GloBIAS: strengthening the foundations of BioImage Analysis
Agustin Andres Corbat, Christa G Walther, Laura Rodr\'iguez de la Ballina, Nicholas David Condon, Alessandro A Felder, Martin Sch\"atz, Bettina Schmerl, Ko Sugawara, Clara Prats, Anna Klemm, Florian Levet, Kota Miura, Paula Sampaio, Christian Tischer, Rocco D'Antuono

TL;DR
GloBIAS aims to strengthen the BioImage Analysis community by providing education, fostering a global network, and establishing guidelines, supported by a survey showing strong community interest and willingness to contribute financially.
Contribution
This work introduces GloBIAS, a new initiative to support BioImage Analysts through education, community building, and guidelines, backed by a comprehensive global survey.
Findings
High community interest in GloBIAS activities
Majority willing to pay for membership
Active engagement across career stages and continents
Abstract
There is a global need for BioImage Analysis (BIA) as advances in life sciences increasingly rely on cutting-edge imaging systems that have dramatically expanded the complexity and dimensionality of biological images. Turning these data into scientific discoveries requires people with effective data management skills and knowledge of state-of-the-art image processing and data analysis, in other words, BioImage Analysts. The Global BioImage Analysts' Society (GloBIAS) aims to enhance the profile of BioImage Analysts as a key role in science and research. Its vision encompasses fostering a global network, democratising access to BIA by providing educational resources tailored to various proficiency levels and disciplines, while also establishing guidelines for BIA courses. By collaboratively shaping the education of BioImage Analysts, GloBIAS aims to unlock the full potential of BIA in…
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