基于迁移学习的骨质疏松症简单x线片分类

IF 1.7 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of Online and Biomedical Engineering Pub Date : 2023-06-27 DOI:10.3991/ijoe.v19i08.39235
P. Dodamani, A. Danti
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引用次数: 0

摘要

骨质疏松症是一种影响整个骨骼系统的疾病,导致骨量密度下降和骨组织微结构减弱。这会导致骨骼变弱,更容易骨折。骨矿物质密度的检测和测量一直是骨质疏松等骨病诊断研究的重点领域。然而,由于x射线图像噪声和骨骼形状的变化,特别是在低对比度条件下,用于骨质疏松症诊断的现有算法在获得准确结果方面面临挑战。因此,开发有效的算法来缓解这些挑战并提高骨质疏松症诊断的准确性是必不可少的。本研究对最新深度学习CNN模型VGG16、VGG19、DenseNet121、Resnet50和InceptionV3在检测正常和骨质疏松病例分类中的准确性和效率进行了对比分析。该研究使用830张脊柱、手、腿、膝盖和髋关节的x线图像,包括420例正常病例和410例骨质疏松病例。利用各种性能指标对每个模型进行评估,结果表明,与本研究中考虑的其他模型相比,DenseNet121的准确率为93.4%,错误率为0.07,验证损失仅为0.57。
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Transfer Learning-Based Osteoporosis Classification Using Simple Radiographs
Osteoporosis is a condition that affects the entire skeletal system, resulting in decreased density of bone mass and the weakening of bone tissue's micro-architecture. This leads to weaker bones that are more susceptible to fractures. Detecting and measuring bone mineral density has always been a critical area of focus for researchers in the diagnosis of bone diseases such as osteoporosis. However, existing algorithms used for osteoporosis diagnosis encounter challenges in obtaining accurate results due to X-ray image noise and variations in bone shapes, especially in low contrast conditions. Therefore, the development of efficient algorithms that can mitigate these challenges and improve the accuracy of osteoporosis diagnosis is essential. In this research paper, a comparative analysis was conducted Assessing the accuracy and efficiency of the latest deep learning CNN model, such as VGG16, VGG19, DenseNet121, Resnet50 and InceptionV3 in detecting to Classify Normal and Osteoporosis cases. The study employed 830 X-ray images of Spine, Hand, Leg, Knee, and Hip, comprising of Normal (420) and Osteoporosis (410) cases. Various performance metrics were utilized to evaluate each model, and the findings indicate that DenseNet121 exhibited superior performance with an accuracy rate of 93.4% with Achieving an error rate of 0.07 and a validation loss of only 0.57 in comparison with other models considered in this study.
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来源期刊
CiteScore
4.00
自引率
46.20%
发文量
143
审稿时长
12 weeks
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