Department of Electronics and Communication Engineering, Sethu Institute of Technology, Kariapatti, Tamilnadu, India.
Couger Inc., Tokyo, Japan.
J Xray Sci Technol. 2020;28(5):953-973. doi: 10.3233/XST-200692.
Osteoporosis, a silent killing disease of fracture risk, is normally determined based on the bone mineral density (BMD) and T-score values measured in bone. However, development of standard algorithms for accurate segmentation and BMD measurement from X-ray images is a challenge in the medical field.
The purpose of this work is to more accurately measure BMD from X-ray images, which can overcome the limitations of the current standard technique to measure BMD using Dual Energy X-ray Absorptiometry (DEXA) such as non-availability and inaccessibility of DEXA machines in developing countries. In addition, this work also attempts to analyze the DEXA scan images for better segmentation and measurement of BMD.
This work employs a modified U-Net with Attention unit for accurate segmentation of bone region from X-Ray and DEXA images. A linear regression model is developed to compute BMD and T-score. Based on the value of T-score, the images are then classified as normal, osteopenia or osteoporosis.
The proposed network is experimented with the two internally collected datasets namely, DEXSIT and XSITRAY, comprised of DEXA and X-ray images, respectively. The proposed method achieved an accuracy of 88% on both datasets. The Dice score on DEXSIT and XSITRAY is 0.94 and 0.92, respectively.
Our modified U-Net with attention unit achieves significantly higher results in terms of Dice score and classification accuracy. The computed BMD and T-score values of the proposed method are also compared with the respective clinical reports for validation. Hence, using the digitized X-Ray images can be used to detect osteoporosis efficiently and accurately.
骨质疏松症是一种导致骨折风险的无声杀手疾病,通常基于骨的骨矿物质密度(BMD)和 T 评分值来确定。然而,开发用于从 X 射线图像中进行准确分割和 BMD 测量的标准算法是医学领域的一个挑战。
本工作旨在更准确地从 X 射线图像中测量 BMD,这可以克服当前使用双能 X 射线吸收法(DEXA)测量 BMD 的标准技术的局限性,例如发展中国家无法获得和无法获得 DEXA 机器。此外,本工作还尝试分析 DEXA 扫描图像,以更好地分割和测量 BMD。
本工作采用了一种带有注意力单元的改进型 U-Net,用于从 X 射线和 DEXA 图像中准确分割骨区域。开发了一个线性回归模型来计算 BMD 和 T 评分。根据 T 评分值,将图像分类为正常、低骨量或骨质疏松。
该网络在两个内部收集的数据集 DEXSIT 和 XSITRAY 上进行了实验,分别由 DEXA 和 X 射线图像组成。所提出的方法在两个数据集上的准确率均达到 88%。DEXSIT 和 XSITRAY 的 Dice 得分分别为 0.94 和 0.92。
我们的改进型 U-Net 注意力单元在 Dice 得分和分类准确率方面取得了显著更高的结果。所提出方法计算的 BMD 和 T 评分值也与各自的临床报告进行了比较验证。因此,使用数字化 X 射线图像可以有效地和准确地检测骨质疏松症。