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Reliability and Dual Validation of a Deep Learning Model for Anterior Cruciate Ligament Tear Detection Using Magnetic Resonance Imaging

  • Nurmakhan Zholshybek
  • , Zhanarys Khorshat
  • , Lazzat Bastarbekova
  • , Nurkali Assylbek
  • , Aizhan Zhankorazova
  • , Yeltay Rakhmanov
  • Nazarbayev University
  • Umbrella GmbH
  • University Medical Center

Результат исследований

Аннотация

The anterior cruciate ligament (ACL) is essential for knee stability, and its tears are common, especially in athletes. Magnetic resonance imaging (MRI) is the gold standard for diagnosis. Recent advances in deep learning (DL) offer promising opportunities for automating ACL tear detection, potentially reducing workload and enhancing diagnostic accuracy. This study evaluates DL models for ACL tear detection using MRI. A model was trained on the MRNet dataset, which includes 1,370 knee MRIs from Stanford University Medical Center. The data were split into training (60%), tuning (20%), and validation (20%) sets using stratified random sampling. Convolutional neural networks were applied to axial, sagittal, and coronal planes, followed by a stacking ensemble method. External validation was performed using the KneeMRI dataset (917 scans) from Clinical Hospital Centre Rijeka, Croatia. Model performance was also compared with two experienced radiologists on a subset of 120 MRIs. Sensitivity, specificity, and area under the curve (AUC) were used for evaluation. The model achieved AUCs of 0.885 (95% CI 0.865–0.902) on training, 0.878 (95% CI 0.807–0.925) on validation, and 0.912 (95% CI 0.879–0.937) on external validation. It demonstrated 84% accuracy compared to radiologists, though McNemar’s test (p = 0.001) showed a statistically significant difference in classification. These findings confirm the model’s robustness across datasets and its potential as a diagnostic support tool. DL models demonstrate high reliability in identifying ACL tears on MRI and may assist radiologists, particularly in resource-constrained environments. Further integration of arthroscopic data and larger datasets may improve clinical applicability.

Язык оригиналаEnglish
Название основной публикацииProceedings of the International Conference on AI and Robotics - AIR 2025
РедакторыJagdish Chand Bansal, Prashant Jamwal, Shahid Hussain
ИздательSpringer Science and Business Media Deutschland GmbH
Страницы362-373
Число страниц12
ISBN (печатное издание)9783032055477
DOI
СостояниеPublished - 2025
Опубликовано для внешнего пользованияДа
СобытиеInternational Conference on AI and Robotics, AIR 2025 - Astana
Продолжительность: мая 9 2025мая 11 2025

Серия публикаций

НазваниеLecture Notes in Networks and Systems
Том1629 LNNS
ISSN (печатное издание)2367-3370
ISSN (электронное издание)2367-3389

Conference

ConferenceInternational Conference on AI and Robotics, AIR 2025
Страна/TерриторияKazakhstan
ГородAstana
Период5/9/255/11/25

ASJC Scopus subject areas

  • Control and Systems Engineering
  • Signal Processing
  • Computer Networks and Communications

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