A Novel Framework for the Automated Characterization of Gram-Stained Blood Culture Slides Using a Large-Scale Vision Transformer
Jack McMahon, Naofumi Tomita, Elizabeth S. Tatishev, Adrienne A., Workman, Cristina R Costales, Niaz Banaei, Isabella W. Martin, Saeed, Hassanpour

TL;DR
This paper presents a transformer-based AI framework for automated classification of Gram-stained blood culture slides, improving scalability and accuracy over previous CNN methods, and validated on a large, new dataset.
Contribution
Introduces a novel transformer model for Gram stain classification that does not require patch annotations and demonstrates its effectiveness on a large, new dataset.
Findings
Achieved 85.8% classification accuracy
Attained an AUC of 0.952
Model generalizes well to external datasets
Abstract
This study introduces a new framework for the artificial intelligence-assisted characterization of Gram-stained whole-slide images (WSIs). As a test for the diagnosis of bloodstream infections, Gram stains provide critical early data to inform patient treatment. Rapid and reliable analysis of Gram stains has been shown to be positively associated with better clinical outcomes, underscoring the need for improved tools to automate Gram stain analysis. In this work, we developed a novel transformer-based model for Gram-stained WSI classification, which is more scalable to large datasets than previous convolutional neural network (CNN) -based methods as it does not require patch-level manual annotations. We also introduce a large Gram stain dataset from Dartmouth-Hitchcock Medical Center (Lebanon, New Hampshire, USA) to evaluate our model, exploring the classification of five major…
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Taxonomy
TopicsDigital Imaging for Blood Diseases · Cell Image Analysis Techniques · Image Processing Techniques and Applications
