Machine learning-based performance comparison to diagnose anterior cruciate ligament tears
In recent times, knee joint pains have become severe enough to make daily tasks difficult. Knee osteoarthritis is a type of arthritis and a leading cause of disability worldwide. The middle of the knee contains a vital portion, the anterior cruciate ligament (ACL). It is necessary to diagnose the AC...
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my.utm.1032412023-10-24T09:56:53Z http://eprints.utm.my/103241/ Machine learning-based performance comparison to diagnose anterior cruciate ligament tears Awan, Mazhar Javed Mohd. Rahim, Mohd. Shafry Salim, Naomie Rehman, Amjad Nobanee, Haitham QA75 Electronic computers. Computer science In recent times, knee joint pains have become severe enough to make daily tasks difficult. Knee osteoarthritis is a type of arthritis and a leading cause of disability worldwide. The middle of the knee contains a vital portion, the anterior cruciate ligament (ACL). It is necessary to diagnose the ACL ruptured tears early to avoid surgery. The study aimed to perform a comparative analysis of machine learning models to identify the condition of three ACL tears. In contrast to previous studies, this study also considers imbalanced data distributions as machine learning techniques struggle to deal with this problem. The paper applied and analyzed four machine learning classification models, namely, random forest (RF), categorical boosting (Cat Boost), light gradient boosting machines (LGBM), and highly randomized classifier (ETC) on the balanced, structured dataset of ACL. After oversampling a hyperparameter adjustment, the above four models have achieved an average accuracy of 95.72%, 94.98%, 94.98%, and 98.26%. There are 2070 observations and eight features in the collection of three diagnosis ACL classes after oversampling. The area under curve value was approximately 0.998, respectively. Experiments were performed using twelve machine learning algorithms with imbalanced and balanced datasets. However, the accuracy of the imbalanced dataset has remained under 76% for all twelve models. After oversampling, the proposed model may contribute to the investigation of ACL tears on magnetic resonance imaging and other knee ligaments efficiently and automatically without involving radiologists. Hindawi Limited 2022 Article PeerReviewed Awan, Mazhar Javed and Mohd. Rahim, Mohd. Shafry and Salim, Naomie and Rehman, Amjad and Nobanee, Haitham (2022) Machine learning-based performance comparison to diagnose anterior cruciate ligament tears. Journal of Healthcare Engineering, 2022 (255012). p. 1. ISSN 2040-2295 https://dx.doi.org/10.1155/2023/9854282 DOI: 10.1155/2023/9854282 |
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QA75 Electronic computers. Computer science Awan, Mazhar Javed Mohd. Rahim, Mohd. Shafry Salim, Naomie Rehman, Amjad Nobanee, Haitham Machine learning-based performance comparison to diagnose anterior cruciate ligament tears |
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In recent times, knee joint pains have become severe enough to make daily tasks difficult. Knee osteoarthritis is a type of arthritis and a leading cause of disability worldwide. The middle of the knee contains a vital portion, the anterior cruciate ligament (ACL). It is necessary to diagnose the ACL ruptured tears early to avoid surgery. The study aimed to perform a comparative analysis of machine learning models to identify the condition of three ACL tears. In contrast to previous studies, this study also considers imbalanced data distributions as machine learning techniques struggle to deal with this problem. The paper applied and analyzed four machine learning classification models, namely, random forest (RF), categorical boosting (Cat Boost), light gradient boosting machines (LGBM), and highly randomized classifier (ETC) on the balanced, structured dataset of ACL. After oversampling a hyperparameter adjustment, the above four models have achieved an average accuracy of 95.72%, 94.98%, 94.98%, and 98.26%. There are 2070 observations and eight features in the collection of three diagnosis ACL classes after oversampling. The area under curve value was approximately 0.998, respectively. Experiments were performed using twelve machine learning algorithms with imbalanced and balanced datasets. However, the accuracy of the imbalanced dataset has remained under 76% for all twelve models. After oversampling, the proposed model may contribute to the investigation of ACL tears on magnetic resonance imaging and other knee ligaments efficiently and automatically without involving radiologists. |
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Article |
author |
Awan, Mazhar Javed Mohd. Rahim, Mohd. Shafry Salim, Naomie Rehman, Amjad Nobanee, Haitham |
author_facet |
Awan, Mazhar Javed Mohd. Rahim, Mohd. Shafry Salim, Naomie Rehman, Amjad Nobanee, Haitham |
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Awan, Mazhar Javed |
title |
Machine learning-based performance comparison to diagnose anterior cruciate ligament tears |
title_short |
Machine learning-based performance comparison to diagnose anterior cruciate ligament tears |
title_full |
Machine learning-based performance comparison to diagnose anterior cruciate ligament tears |
title_fullStr |
Machine learning-based performance comparison to diagnose anterior cruciate ligament tears |
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Machine learning-based performance comparison to diagnose anterior cruciate ligament tears |
title_sort |
machine learning-based performance comparison to diagnose anterior cruciate ligament tears |
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Hindawi Limited |
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2022 |
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http://eprints.utm.my/103241/ https://dx.doi.org/10.1155/2023/9854282 |
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