4.6 Article

The ImageJ ecosystem: Open-source software for image visualization, processing, and analysis

Journal

PROTEIN SCIENCE
Volume 30, Issue 1, Pages 234-249

Publisher

WILEY
DOI: 10.1002/pro.3993

Keywords

Fiji; image analysis; ImageJ; imaging; microscopy; open source software

Funding

  1. Chan Zuckerberg Initiative
  2. Deutsche Forschungsgemeinschaft [JU 3110/1-1, TO563/8-1]
  3. European Regional Development Fund [CZ.02.1.01/0.0/0.0/16_013/0001791]
  4. German Federal Ministry of Research and Education [01IS18026C, 031L0102]
  5. Morgridge Institute for Research
  6. National Institute of General Medical Sciences [P41-GM135019]
  7. Retina Research Foundation Walter H. Helmerich Professorship

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ImageJ is an open-source image analysis software platform that has adapted to the challenges posed by advancements in imaging technology through collaboration with user and developer communities. It offers a vast collection of user-centric plugins to meet the diverse needs of users and has introduced new functionalities like deep learning to enhance biological image analysis. The ImageJ ecosystem has been shaped by profound architectural changes brought about by the ImageJ2 project, leading to improved multidimensional image processing and interoperability.
For decades, biologists have relied on software to visualize and interpret imaging data. As techniques for acquiring images increase in complexity, resulting in larger multidimensional datasets, imaging software must adapt. ImageJ is an open-source image analysis software platform that has aided researchers with a variety of image analysis applications, driven mainly by engaged and collaborative user and developer communities. The close collaboration between programmers and users has resulted in adaptations to accommodate new challenges in image analysis that address the needs of ImageJ's diverse user base. ImageJ consists of many components, some relevant primarily for developers and a vast collection of user-centric plugins. It is available in many forms, including the widely used Fiji distribution. We refer to this entire ImageJ codebase and community as the ImageJ ecosystem. Here we review the core features of this ecosystem and highlight how ImageJ has responded to imaging technology advancements with new plugins and tools in recent years. These plugins and tools have been developed to address user needs in several areas such as visualization, segmentation, and tracking of biological entities in large, complex datasets. Moreover, new capabilities for deep learning are being added to ImageJ, reflecting a shift in the bioimage analysis community towards exploiting artificial intelligence. These new tools have been facilitated by profound architectural changes to the ImageJ core brought about by the ImageJ2 project. Therefore, we also discuss the contributions of ImageJ2 to enhancing multidimensional image processing and interoperability in the ImageJ ecosystem.

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