» Articles » PMID: 39324016

Classification of AO/OTA 31A/B Femur Fractures in X-ray Images Using YOLOv8 and Advanced Data Augmentation Techniques

Overview
Journal Bone Rep
Date 2024 Sep 26
PMID 39324016
Authors
Affiliations
Soon will be listed here.
Abstract

Femur fractures are a significant worldwide public health concern that affects patients as well as their families because of their high frequency, morbidity, and mortality. When employing computer-aided diagnostic (CAD) technologies, promising results have been shown in the efficiency and accuracy of fracture classification, particularly with the growing use of Deep Learning (DL) approaches. Nevertheless, the complexity is further increased by the need to collect enough input data to train these algorithms and the challenge of interpreting the findings. By improving on the results of the most recent deep learning-based Arbeitsgemeinschaft für Osteosynthesefragen and Orthopaedic Trauma Association (AO/OTA) system classification of femur fractures, this study intends to support physicians in making correct and timely decisions regarding patient care. A state-of-the-art architecture, YOLOv8, was used and refined while paying close attention to the interpretability of the model. Furthermore, data augmentation techniques were involved during preprocessing, increasing the dataset samples through image processing alterations. The fine-tuned YOLOv8 model achieved remarkable results, with 0.9 accuracy, 0.85 precision, 0.85 recall, and 0.85 F1-score, computed by averaging the values among all the individual classes for each metric. This study shows the proposed architecture's effectiveness in enhancing the AO/OTA system's classification of femur fractures, assisting physicians in making prompt and accurate diagnoses.

References
1.
Zdolsek G, Chen Y, Bogl H, Wang C, Woisetschlager M, Schilcher J . Deep neural networks with promising diagnostic accuracy for the classification of atypical femoral fractures. Acta Orthop. 2021; 92(4):394-400. PMC: 8381921. DOI: 10.1080/17453674.2021.1891512. View

2.
Checcucci E, Piazzolla P, Marullo G, Innocente C, Salerno F, Ulrich L . Development of Bleeding Artificial Intelligence Detector (BLAIR) System for Robotic Radical Prostatectomy. J Clin Med. 2023; 12(23). PMC: 10707655. DOI: 10.3390/jcm12237355. View

3.
Lee C, Jang J, Lee S, Kim Y, Jo H, Kim Y . Classification of femur fracture in pelvic X-ray images using meta-learned deep neural network. Sci Rep. 2020; 10(1):13694. PMC: 7426947. DOI: 10.1038/s41598-020-70660-4. View

4.
Gondocs D, Dorfler V . AI in medical diagnosis: AI prediction & human judgment. Artif Intell Med. 2024; 149:102769. DOI: 10.1016/j.artmed.2024.102769. View

5.
Ryan D, Yoshihara H, Yoneoka D, Egol K, Zuckerman J . Delay in Hip Fracture Surgery: An Analysis of Patient-Specific and Hospital-Specific Risk Factors. J Orthop Trauma. 2015; 29(8):343-8. DOI: 10.1097/BOT.0000000000000313. View