Podcast cover for "BioimageAIpub: a toolbox for AI-ready bioimaging data publishing" by Stefan Dvoretskii et al.
Episode

BioimageAIpub: a toolbox for AI-ready bioimaging data publishing

Dec 17, 20257:12
eess.IVComputer Vision and Pattern Recognition
No ratings yet

Abstract

Modern bioimage analysis approaches are data hungry, making it necessary for researchers to scavenge data beyond those collected within their (bio)imaging facilities. In addition to scale, bioimaging datasets must be accompanied with suitable, high-quality annotations and metadata. Although established data repositories such as the Image Data Resource (IDR) and BioImage Archive offer rich metadata, their contents typically cannot be directly consumed by image analysis tools without substantial data wrangling. Such a tedious assembly and conversion of (meta)data can account for a dedicated amount of time investment for researchers, hindering the development of more powerful analysis tools. Here, we introduce BioimageAIpub, a workflow that streamlines bioimaging data conversion, enabling a seamless upload to HuggingFace, a widely used platform for sharing machine learning datasets and models.

Links & Resources

Authors

Cite This Paper

Year:2025
Category:eess.IV
APA

Dvoretskii, S., Archit, A., Pape, C., Moore, J., Nolden, M. (2025). BioimageAIpub: a toolbox for AI-ready bioimaging data publishing. arXiv preprint arXiv:2512.15820.

MLA

Stefan Dvoretskii, Anwai Archit, Constantin Pape, Josh Moore, and Marco Nolden. "BioimageAIpub: a toolbox for AI-ready bioimaging data publishing." arXiv preprint arXiv:2512.15820 (2025).