniques into biological imaging with deepImageJ. Deep-blur: Blind identification and deblurring with convolutional neural networks. Exploring self-supervised learning biases for microscopy image representation.
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