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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part H. Journal of Engineering in Medicine >Fractal analysis of the computed tomography images of vertebrae on the thoraco-lumbar region in diagnosing osteoporotic bone damage
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Fractal analysis of the computed tomography images of vertebrae on the thoraco-lumbar region in diagnosing osteoporotic bone damage

机译:胸腰椎区椎骨术后椎体分裂图像分形分析骨质疏松骨损伤

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摘要

Fractal analysis was used in the study to determine a set of feature descriptors which could be applied in the process of diagnosing bone damage caused by osteoporosis. The subject of the research involved the computed tomography images of vertebrae on the thoraco-lumbar region. The data set contained the images of healthy patients and patients diagnosed with osteoporosis. On the basis of fractal analysis and feature selection by linear stepwise regression, three descriptors were obtained. They were two fractal dimensions calculated with the variation method (transect - first differences and filter 1 estimators) and one fractal lacunarity calculated by means of the box counting method. The first two descriptors were obtained as a result of the analysis of grey images, and the third was the result of analysis of binary images. The effectiveness of the descriptors was verified using six popular supervised classification methods: linear and quadratic discriminant analysis, naive Bayes classifier, decision tree, K-nearest neighbours and random forests. The best results were obtained using the K-nearest neighbours classifier; they were as follows: overall classification accuracy - 81%, classification sensitivity - 78%, classification specificity - 90%, positive predictive value - 90%, and negative predictive value - 77%. The results of the research showed that fractal analysis can be a useful tool to extract feature vector of spinal computed tomography images in the diagnosis of osteoporotic bone defects.
机译:在研究中使用了分形分析,以确定一组特征描述符,其可以应用于诊断由骨质疏松症引起的骨损伤的过程中。研究的主题涉及胸腰椎区域上的椎骨的计算断层摄影图像。数据集包含健康患者的图像和诊断患有骨质疏松症的患者。基于线性逐步回归的分形分析和特征选择,获得了三个描述符。它们是用变化方法(横梁第一差异和过滤器1估计器)计算的两个分形尺寸,以及通过盒子计数方法计算的一个分形脉冲性。作为灰色图像分析的结果获得了前两个描述符,第三个是二进制图像分析的结果。使用六种流行的监督分类方法验证了描述符的有效性:线性和二次判别分析,天真贝叶斯分类器,决策树,k最近邻居和随机林。使用K-Collect邻居分类器获得最佳结果;它们如下:总体分类精度 - 81%,分类灵敏度 - 78%,分类特异性 - 90%,阳性预测值 - 90%,负面预测值 - 77%。研究结果表明,分形分析可以是提取骨质疏松骨缺损诊断中脊柱计算断层摄影图像的特征向量的有用工具。

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