Literature DB >> 32715584

Deep Learning Approach for Anterior Cruciate Ligament Lesion Detection: Evaluation of Diagnostic Performance Using Arthroscopy as the Reference Standard.

Lingyan Zhang1,2, Mifang Li1, Yujia Zhou3, Guangming Lu2, Quan Zhou1.   

Abstract

BACKGROUND: MRI is the most commonly used imaging method for diagnosing anterior cruciate ligament (ACL) injuries. However, the interpretation of knee MRI is time-intensive and depends on the clinical experience of the reader. An automated detection system based on a deep-learning algorithm may improve interpretation time and reliability.
PURPOSE: To determine the feasibility of using a deep learning approach to detect ACL injuries within the knee joint on MRI. STUDY TYPE: Retrospective. POPULATION: In all, 163 subjects with an ACL tear and 245 subjects with an intact ACL. There were 285, 81, and 42 volumes for training, validation, and test sets, respectively. FIELD STRENGTH/SEQUENCE: 2D sagittal proton density-weighted spectral attenuated inversion recovery sequences at 1.5T and 3.0T. ASSESSMENT: Based on the architecture of 3D DenseNet, we constructed a classification convolutional neural network. We tested this deep learning approach with different inputs and two other algorithms, including VGG16 and ResNet. Then we had both inexperienced radiologists and senior radiologists read the MR images. STATISTICAL TESTS: Using arthroscopic results as the reference standard, the performance of three different inputs and three different algorithms, the residents and senior radiologists assessed the classification accuracy, sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and area under the receiver operating characteristic curve (AUC).
RESULTS: The accuracy, sensitivity, specificity, PPV, and NPV of our customized 3D deep learning architecture was 0.957, 0.976, 0.944, 0.940, and 0.976, respectively. The average AUCs were 0.946, 0.859, 0.960 for ResNet, VGG16, and our proposed network, respectively. The diagnostic accuracy of our model, residents, and senior radiologists was 0.957, 0.814, and 0.899, respectively. DATA
CONCLUSION: Our study demonstrated the feasibility of using an automated deep-learning-based detection system to evaluate ACL injury. LEVEL OF EVIDENCE: 3 TECHNICAL EFFICACY STAGE: 1 J. MAGN. RESON. IMAGING 2020;52:1745-1752.
© 2020 International Society for Magnetic Resonance in Medicine.

Entities:  

Keywords:  anterior cruciate ligament injury; convolutional neural network; deep learning; magnetic resonance imaging

Mesh:

Year:  2020        PMID: 32715584     DOI: 10.1002/jmri.27266

Source DB:  PubMed          Journal:  J Magn Reson Imaging        ISSN: 1053-1807            Impact factor:   4.813


  6 in total

1.  Efficient Detection of Knee Anterior Cruciate Ligament from Magnetic Resonance Imaging Using Deep Learning Approach.

Authors:  Mazhar Javed Awan; Mohd Shafry Mohd Rahim; Naomie Salim; Mazin Abed Mohammed; Begonya Garcia-Zapirain; Karrar Hameed Abdulkareem
Journal:  Diagnostics (Basel)       Date:  2021-01-11

Review 2.  Artificial intelligence for MRI diagnosis of joints: a scoping review of the current state-of-the-art of deep learning-based approaches.

Authors:  Benjamin Fritz; Jan Fritz
Journal:  Skeletal Radiol       Date:  2021-09-01       Impact factor: 2.199

Review 3.  Knee Injury Detection Using Deep Learning on MRI Studies: A Systematic Review.

Authors:  Athanasios Siouras; Serafeim Moustakidis; Archontis Giannakidis; Georgios Chalatsis; Ioannis Liampas; Marianna Vlychou; Michael Hantes; Sotiris Tasoulis; Dimitrios Tsaopoulos
Journal:  Diagnostics (Basel)       Date:  2022-02-19

4.  Deep Learning to Detect Triangular Fibrocartilage Complex Injury in Wrist MRI: Retrospective Study with Internal and External Validation.

Authors:  Kun-Yi Lin; Yuan-Ta Li; Juin-Yi Han; Chia-Chun Wu; Chi-Min Chu; Shao-Yu Peng; Tsu-Te Yeh
Journal:  J Pers Med       Date:  2022-06-23

5.  Deep Learning-Based Magnetic Resonance Imaging Image Features for Diagnosis of Anterior Cruciate Ligament Injury.

Authors:  Zijian Li; Shiyou Ren; Ri Zhou; Xiaocheng Jiang; Tian You; Canfeng Li; Wentao Zhang
Journal:  J Healthc Eng       Date:  2021-07-02       Impact factor: 2.682

6.  Diagnosis of Cubital Tunnel Syndrome Using Deep Learning on Ultrasonographic Images.

Authors:  Issei Shinohara; Atsuyuki Inui; Yutaka Mifune; Hanako Nishimoto; Kohei Yamaura; Shintaro Mukohara; Tomoya Yoshikawa; Tatsuo Kato; Takahiro Furukawa; Yuichi Hoshino; Takehiko Matsushita; Ryosuke Kuroda
Journal:  Diagnostics (Basel)       Date:  2022-03-04
  6 in total

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