TOAICVJul 30, 2024

TMA-Grid: An open-source, zero-footprint web application for FAIR Tissue MicroArray De-arraying

arXiv:2407.21233v11 citationsh-index: 8Has Code
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This provides a user-friendly, web-based solution for histopathology researchers to improve TMA de-arraying accuracy and workflow efficiency, though it is incremental as it builds on existing methods with a new implementation.

The researchers tackled the problem of core misalignments and artifacts in Tissue MicroArray (TMA) de-arraying by developing TMA-Grid, an in-browser web application that integrates a convolutional neural network for segmentation and a grid estimation algorithm, resulting in a robust, interactive tool that eliminates the need for downloads and ensures data privacy.

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 neural network for precise tissue segmentation and a grid estimation algorithm to match each identified core to its expected location. The application emphasizes interactivity, allowing users to easily adjust segmentation and gridding results. Operating entirely in the web-browser, TMA-Grid eliminates the need for downloads or installations and ensures data privacy. Adhering to FAIR principles (Findable, Accessible, Interoperable, and Reusable), the application and its components are designed for seamless integration into TMA research workflows. Conclusions: TMA-Grid provides a robust, user-friendly solution for TMA dearraying on the web. As an open, freely accessible platform, it lays the foundation for collaborative analyses of TMAs and similar histopathology imaging data. Availability: Web application: https://episphere.github.io/tma-grid Code: https://github.com/episphere/tma-grid Tutorial: https://youtu.be/miajqyw4BVk

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