TMA-Grid: An open-source, zero-footprint web application for FAIR Tissue MicroArray De-arraying
Aaron Ge, Monjoy Saha, Maire A. Duggan, Petra Lenz, Mustapha Abubakar,, Montserrat Garc\'ia-Closas, Jeya Balasubramanian, Jonas S. Almeida, Praphulla, MS Bhawsar

TL;DR
TMA-Grid is a browser-based, open-source web application that automates tissue microarray de-arraying using neural networks, ensuring data privacy and facilitating FAIR-compliant workflows in histopathology research.
Contribution
It introduces a novel, interactive, zero-footprint web tool for TMA de-arraying that integrates deep learning and grid estimation, improving accuracy and usability over traditional desktop solutions.
Findings
Accurately segments tissue cores using CNN.
Effectively matches cores to expected locations.
Operates entirely within web browsers, ensuring privacy.
Abstract
Background: Tissue Microarrays (TMAs) significantly increase analytical efficiency in histopathology and large-scale epidemiologic studies by allowing multiple tissue cores to be scanned on a single slide. The individual cores can be digitally extracted and then linked to metadata for analysis in a process known as de-arraying. However, TMAs often contain core misalignments and artifacts due to assembly errors, which can adversely affect the reliability of the extracted cores during the de-arraying process. Moreover, conventional approaches for TMA de-arraying rely on desktop solutions.Therefore, a robust yet flexible de-arraying method is crucial to account for these inaccuracies and ensure effective downstream analyses. Results: We developed TMA-Grid, an in-browser, zero-footprint, interactive web application for TMA de-arraying. This web application integrates a convolutional…
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Taxonomy
TopicsAI in cancer detection · Radiomics and Machine Learning in Medical Imaging
