Self-Supervised Z-Slice Augmentation for 3D Bio-Imaging via Knowledge Distillation.

ArXiv Pub Date : 2025-03-17
Alessandro Pasqui, Sajjad Mahdavi, Benoit Vianay, Alexandra Colin, Rémi Dumollard, Alex McDougall, Yekaterina A Miroshnikova, Elsa Labrune, Hervé Turlier
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Abstract

Three-dimensional biological microscopy has significantly advanced our understanding of complex biological structures. However, limitations due to microscopy techniques, sample properties or phototoxicity often result in poor z-resolution, hindering accurate cellular measurements. Here, we introduce ZAugNet, a fast, accurate, and self-supervised deep learning method for enhancing z-resolution in biological images. By performing nonlinear interpolation between consecutive slices, ZAugNet effectively doubles resolution with each iteration. Compared on several microscopy modalities and biological objects, it outperforms competing methods on most metrics. Our method leverages a generative adversarial network (GAN) architecture combined with knowledge distillation to maximize prediction speed without compromising accuracy. We also developed ZAugNet+, an extended version enabling continuous interpolation at arbitrary distances, making it particularly useful for datasets with nonuniform slice spacing. Both ZAugNet and ZAugNet+ provide high-performance, scalable z-slice augmentation solutions for large-scale 3D imaging. They are available as open-source frameworks in PyTorch, with an intuitive Colab notebook interface for easy access by the scientific community.

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ZAugNet用于生物成像中的z层增强。
三维生物显微镜极大地提高了我们对复杂生物结构的理解。然而,由于显微镜技术、样品性质或光毒性的限制,往往导致z分辨率差,阻碍了准确的细胞测量。在这里,我们介绍了ZAugNet,一种快速、准确、自监督的深度学习方法,用于提高生物图像的z分辨率。通过在连续切片之间执行非线性插值,ZAugNet在每次迭代中有效地将分辨率提高一倍。在几种显微镜模式和生物对象的比较,它优于竞争的方法在大多数指标。我们的方法利用生成对抗网络(GAN)架构与知识蒸馏相结合,在不影响准确性的情况下最大化预测速度。我们还开发了ZAugNet+,这是一个扩展版本,可以在任意距离上连续插值,使其对具有非均匀切片间距的数据集特别有用。ZAugNet和ZAugNet+都为大规模3D成像提供高性能、可扩展的z片增强解决方案。它们在PyTorch中作为开源框架可用,具有直观的Colab笔记本界面,方便科学界访问。
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