Dzierżak Róża, Omiotek Zbigniew, Tkacz Ewaryst, Uhlig Sebastian
Department of Electronics and Information Technology, Lublin University of Technology, ul. Nadbystrzycka 38 A, 20-618 Lublin, Poland.
Department of Biosensors and Processing of Biomedical Signals, Silesian University of Technology, ul. Roosevelta 40, 44-800 Zabrze, Poland.
J Clin Med. 2022 Aug 3;11(15):4526. doi: 10.3390/jcm11154526.
The aim of the study was to compare the accuracy of the classification pertaining to the results of two types of soft tissue and bone reconstructions of the spinal CT in detecting the porosity of L1 vertebral body spongy tissue. The dataset for each type of reconstruction (high-resolution bone reconstruction and soft tissue reconstruction) included 400 sponge tissue images from 50 healthy patients and 50 patients with osteoporosis. Texture feature descriptors were calculated based on the statistical analysis of the grey image histogram, autoregression model, and wavelet transform. The data dimensional reduction was applied by feature selection using nine methods representing various approaches (filter, wrapper, and embedded methods). Eleven methods were used to build the classifier models. In the learning process, hyperparametric optimization based on the grid search method was applied. On this basis, the most effective model and the optimal subset of features for each selection method used were determined. In the case of bone reconstruction images, four models achieved a maximum accuracy of 92%, one of which had the highest sensitivity of 95%, with a specificity of 89%. For soft tissue reconstruction images, five models achieved the highest testing accuracy of 95%, whereas the other quality indices (TPR and TNR) were also equal to 95%. The research showed that the images derived from soft tissue reconstruction allow for obtaining more accurate values of texture parameters, which increases the accuracy of the classification and offers better possibilities for diagnosing osteoporosis.
本研究的目的是比较两种类型的脊柱CT软组织和骨重建结果在检测L1椎体松质组织孔隙率方面的分类准确性。每种重建类型(高分辨率骨重建和软组织重建)的数据集包括来自50名健康患者和50名骨质疏松患者的400张松质组织图像。基于灰度图像直方图的统计分析、自回归模型和小波变换计算纹理特征描述符。通过使用代表各种方法(过滤、包装和嵌入方法)的九种方法进行特征选择来应用数据降维。使用十一种方法构建分类器模型。在学习过程中,应用基于网格搜索方法的超参数优化。在此基础上,确定了每种使用的选择方法的最有效模型和最优特征子集。对于骨重建图像,四个模型达到了92%的最大准确率,其中一个模型的最高灵敏度为95%,特异性为89%。对于软组织重建图像,五个模型达到了95%的最高测试准确率,而其他质量指标(真阳性率和真阴性率)也等于95%。研究表明,软组织重建得到的图像能够获得更准确的纹理参数值,这提高了分类的准确性,并为诊断骨质疏松症提供了更好的可能性。