Automated classification of fat- infiltrated axillary lymph nodes on screening mammograms

BRITISH JOURNAL OF RADIOLOGY(2023)

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摘要
Objective: Fat-infiltrated axillary lymph nodes (LNs) are unique sites for ectopic fat deposition. Early studies showed a strong correlation between fatty LNs and obesity-related diseases. Confirming this correlation requires large -scale studies, hindered by scarce labeled data. With the long -term goal of developing a rapid and generalizable tool to aid data labeling, we developed an automated deep learning (DL) -based pipeline to classify the status of fatty LNs on screening mammograms. Methods: Our internal data set included 886 mammograms from a tertiary academic medical institution, with a binary status of the fat-infiltrated LNs based on the size and morphology of the largest visible axillary LN. A two -stage DL model training and fine-tuning pipeline was developed to classify the fat-infiltrated LN status using the internal training and development data set. The model was evaluated on a held -out internal test set and a subset of the Digital Database for Screening Mammography. Results: Our model achieved 0.97 (95% CI: 0.94-0.99) accuracy and 1.00 (95% CI: 1.00-1.00) area under the receiver operator characteristic curve on 264 internal testing mammograms, and 0.82 (95% CI: 0.77-0.86) accuracy and 0.87 (95% CI: 0.82-0.91) area under the receiver operator characteristic curve on 70 external testing mammograms. Conclusion: This study confirmed the feasibility of using a DL model for fat-infiltrated LN classification. The model provides a practical tool to identify fatty LNs on mammograms and to allow for future large -scale studies to evaluate the role of fatty LNs as an imaging biomarker of obesity-associated pathologies. Advances in knowledge: Our study is the first to classify fatty LNs using an automated DL approach.
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关键词
axillary lymph nodes,screening,automated classification,fat-infiltrated
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