Combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuries

Abstract A new technique has been developed to identify ACL tears in sports injuries. This method utilizes a Convolutional Neural Network (CNN) in combination with a modified Political Optimizer (IPO) algorithm, resulting in a major breakthrough in detecting ACL tears. The study provides an innovati...

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Main Authors: Wei Hu, Saeid Razmjooy
Format: Article
Language:English
Published: Nature Portfolio 2025-02-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-91242-2
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author Wei Hu
Saeid Razmjooy
author_facet Wei Hu
Saeid Razmjooy
author_sort Wei Hu
collection DOAJ
description Abstract A new technique has been developed to identify ACL tears in sports injuries. This method utilizes a Convolutional Neural Network (CNN) in combination with a modified Political Optimizer (IPO) algorithm, resulting in a major breakthrough in detecting ACL tears. The study provides an innovative approach to detecting this type of injury. The CNN/IPO approach surpasses traditional optimization techniques, ensuring precise and timely detection of ACL tears. This breakthrough has the potential to significantly improve treatment results, enabling clinicians to intervene promptly and effectively, leading to enhanced recovery and rehabilitation for athletes. The integration of the CNN and IPO algorithm provides clinicians with an unparalleled level of accuracy and efficiency in identifying ACL tears, facilitating more precise and tailored treatment strategies for sports-related injuries. The findings have the potential to revolutionize the way medical professionals approach musculoskeletal injuries, enhancing overall well-being and athletic performance. The research’s significance extends beyond sports medicine, illuminating new avenues for the detection and management of ACL tears, and paving the way for advancements in sports injury diagnosis and treatment.
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spelling doaj-art-ef39b627a1d74b4a873496add4f48f292025-08-20T02:16:40ZengNature PortfolioScientific Reports2045-23222025-02-0115111410.1038/s41598-025-91242-2Combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuriesWei Hu0Saeid Razmjooy1School of Physical Education, Chongqing Technology and Business UniversityDepartment of Engineering, University of Mohaghegh ArdabiliAbstract A new technique has been developed to identify ACL tears in sports injuries. This method utilizes a Convolutional Neural Network (CNN) in combination with a modified Political Optimizer (IPO) algorithm, resulting in a major breakthrough in detecting ACL tears. The study provides an innovative approach to detecting this type of injury. The CNN/IPO approach surpasses traditional optimization techniques, ensuring precise and timely detection of ACL tears. This breakthrough has the potential to significantly improve treatment results, enabling clinicians to intervene promptly and effectively, leading to enhanced recovery and rehabilitation for athletes. The integration of the CNN and IPO algorithm provides clinicians with an unparalleled level of accuracy and efficiency in identifying ACL tears, facilitating more precise and tailored treatment strategies for sports-related injuries. The findings have the potential to revolutionize the way medical professionals approach musculoskeletal injuries, enhancing overall well-being and athletic performance. The research’s significance extends beyond sports medicine, illuminating new avenues for the detection and management of ACL tears, and paving the way for advancements in sports injury diagnosis and treatment.https://doi.org/10.1038/s41598-025-91242-2Improved versionPolitical optimizerClinical imagesSports injuriesAnterior cruciate ligament tearDetection
spellingShingle Wei Hu
Saeid Razmjooy
Combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuries
Scientific Reports
Improved version
Political optimizer
Clinical images
Sports injuries
Anterior cruciate ligament tear
Detection
title Combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuries
title_full Combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuries
title_fullStr Combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuries
title_full_unstemmed Combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuries
title_short Combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuries
title_sort combining an improved political optimizer with convolutional neural networks for accurate anterior cruciate ligament tear detection in sports injuries
topic Improved version
Political optimizer
Clinical images
Sports injuries
Anterior cruciate ligament tear
Detection
url https://doi.org/10.1038/s41598-025-91242-2
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AT saeidrazmjooy combininganimprovedpoliticaloptimizerwithconvolutionalneuralnetworksforaccurateanteriorcruciateligamentteardetectioninsportsinjuries