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- Title
Computer-Aided Detection AI Reduces Interreader Variability in Grading Hip Abnormalities With MRI.
- Authors
Tibrewala, Radhika; Ozhinsky, Eugene; Shah, Rutwik; Flament, Io; Crossley, Kay; Srinivasan, Ramya; Souza, Richard; Link, Thomas M.; Pedoia, Valentina; Majumdar, Sharmila
- Abstract
<bold>Background: </bold>Accurate interpretation of hip MRI is time-intensive and difficult, prone to inter- and intrareviewer variability, and lacks a universally accepted grading scale to evaluate morphological abnormalities.<bold>Purpose: </bold>To 1) develop and evaluate a deep-learning-based model for binary classification of hip osteoarthritis (OA) morphological abnormalities on MR images, and 2) develop an artificial intelligence (AI)-based assist tool to find if using the model predictions improves interreader agreement in hip grading.<bold>Study Type: </bold>Retrospective study aimed to evaluate a technical development.<bold>Population: </bold>A total of 764 MRI volumes (364 patients) obtained from two studies (242 patients from LASEM [FORCe] and 122 patients from UCSF), split into a 65-25-10% train, validation, test set for network training.<bold>Field Strength/sequence: </bold>3T MRI, 2D T2 FSE, PD SPAIR.<bold>Assessment: </bold>Automatic binary classification of cartilage lesions, bone marrow edema-like lesions, and subchondral cyst-like lesions using the MRNet, interreader agreement before and after using network predictions.<bold>Statistical Tests: </bold>Receiver operating characteristic (ROC) curve, area under curve (AUC), specificity and sensitivity, and balanced accuracy.<bold>Results: </bold>For cartilage lesions, bone marrow edema-like lesions and subchondral cyst-like lesions the AUCs were: 0.80 (95% confidence interval [CI] 0.65, 0.95), 0.84 (95% CI 0.67, 1.00), and 0.77 (95% CI 0.66, 0.85), respectively. The sensitivity and specificity of the radiologist for binary classification were: 0.79 (95% CI 0.65, 0.93) and 0.80 (95% CI 0.59, 1.02), 0.40 (95% CI -0.02, 0.83) and 0.72 (95% CI 0.59, 0.86), 0.75 (95% CI 0.45, 1.05) and 0.88 (95% CI 0.77, 0.98). The interreader balanced accuracy increased from 53%, 71% and 56% to 60%, 73% and 68% after using the network predictions and saliency maps.<bold>Data Conclusion: </bold>We have shown that a deep-learning approach achieved high performance in clinical classification tasks on hip MR images, and that using the predictions from the deep-learning model improved the interreader agreement in all pathologies.<bold>Level Of Evidence: </bold>3 TECHNICAL EFFICACY STAGE: 1 J. Magn. Reson. Imaging 2020;52:1163-1172.
- Subjects
RECEIVER operating characteristic curves; HUMAN abnormalities; AUTOMATIC classification; BONE marrow; FORECASTING; COMPUTERS in medicine; RESEARCH evaluation; COMPUTERS; ARTIFICIAL intelligence; RETROSPECTIVE studies; MAGNETIC resonance imaging; DIAGNOSTIC imaging
- Publication
Journal of Magnetic Resonance Imaging, 2020, Vol 52, Issue 4, p1163
- ISSN
1053-1807
- Publication type
journal article
- DOI
10.1002/jmri.27164