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The landscape of computer vision is predominantly shaped by two groundbreaking methodologies: transformers and convolutional neural networks (CNNs). In this study, we aim to introduce an innovative mobile CNN architecture designed for orthopedic imaging that efficiently identifies both Bankart and SLAP lesions. Our approach involved the collection of two distinct magnetic resonance (MR) image datasets, with the primary goal of automating the detection of Bankart and SLAP lesions. A novel mobile CNN, dubbed MobileTurkerNeXt, forms the cornerstone of this research. This newly developed model, comprising roughly 1 million trainable parameters, unfolds across four principal stages: the stem, main, downsampling, and output phases. The stem phase incorporates three convolutional layers to initiate feature extraction. In the main phase, we introduce an innovative block, drawing inspiration from ConvNeXt, EfficientNet, and ResNet architectures. The downsampling phase utilizes patchify average pooling and pixel-wise convolution to effectively reduce spatial dimensions, while the output phase is meticulously engineered to yield classification outcomes. Our experimentation with MobileTurkerNeXt spanned three comparative scenarios: Bankart versus normal, SLAP versus normal, and a tripartite comparison of Bankart, SLAP, and normal cases. The model demonstrated exemplary performance, achieving test classification accuracies exceeding 96% across these scenarios. The empirical results underscore the MobileTurkerNeXt's superior classification process in differentiating among Bankart, SLAP, and normal conditions in orthopedic imaging. This underscores the potential of our proposed mobile CNN in advancing diagnostic capabilities and contributing significantly to the field of medical image analysis.
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http://dx.doi.org/10.1007/s12194-025-00918-x | DOI Listing |
Adv Biomed Res
July 2025
Department of Radiodiagnosis, Base Hospital, Delhi Cantt, Delhi, India.
Background: Imaging continues to have a crucial role in evaluating patients with shoulder pain, helping to make treatment choices. Magnetic resonance arthrography (MRA), rather than magnetic resonance imaging (MRI), is now routinely used to diagnose shoulder injuries. Against the gold standard investigation of arthroscopy, the study aimed to determine the accuracy of MRA in the evaluation of shoulder injuries.
View Article and Find Full Text PDFRadiol Phys Technol
September 2025
Department of Digital Forensics Engineering, College of Technology, Firat University, Elazig, Turkey.
The landscape of computer vision is predominantly shaped by two groundbreaking methodologies: transformers and convolutional neural networks (CNNs). In this study, we aim to introduce an innovative mobile CNN architecture designed for orthopedic imaging that efficiently identifies both Bankart and SLAP lesions. Our approach involved the collection of two distinct magnetic resonance (MR) image datasets, with the primary goal of automating the detection of Bankart and SLAP lesions.
View Article and Find Full Text PDFAnn Jt
January 2025
Orthopaedic Research Institute, St George Hospital Campus, University of New South Wales, Sydney, Australia.
Background And Objective: While hand paresthesia and numbness are commonly associated with nerve compression, these symptoms also manifest in shoulder conditions not typically linked to direct nerve involvement, prompting questions about their underlying causes. This review aimed to explore the existing literature on hand paresthesia and numbness in patients with common shoulder pathologies. The goal was to identify gaps in our understanding of the prevalence and mechanisms behind these symptoms.
View Article and Find Full Text PDFArthroscopy
February 2025
Faculty of Medicine, Misr University for Science and Technology, 6th of October City, Egypt.
Purpose: To compare the diagnostic value of magnetic resonance arthrography (MRA) in different shoulder lesions using arthroscopy as gold standard.
Methods: We performed a comprehensive search in Cochrane, Scopus, PubMed, and Web of Science databases for articles that reported the diagnostic value of MRA in diagnosing labral tears, rotator cuff tears (RCTs), Hill-Sachs, and Bankart injuries. We used arthroscopic surgery as a reference standard for comparison.
J Clin Orthop Trauma
November 2024
Morgan-Kallman Clinic, Wilmington, DE, United States.
Background: Anterior rotator interval lesions (ARIL) have been associated with shoulder instability. However, a paucity of data exists on its association with labrum pathology as a source for persistent anterior shoulder pain. This study primarily aims to describe pathoanatomy of ARIL and the parameters we used that aid in the diagnosis of ARIL.
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