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ComPRePS: An Automated Cloud-based Image Analysis tool to democratize AI in Digital Pathology.

Publication ,  Journal Article
Mimar, S; Paul, AS; Lucarelli, N; Border, S; Santo, BA; Naglah, A; Barisoni, L; Hodgin, J; Rosenberg, AZ; Clapp, W; Sarder, P ...
Published in: bioRxiv
April 5, 2024

Artificial intelligence (AI) has extensive applications in a wide range of disciplines including healthcare and clinical practice. Advances in high-resolution whole-slide brightfield microscopy allow for the digitization of histologically stained tissue sections, producing gigapixel-scale whole-slide images (WSI). The significant improvement in computing and revolution of deep neural network (DNN)-based AI technologies over the last decade allow us to integrate massively parallelized computational power, cutting-edge AI algorithms, and big data storage, management, and processing. Applied to WSIs, AI has created opportunities for improved disease diagnostics and prognostics with the ultimate goal of enhancing precision medicine and resulting patient care. The National Institutes of Health (NIH) has recognized the importance of developing standardized principles for data management and discovery for the advancement of science and proposed the Findable, Accessible, Interoperable, Reusable, (FAIR) Data Principles1 with the goal of building a modernized biomedical data resource ecosystem to establish collaborative research communities. In line with this mission and to democratize AI-based image analysis in digital pathology, we propose ComPRePS: an end-to-end automated Computational Renal Pathology Suite which combines massive scalability, on-demand cloud computing, and an easy-to-use web-based user interface for data upload, storage, management, slide-level visualization, and domain expert interaction. Moreover, our platform is equipped with both in-house and collaborator developed sophisticated AI algorithms in the back-end server for image analysis to identify clinically relevant micro-anatomic functional tissue units (FTU) and to extract image features.

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Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

April 5, 2024

Location

United States
 

Citation

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Mimar, S., Paul, A. S., Lucarelli, N., Border, S., Santo, B. A., Naglah, A., … Kidney Precision Medicine Project, . (2024). ComPRePS: An Automated Cloud-based Image Analysis tool to democratize AI in Digital Pathology. BioRxiv. https://doi.org/10.1101/2024.03.21.586102
Mimar, Sayat, Anindya S. Paul, Nicholas Lucarelli, Samuel Border, Briana A. Santo, Ahmed Naglah, Laura Barisoni, et al. “ComPRePS: An Automated Cloud-based Image Analysis tool to democratize AI in Digital Pathology.BioRxiv, April 5, 2024. https://doi.org/10.1101/2024.03.21.586102.
Mimar S, Paul AS, Lucarelli N, Border S, Santo BA, Naglah A, et al. ComPRePS: An Automated Cloud-based Image Analysis tool to democratize AI in Digital Pathology. bioRxiv. 2024 Apr 5;
Mimar, Sayat, et al. “ComPRePS: An Automated Cloud-based Image Analysis tool to democratize AI in Digital Pathology.BioRxiv, Apr. 2024. Pubmed, doi:10.1101/2024.03.21.586102.
Mimar S, Paul AS, Lucarelli N, Border S, Santo BA, Naglah A, Barisoni L, Hodgin J, Rosenberg AZ, Clapp W, Sarder P, Kidney Precision Medicine Project. ComPRePS: An Automated Cloud-based Image Analysis tool to democratize AI in Digital Pathology. bioRxiv. 2024 Apr 5;

Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

April 5, 2024

Location

United States