PSSR2:一个用户友好的Python包,用于普及基于深度学习的点扫描超分辨率显微镜。

BMC methods Pub Date : 2025-01-01 Epub Date: 2025-01-02 DOI:10.1186/s44330-024-00020-5
Hayden C Stites, Uri Manor
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引用次数: 0

摘要

背景:为了解决大规模高质量显微镜图像采集的局限性,引入了PSSR(点扫描超分辨率)技术,利用基于深度学习的方法将容易获得的低质量显微镜数据提高到更高质量。然而,当PSSR作为开源发布时,由于过时的代码库,用户很难将其实现到他们的工作流中,从而限制了潜在用户的使用。此外,虽然PSSR提供的数据增强是显著的,但仍有进一步改进的潜力。方法:为了克服这一点,我们引入了PSSR2,这是一种重新设计的PSSR工作流程和方法,旨在将最先进的技术引入一般显微镜和生物学研究界。PSSR2能够用户友好地实现超分辨率工作流程,同时对采样不足的显微镜数据进行超分辨率和去噪,特别是通过其集成的命令行界面和Napari插件。PSSR2改进并扩展了先前建立的PSSR算法,主要通过改进半合成数据生成(“垃圾化”)和训练过程。结果:在配对高分辨率和低分辨率电子显微镜图像的测试数据集上对PSSR2进行基准测试时,PSSR2从低分辨率图像中超分辨高分辨率图像的精度明显高于PSSR。超分辨率图像在视觉上也更能代表真实世界的高分辨率图像。讨论:PSSR2的改进,在提供更高质量的图像方面,应该提高下游分析的性能。我们注意到,对于精确的超分辨率,PSSR2模型应该只应用于与训练数据足够相似的超分辨率数据,并且应该针对真实世界的真实数据进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

PSSR2: a user-friendly Python package for democratizing deep learning-based point-scanning super-resolution microscopy.

PSSR2: a user-friendly Python package for democratizing deep learning-based point-scanning super-resolution microscopy.

Background: To address the limitations of large-scale high quality microscopy image acquisition, PSSR (Point-Scanning Super-Resolution) was introduced to enhance easily acquired low quality microscopy data to a higher quality using deep learning-based methods. However, while PSSR was released as open-source, it was difficult for users to implement into their workflows due to an outdated codebase, limiting its usage by prospective users. Additionally, while the data enhancements provided by PSSR were significant, there was still potential for further improvement.

Methods: To overcome this, we introduce PSSR2, a redesigned implementation of PSSR workflows and methods built to put state-of-the-art technology into the hands of the general microscopy and biology research community. PSSR2 enables user-friendly implementation of super-resolution workflows for simultaneous super-resolution and denoising of undersampled microscopy data, especially through its integrated Command Line Interface and Napari plugin. PSSR2 improves and expands upon previously established PSSR algorithms, mainly through improvements in the semi-synthetic data generation ("crappification") and training processes.

Results: In benchmarking PSSR2 on a test dataset of paired high and low resolution electron microscopy images, PSSR2 super-resolves high-resolution images from low-resolution images to a significantly higher accuracy than PSSR. The super-resolved images are also more visually representative of real-world high-resolution images.

Discussion: The improvements in PSSR2, in providing higher quality images, should improve the performance of downstream analyses. We note that for accurate super-resolution, PSSR2 models should only be applied to super-resolve data sufficiently similar to training data and should be validated against real-world ground truth data.

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