Toward Non-Invasive Diagnosis of Bankart Lesions with Deep Learning
Sahil Sethi, Sai Reddy, Mansi Sakarvadia, Jordan Serotte, Darlington, Nwaudo, Nicholas Maassen, Lewis Shi

TL;DR
This study develops deep learning models to detect Bankart lesions on standard MRIs and MRAs, aiming to improve diagnosis accuracy and reduce invasive procedures, with models achieving high accuracy comparable to radiologists.
Contribution
The paper introduces specialized deep learning models trained on a large dataset to non-invasively diagnose Bankart lesions from standard MRIs, matching or surpassing radiologist performance.
Findings
Models achieved AUCs of 0.87 and 0.90 on MRI and MRA datasets.
Model performance on standard MRIs matched or surpassed radiologists.
Deep learning can effectively detect subtle shoulder lesions non-invasively.
Abstract
Bankart lesions, or anterior-inferior glenoid labral tears, are diagnostically challenging on standard MRIs due to their subtle imaging features-often necessitating invasive MRI arthrograms (MRAs). This study develops deep learning (DL) models to detect Bankart lesions on both standard MRIs and MRAs, aiming to improve diagnostic accuracy and reduce reliance on MRAs. We curated a dataset of 586 shoulder MRIs (335 standard, 251 MRAs) from 558 patients who underwent arthroscopy. Ground truth labels were derived from intraoperative findings, the gold standard for Bankart lesion diagnosis. Separate DL models for MRAs and standard MRIs were trained using the Swin Transformer architecture, pre-trained on a public knee MRI dataset. Predictions from sagittal, axial, and coronal views were ensembled to optimize performance. The models were evaluated on a 20% hold-out test set (117 MRIs: 46 MRAs,…
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Taxonomy
TopicsMusculoskeletal synovial abnormalities and treatments
MethodsAttention Is All You Need · Adam · Dropout · Position-Wise Feed-Forward Layer · Softmax · Byte Pair Encoding · Linear Layer · Multi-Head Attention · Label Smoothing · Layer Normalization
