Microsnoop: A generalist tool for microscopy image representation

IF 33.2 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES The Innovation Pub Date : 2024-01-02 DOI:10.1016/j.xinn.2023.100541
Dejin Xun, Rui Wang, Xingcai Zhang, Yi Wang
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Abstract

Accurate profiling of microscopy images from small scale to high throughput is an essential procedure in basic and applied biological research. Here, we present Microsnoop, a novel deep learning–based representation tool trained on large-scale microscopy images using masked self-supervised learning. Microsnoop can process various complex and heterogeneous images, and we classified images into three categories: single-cell, full-field, and batch-experiment images. Our benchmark study on 10 high-quality evaluation datasets, containing over 2,230,000 images, demonstrated Microsnoop’s robust and state-of-the-art microscopy image representation ability, surpassing existing generalist and even several custom algorithms. Microsnoop can be integrated with other pipelines to perform tasks such as superresolution histopathology image and multimodal analysis. Furthermore, Microsnoop can be adapted to various hardware and can be easily deployed on local or cloud computing platforms. We will regularly retrain and reevaluate the model using community-contributed data to consistently improve Microsnoop.

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Microsnoop:显微镜图像表示的通用工具
从小规模到高通量显微镜图像的精确剖析是基础和应用生物研究中必不可少的程序。在此,我们介绍一种基于深度学习的新型表示工具 Microsnoop,它利用掩码自监督学习在大规模显微图像上进行训练。Microsnoop 可以处理各种复杂的异构图像,我们将图像分为三类:单细胞图像、全视野图像和批量实验图像。我们在 10 个高质量的评估数据集(包含超过 2,230,000 张图像)上进行了基准研究,结果表明 Microsnoop 具有强大而先进的显微图像表征能力,超越了现有的通用算法甚至几种定制算法。Microsnoop 可以与其他管道集成,执行超分辨率组织病理学图像和多模态分析等任务。此外,Microsnoop 还可适用于各种硬件,并可轻松部署在本地或云计算平台上。我们将定期利用社区贡献的数据对模型进行再训练和再评估,以不断改进 Microsnoop。
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来源期刊
The Innovation
The Innovation MULTIDISCIPLINARY SCIENCES-
CiteScore
38.30
自引率
1.20%
发文量
134
审稿时长
6 weeks
期刊介绍: The Innovation is an interdisciplinary journal that aims to promote scientific application. It publishes cutting-edge research and high-quality reviews in various scientific disciplines, including physics, chemistry, materials, nanotechnology, biology, translational medicine, geoscience, and engineering. The journal adheres to the peer review and publishing standards of Cell Press journals. The Innovation is committed to serving scientists and the public. It aims to publish significant advances promptly and provides a transparent exchange platform. The journal also strives to efficiently promote the translation from scientific discovery to technological achievements and rapidly disseminate scientific findings worldwide. Indexed in the following databases, The Innovation has visibility in Scopus, Directory of Open Access Journals (DOAJ), Web of Science, Emerging Sources Citation Index (ESCI), PubMed Central, Compendex (previously Ei index), INSPEC, and CABI A&I.
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