Early diagnosis of osteoporosis using Artificial Neural Networks and Support Vector Machines

Mustafa Istanbullu, M. Aydin, R. Benveniste, O. Ucan, R. Jennane
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引用次数: 1

Abstract

In the last decade, osteoporotic fractures became one of the most serious problems in public health. The life risk of suffering of an osteoporotic fracture is estimated to be 30% for 50 years old and in postmenopausal period woman. Early diagnosis is quite important for osteoporosis. A fall can be easily result in a fracture; these are common in the hip, at the neck of the femur, the wrist and the spine, if it's not treated sequences on time. Be inspiring from this problem we aimed to build up an image processing method for helping to early diagnosis. In this study we obtained features via wavelet transform from Computerized Tomography images. Classification is achieved by Artificial Neural Networks (ANN) and Support Vector Machines (SVM). As a result for ANN, we accomplished 70% correct osteoporosis classification from early period images. SVM classification increased the accuracy and we have reached up 86% correct classification. These successful results make a significant contribution to early diagnosis of osteoporosis.
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基于人工神经网络和支持向量机的骨质疏松症早期诊断
在过去的十年中,骨质疏松性骨折成为公共卫生中最严重的问题之一。患骨质疏松性骨折的生命风险估计在50岁和绝经后妇女中为30%。骨质疏松症的早期诊断非常重要。跌倒很容易导致骨折;如果没有及时治疗,这些在臀部、股骨颈、手腕和脊柱都很常见。受此问题的启发,我们旨在建立一种有助于早期诊断的图像处理方法。本研究采用小波变换对计算机断层图像进行特征提取。分类由人工神经网络(ANN)和支持向量机(SVM)实现。结果,我们从早期图像中完成了70%的骨质疏松症分类。SVM分类提高了准确率,我们的分类正确率达到了86%。这些成功的结果为骨质疏松症的早期诊断做出了重要贡献。
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