Hsieh Kevin Li-Chun, Lo Chung-Ming, Hsiao Chih-Jou
Department of Medical Imaging, Taipei Medical University Hospital, Taipei, Taiwan; Translational Imaging Research Center, College of Medicine, Taipei Medical University, Taipei, Taiwan.
Graduate Institute of Biomedical Informatics, College of Medical Science and Technology, Taipei Medical University, Taipei, Taiwan.
Comput Methods Programs Biomed. 2017 Feb;139:31-38. doi: 10.1016/j.cmpb.2016.10.021. Epub 2016 Oct 27.
A computer-aided diagnosis (CAD) system based on quantitative magnetic resonance imaging (MRI) features was developed to evaluate the malignancy of diffuse gliomas, which are central nervous system tumors.
The acquired image database for the CAD performance evaluation was composed of 34 glioblastomas and 73 diffuse lower-grade gliomas. In each case, tissues enclosed in a delineated tumor area were analyzed according to their gray-scale intensities on MRI scans. Four histogram moment features describing the global gray-scale distributions of gliomas tissues and 14 textural features were used to interpret local correlations between adjacent pixel values. With a logistic regression model, the individual feature set and a combination of both feature sets were used to establish the malignancy prediction model.
Performances of the CAD system using global, local, and the combination of both image feature sets achieved accuracies of 76%, 83%, and 88%, respectively. Compared to global features, the combined features had significantly better accuracy (p = 0.0213). With respect to the pathology results, the CAD classification obtained substantial agreement κ = 0.698, p < 0.001.
Numerous proposed image features were significant in distinguishing glioblastomas from lower-grade gliomas. Combining them further into a malignancy prediction model would be promising in providing diagnostic suggestions for clinical use.
开发了一种基于定量磁共振成像(MRI)特征的计算机辅助诊断(CAD)系统,用于评估作为中枢神经系统肿瘤的弥漫性胶质瘤的恶性程度。
用于CAD性能评估的采集图像数据库由34例胶质母细胞瘤和73例弥漫性低级别胶质瘤组成。在每个病例中,根据MRI扫描上的灰度强度分析划定肿瘤区域内的组织。使用四个描述胶质瘤组织全局灰度分布的直方图矩特征和14个纹理特征来解释相邻像素值之间的局部相关性。使用逻辑回归模型,将单个特征集以及两个特征集的组合用于建立恶性程度预测模型。
使用全局、局部以及两个图像特征集组合的CAD系统的性能分别达到了76%、83%和88%的准确率。与全局特征相比,组合特征的准确率显著更高(p = 0.0213)。关于病理结果,CAD分类获得了较高的一致性,κ = 0.698,p < 0.001。
众多提出的图像特征在区分胶质母细胞瘤和低级别胶质瘤方面具有重要意义。将它们进一步组合成一个恶性程度预测模型,有望为临床应用提供诊断建议。