Georgiadis Pantelis, Cavouras Dionisis, Kalatzis Ioannis, Glotsos Dimitris, Athanasiadis Emmanouil, Kostopoulos Spiros, Sifaki Koralia, Malamas Menelaos, Nikiforidis George, Solomou Ekaterini
Medical Image Processing and Analysis (MIPA) Group, Laboratory of Medical Physics, Department of Radiology, School of Medicine, University of Patras, Rio GR-26503, Greece.
Magn Reson Imaging. 2009 Jan;27(1):120-30. doi: 10.1016/j.mri.2008.05.017. Epub 2008 Jul 7.
Three-dimensional (3D) texture analysis of volumetric brain magnetic resonance (MR) images has been identified as an important indicator for discriminating among different brain pathologies. The purpose of this study was to evaluate the efficiency of 3D textural features using a pattern recognition system in the task of discriminating benign, malignant and metastatic brain tissues on T1 postcontrast MR imaging (MRI) series. The dataset consisted of 67 brain MRI series obtained from patients with verified and untreated intracranial tumors. The pattern recognition system was designed as an ensemble classification scheme employing a support vector machine classifier, specially modified in order to integrate the least squares features transformation logic in its kernel function. The latter, in conjunction with using 3D textural features, enabled boosting up the performance of the system in discriminating metastatic, malignant and benign brain tumors with 77.14%, 89.19% and 93.33% accuracy, respectively. The method was evaluated using an external cross-validation process; thus, results might be considered indicative of the generalization performance of the system to "unseen" cases. The proposed system might be used as an assisting tool for brain tumor characterization on volumetric MRI series.
体积脑磁共振(MR)图像的三维(3D)纹理分析已被视为区分不同脑部病变的重要指标。本研究的目的是在T1增强磁共振成像(MRI)序列上,使用模式识别系统评估3D纹理特征在鉴别良性、恶性和转移性脑组织任务中的效率。数据集由67例经证实未治疗的颅内肿瘤患者的脑MRI序列组成。模式识别系统被设计为一种集成分类方案,采用支持向量机分类器,并进行了特殊修改,以便在其核函数中集成最小二乘特征变换逻辑。后者与使用3D纹理特征相结合,使系统在鉴别转移性、恶性和良性脑肿瘤时的性能分别提高,准确率分别为77.14%、89.19%和93.33%。该方法通过外部交叉验证过程进行评估;因此,结果可能被视为该系统对“未见”病例泛化性能的指标。所提出的系统可作为体积MRI序列上脑肿瘤特征描述的辅助工具。