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Machine-assisted interpretation of auramine stains substantially increases through-put and sensitivity of microscopic tuberculosis diagnosis

Lynn L. Horvath, Siegfried Hänselmann, H. Mannsperger, S. Degenhardt, Katharina Last, Stefan Zimmermann, Irene Burckhardt

2020Tuberculosis21 citationsDOIOpen Access PDF

Abstract

Of all bacterial infectious diseases, infection by Mycobacterium tuberculosis poses one of the highest morbidity and mortality burdens on humans throughout the world. Due to its speed and cost-efficiency, manual microscopy of auramine-stained sputum smears remains a crucial first-line detection method. However, it puts considerable workload on laboratory staff and suffers from a limited sensitivity. Here we validate a scanning and analysis system that combines fully-automated microscopy with deep-learning based image analysis. After automated scanning, the system summarizes diagnosis-relevant image information and presents it to the microbiologist in order to assist diagnosis. We tested the benefit of the automated scanning and analysis system using 531 slides from routine workflow, of which 56 were from culture positive specimen. Assistance by the scanning and analysis system allowed for a higher sensitivity (40/56 positive slides detected) than manual microscopy (34/56 positive slides detected), while greatly reducing manual slide-analysis time from a recommended 5-15 min to around 10 s per slide on average.

Topics & Concepts

WorkflowWorkloadMycobacterium tuberculosisTuberculosisSputumArtificial intelligenceMicroscopyMedicineComputer scienceMedical physicsPathologyOperating systemDatabaseImage Processing Techniques and ApplicationsCell Image Analysis TechniquesDigital Imaging for Blood Diseases
Machine-assisted interpretation of auramine stains substantially increases through-put and sensitivity of microscopic tuberculosis diagnosis | Litcius