Medical Physics Department, Medical School, University of Thessaly, Biopolis, 41110, Larissa, Greece.
Magn Reson Imaging. 2013 Nov;31(9):1567-77. doi: 10.1016/j.mri.2013.06.010. Epub 2013 Jul 30.
The aim of this study was to evaluate the contribution of diffusion and perfusion MR metrics in the discrimination of intracranial brain lesions at 3T MRI, and to investigate the potential diagnostic and predictive value that pattern recognition techniques may provide in tumor characterization using these metrics as classification features. Conventional MRI, diffusion weighted imaging (DWI), diffusion tensor imaging (DTI) and dynamic-susceptibility contrast imaging (DSCI) were performed on 115 patients with newly diagnosed intracranial tumors (low-and- high grade gliomas, meningiomas, solitary metastases). The Mann-Whitney U test was employed in order to identify statistical differences of the diffusion and perfusion parameters for different tumor comparisons in the intra-and peritumoral region. To assess the diagnostic contribution of these parameters, two different methods were used; the commonly used receiver operating characteristic (ROC) analysis and the more sophisticated SVM classification, and accuracy, sensitivity and specificity levels were obtained for both cases. The combination of all metrics provided the optimum diagnostic outcome. The highest predictive outcome was obtained using the SVM classification, although ROC analysis yielded high accuracies as well. It is evident that DWI/DTI and DSCI are useful techniques for tumor grading. Nevertheless, cellularity and vascularity are factors closely correlated in a non-linear way and thus difficult to evaluate and interpret through conventional methods of analysis. Hence, the combination of diffusion and perfusion metrics into a sophisticated classification scheme may provide the optimum diagnostic outcome. In conclusion, machine learning techniques may be used as an adjunctive diagnostic tool, which can be implemented into the clinical routine to optimize decision making.
本研究旨在评估在 3T MRI 中扩散和灌注 MR 指标在颅内脑病变鉴别中的作用,并研究模式识别技术在使用这些指标作为分类特征对肿瘤进行特征描述时可能提供的潜在诊断和预测价值。对 115 例新诊断的颅内肿瘤(低级别和高级别胶质瘤、脑膜瘤、单发转移瘤)患者进行了常规 MRI、弥散加权成像(DWI)、弥散张量成像(DTI)和动态磁敏感对比成像(DSCI)检查。采用 Mann-Whitney U 检验来识别不同肿瘤在瘤内和瘤周区域的扩散和灌注参数的统计学差异。为了评估这些参数的诊断贡献,使用了两种不同的方法;常用的受试者工作特征(ROC)分析和更复杂的 SVM 分类,并分别获得了两种情况下的准确性、敏感性和特异性水平。所有指标的组合提供了最佳的诊断结果。虽然 ROC 分析也具有较高的准确性,但使用 SVM 分类可以获得最高的预测结果。显然,DWI/DTI 和 DSCI 是用于肿瘤分级的有用技术。然而,细胞密度和血管密度以非线性方式密切相关,因此难以通过常规分析方法进行评估和解释。因此,将扩散和灌注指标组合成复杂的分类方案可能会提供最佳的诊断结果。总之,机器学习技术可以用作辅助诊断工具,可以将其纳入临床常规以优化决策制定。