Literature DB >> 30859341

Deep Learning for Detection of Complete Anterior Cruciate Ligament Tear.

Peter D Chang1, Tony T Wong2, Michael J Rasiej3.   

Abstract

Deep learning for MRI detection of sports injuries poses unique challenges. To address these difficulties, this study examines the feasibility and incremental benefit of several customized network architectures in evaluation of complete anterior cruciate ligament (ACL) tears. Two hundred sixty patients, ages 18-40, were identified in a retrospective review of knee MRIs obtained from September 2013 to March 2016. Half of the cases demonstrated a complete ACL tear (624 slices), the other half a normal ACL (3520 slices). Two hundred cases were used for training and validation, and the remaining 60 cases as an independent test set. For each exam with an ACL tear, coronal proton density non-fat suppressed sequence was manually annotated to delineate: (1) a bounding-box around the cruciate ligaments; (2) slices containing the tear. Multiple convolutional neural network (CNN) architectures were implemented including variations in input field-of-view and dimensionality. For single-slice CNN architectures, validation accuracy of a dynamic patch-based sampling algorithm (0.765) outperformed both cropped slice (0.720) and full slice (0.680) strategies. Using the dynamic patch-based sampling algorithm as a baseline, a five-slice CNN input (0.915) outperformed both three-slice (0.865) and single-slice (0.765) inputs. The final highest performing five-slice dynamic patch-based sampling algorithm resulted in independent test set AUC, sensitivity, specificity, PPV, and NPV of 0.971, 0.967, 1.00, 0.938, and 1.00. A customized 3D deep learning architecture based on dynamic patch-based sampling demonstrates high performance in detection of complete ACL tears with over 96% test set accuracy. A cropped field-of-view and 3D inputs are critical for high algorithm performance.

Entities:  

Keywords:  Anterior cruciate ligament; Artificial intelligence; Deep learning; Machine learning; Magnetic resonance imaging

Mesh:

Year:  2019        PMID: 30859341      PMCID: PMC6841825          DOI: 10.1007/s10278-019-00193-4

Source DB:  PubMed          Journal:  J Digit Imaging        ISSN: 0897-1889            Impact factor:   4.056


  12 in total

1.  Return to play guidelines after anterior cruciate ligament surgery.

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2.  Incidence of anterior cruciate ligament injury and other knee ligament injuries: a national population-based study.

Authors:  Simon M Gianotti; Stephen W Marshall; Patria A Hume; Lorna Bunt
Journal:  J Sci Med Sport       Date:  2008-10-02       Impact factor: 4.319

3.  Timing of reconstruction of the anterior cruciate ligament in athletes and the incidence of secondary pathology within the knee.

Authors:  J Kennedy; M P Jackson; P O'Kelly; R Moran
Journal:  J Bone Joint Surg Br       Date:  2010-03

4.  Tears of the anterior cruciate ligament and menisci of the knee: MR imaging evaluation.

Authors:  J H Mink; T Levy; J V Crues
Journal:  Radiology       Date:  1988-06       Impact factor: 11.105

5.  Disability in anterior cruciate ligament insufficiency. An analysis of 19 untreated patients.

Authors:  T Fridén; R Zätterström; A Lindstrand; U Moritz
Journal:  Acta Orthop Scand       Date:  1990-04

6.  Incidence of Anterior Cruciate Ligament Tears and Reconstruction: A 21-Year Population-Based Study.

Authors:  Thomas L Sanders; Hilal Maradit Kremers; Andrew J Bryan; Dirk R Larson; Diane L Dahm; Bruce A Levy; Michael J Stuart; Aaron J Krych
Journal:  Am J Sports Med       Date:  2016-02-26       Impact factor: 6.202

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8.  Semi-automated detection of anterior cruciate ligament injury from MRI.

Authors:  Ivan Štajduhar; Mihaela Mamula; Damir Miletić; Gözde Ünal
Journal:  Comput Methods Programs Biomed       Date:  2016-12-15       Impact factor: 5.428

Review 9.  Bench-to-bedside: Bridge-enhanced anterior cruciate ligament repair.

Authors:  Gabriel S Perrone; Benedikt L Proffen; Ata M Kiapour; Jakob T Sieker; Braden C Fleming; Martha M Murray
Journal:  J Orthop Res       Date:  2017-07-09       Impact factor: 3.494

10.  Timing of anterior cruciate ligament reconstructive surgery and risk of cartilage lesions and meniscal tears: a cohort study based on the Norwegian National Knee Ligament Registry.

Authors:  Lars-Petter Granan; Roald Bahr; Stein Atle Lie; Lars Engebretsen
Journal:  Am J Sports Med       Date:  2009-02-26       Impact factor: 6.202

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6.  A Machine-Learning Approach to Measure the Anterior Cruciate Ligament Injury Risk in Female Basketball Players.

Authors:  Juri Taborri; Luca Molinaro; Adriano Santospagnuolo; Mario Vetrano; Maria Chiara Vulpiani; Stefano Rossi
Journal:  Sensors (Basel)       Date:  2021-04-30       Impact factor: 3.576

7.  Diagnostic accuracy of machine-learning-assisted detection for anterior cruciate ligament injury based on magnetic resonance imaging: Protocol for a systematic review and meta-analysis.

Authors:  Yongfeng Lao; Bibo Jia; Peilin Yan; Minghao Pan; Xu Hui; Jing Li; Wei Luo; Xingjie Li; Jiani Han; Peijing Yan; Liang Yao
Journal:  Medicine (Baltimore)       Date:  2019-12       Impact factor: 1.817

8.  Deep Learning for Hierarchical Severity Staging of Anterior Cruciate Ligament Injuries from MRI.

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Journal:  Radiol Artif Intell       Date:  2020-07-29

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Review 10.  Artificial Intelligence in the Management of Anterior Cruciate Ligament Injuries.

Authors:  Jason Corban; Justin-Pierre Lorange; Carl Laverdiere; Jason Khoury; Gil Rachevsky; Mark Burman; Paul Andre Martineau
Journal:  Orthop J Sports Med       Date:  2021-07-02
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