弥合差距:与deepImageJ整合尖端技术到生物成像。

Biological imaging Pub Date : 2024-11-22 eCollection Date: 2024-01-01 DOI:10.1017/S2633903X24000114
Caterina Fuster-Barceló, Carlos García-López-de-Haro, Estibaliz Gómez-de-Mariscal, Wei Ouyang, Jean-Christophe Olivo-Marin, Daniel Sage, Arrate Muñoz-Barrutia
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引用次数: 0

摘要

这份手稿展示了deepImageJ的最新进展,这是一个关键的斐济/ImageJ插件,用于生命科学中的生物图像分析。该插件以其用户友好的界面而闻名,有助于将各种预训练的卷积神经网络应用于自定义数据。该手稿演示了几种deepImageJ功能,特别是在部署复杂的管道,三维(3D)图像分析和处理大型图像方面。一个关键的发展是Java深度学习库的集成,扩展了deepImageJ与各种深度学习(DL)框架的兼容性,包括TensorFlow, PyTorch和ONNX。这允许在单个Fiji/ImageJ实例中运行多个引擎,简化复杂的生物图像分析工作流程。手稿详细介绍了三个案例研究来演示这些功能。第一个案例研究探讨了综合图像到图像的翻译,然后是核分割。第二个案例研究的重点是三维核分割。第三个案例研究展示了大图像体积分割和与生物图像模型动物园的兼容性。这些用例强调了deepImageJ的多功能性和强大功能,使高级dll更易于访问和高效地用于生物图像分析。deepImageJ的新发展旨在提供更灵活和丰富的用户友好框架,以实现生命科学中的下一代图像处理。
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Bridging the gap: Integrating cutting-edge techniques into biological imaging with deepImageJ.

This manuscript showcases the latest advancements in deepImageJ, a pivotal Fiji/ImageJ plugin for bioimage analysis in life sciences. The plugin, known for its user-friendly interface, facilitates the application of diverse pre-trained convolutional neural networks to custom data. The manuscript demonstrates several deepImageJ capabilities, particularly in deploying complex pipelines, three-dimensional (3D) image analysis, and processing large images. A key development is the integration of the Java Deep Learning Library, expanding deepImageJ's compatibility with various deep learning (DL) frameworks, including TensorFlow, PyTorch, and ONNX. This allows for running multiple engines within a single Fiji/ImageJ instance, streamlining complex bioimage analysis workflows. The manuscript details three case studies to demonstrate these capabilities. The first case study explores integrated image-to-image translation followed by nuclei segmentation. The second case study focuses on 3D nuclei segmentation. The third case study showcases large image volume segmentation and compatibility with the BioImage Model Zoo. These use cases underscore deepImageJ's versatility and power to make advanced DLmore accessible and efficient for bioimage analysis. The new developments within deepImageJ seek to provide a more flexible and enriched user-friendly framework to enable next-generation image processing in life science.

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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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