Litcius/Paper detail

Artificial Intelligence and Digital Microscopy Applications in Diagnostic Hematopathology

Hanadi El Achi, Joseph D. Khoury

2020Cancers75 citationsDOIOpen Access PDF

Abstract

Digital Pathology is the process of converting histology glass slides to digital images using sophisticated computerized technology to facilitate acquisition, evaluation, storage, and portability of histologic information. By its nature, digitization of analog histology data renders it amenable to analysis using deep learning/artificial intelligence (DL/AI) techniques. The application of DL/AI to digital pathology data holds promise, even if the scope of use cases and regulatory framework for deploying such applications in the clinical environment remains in the early stages. Recent studies using whole-slide images and DL/AI to detect histologic abnormalities in general and cancer in particular have shown encouraging results. In this review, we focus on these emerging technologies intended for use in diagnostic hematology and the evaluation of lymphoproliferative diseases.

Topics & Concepts

HematopathologyDigital pathologyComputer scienceDigitizationVirtual microscopyArtificial intelligenceSoftware portabilityPathologyMedical physicsProcess (computing)MedicineComputer visionChemistryProgramming languageBiochemistryCytogeneticsChromosomeGeneOperating systemAI in cancer detectionDigital Imaging for Blood DiseasesLymphadenopathy Diagnosis and Analysis