Affiliation:
1. Department of Artificial Intelligence and Data Science, Sejong University, Seoul 05006, Republic of Korea
Abstract
Background and Objective: Segmentation of the femur in Dual-Energy X-ray (DXA) images poses challenges due to reduced contrast, noise, bone shape variations, and inconsistent X-ray beam penetration. In this study, we investigate the relationship between noise and certain deep learning (DL) techniques for semantic segmentation of the femur to enhance segmentation and bone mineral density (BMD) accuracy by incorporating noise reduction methods into DL models. Methods: Convolutional neural network (CNN)-based models were employed to segment femurs in DXA images and evaluate the effects of noise reduction filters on segmentation accuracy and their effect on BMD calculation. Various noise reduction techniques were integrated into DL-based models to enhance image quality before training. We assessed the performance of the fully convolutional neural network (FCNN) in comparison to noise reduction algorithms and manual segmentation methods. Results: Our study demonstrated that the FCNN outperformed noise reduction algorithms in enhancing segmentation accuracy and enabling precise calculation of BMD. The FCNN-based segmentation approach achieved a segmentation accuracy of 98.84% and a correlation coefficient of 0.9928 for BMD measurements, indicating its effectiveness in the clinical diagnosis of osteoporosis. Conclusions: In conclusion, integrating noise reduction techniques into DL-based models significantly improves femur segmentation accuracy in DXA images. The FCNN model, in particular, shows promising results in enhancing BMD calculation and clinical diagnosis of osteoporosis. These findings highlight the potential of DL techniques in addressing segmentation challenges and improving diagnostic accuracy in medical imaging.
Funder
Institute of Information & Communications Technology Planning & Evaluation
Reference53 articles.
1. Femoral neck geometry and radiographic signs of osteoporosis as predictors of hip fracture;Karlsson;Bone,1996
2. Holvik, K., Ellingsen, C., Solbakken, S., Finnes, T., Talsnes, O., Grimnes, G., Tell, G., Søgaard, A., and Meyer, H. (2023). Cause-specific excess mortality after hip fracture: The Norwegian Epidemiologic Osteoporosis Studies (NOREPOS). BMC Geriatr., 23.
3. Diagnostic Value of Radiographic Singh Index Compared to Dual-Energy X-ray Absorptiometry Scan in Diagnosing Osteoporosis: A Systematic Review;Ghalenavi;Arch. Bone Jt. Surg.,2024
4. Dual-Energy X-ray Absorptiometry for Measurement of Phalangeal Bone Mineral Density on a Slot-Scanning Digital Radiography System;Dendere;IEEE Trans. Biomed. Eng.,2015
5. Impact of anomalous vertebral segmentation on measurements of bone mineral density;Peel;J. Bone Miner. Res.,1993