Abstract

Quantitative measurements and qualitative description of scientific images are both important to describe the complexity of digital image data. While various software solutions for quantitative measurements in images exist, there is a lack of simple tools for the qualitative description of images in common user-oriented image analysis software. To address this issue, we developed a set of Fiji plugins that facilitate the systematic manual annotation of images or image-regions. From a list of user-defined keywords, these plugins generate an easy-to-use graphical interface with buttons or checkboxes for the assignment of single or multiple pre-defined categories to full images or individual regions of interest. In addition to qualitative annotations, any quantitative measurement from the standard Fiji options can also be automatically reported. Besides the interactive user interface, keyboard shortcuts are available to speed-up the annotation process for larger datasets. The annotations are reported in a Fiji result table that can be exported as a pre-formatted csv file, for further analysis with common spreadsheet software or custom automated pipelines. To facilitate and spread the usage of analysis tools, we provide examples of such pipelines, including a complete workflow for training and application of a deep learning model for image classification in KNIME. Ultimately, the plugins enable standardized routine sample evaluation, classification, or ground-truth category annotation of any digital image data compatible with Fiji.

Highlights

  • A common requirement of most imaging projects is to qualitatively describe images, either by assigning them to defined categories or by selecting a set of descriptive keywords

  • We developed a set of plugins for Fiji (Schindelin et al, 2012), to facilitate and standardize routine qualitative image annotations

  • Implementation We developed a set of Fiji plugins for the assignment of multiple pre-defined keywords to images

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Summary

15 Oct 2020 report report

This article is included in the NEUBIAS - the Bioimage Analysts Network gateway

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