Digital Microscopy Augmented by Artificial Intelligence to Interpret Bone Marrow Samples for Hematological Diseases
- PMID: 38302194
- DOI: 10.1093/micmic/ozad143
Digital Microscopy Augmented by Artificial Intelligence to Interpret Bone Marrow Samples for Hematological Diseases
Abstract
Analysis of bone marrow aspirates (BMAs) is an essential step in the diagnosis of hematological disorders. This analysis is usually performed based on a visual examination of samples under a conventional optical microscope, which involves a labor-intensive process, limited by clinical experience and subject to high observer variability. In this work, we present a comprehensive digital microscopy system that enables BMA analysis for cell type counting and differentiation in an efficient and objective manner. This system not only provides an accessible and simple method to digitize, store, and analyze BMA samples remotely but is also supported by an Artificial Intelligence (AI) pipeline that accelerates the differential cell counting process and reduces interobserver variability. It has been designed to integrate AI algorithms with the daily clinical routine and can be used in any regular hospital workflow.
Keywords: artificial intelligence (AI); bone marrow aspirates; differential cell counting (DCC); digital microscopy.
© The Author(s) 2024. Published by Oxford University Press on behalf of the Microscopy Society of America.
Conflict of interest statement
Conflict of Interest D.B.-P., S.R.C., A.M.U., E.A., L.L., E.D., DC, M.P., A.V., J.G.-V., M.J.L.-C., A.S., M.L., and M.L.-O. hold shares or phantom shares of Spotlab. The rest of the authors declare that they have no competing interest.
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