Author:
Wang Hua,Ying Jichong,Liu Jianlei,Yu Tianming,Huang Dichao
Abstract
Abstract
Background
Ankle fractures are prevalent injuries that necessitate precise diagnostic tools. Traditional diagnostic methods have limitations that can be addressed using machine learning techniques, with the potential to improve accuracy and expedite diagnoses.
Methods
We trained various deep learning architectures, notably the Adapted ResNet50 with SENet capabilities, to identify ankle fractures using a curated dataset of radiographic images. Model performance was evaluated using common metrics like accuracy, precision, and recall. Additionally, Grad-CAM visualizations were employed to interpret model decisions.
Results
The Adapted ResNet50 with SENet capabilities consistently outperformed other models, achieving an accuracy of 93%, AUC of 95%, and recall of 92%. Grad-CAM visualizations provided insights into areas of the radiographs that the model deemed significant in its decisions.
Conclusions
The Adapted ResNet50 model enhanced with SENet capabilities demonstrated superior performance in detecting ankle fractures, offering a promising tool to complement traditional diagnostic methods. However, continuous refinement and expert validation are essential to ensure optimal application in clinical settings.
Funder
Science and Technology Projects in the Field of Agriculture and Social Development in Yinzhou District, Ningbo City, Zhejiang Province, China
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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