Menze B H, Lichy M P, Bachert P, Kelm B M, Schlemmer H-P, Hamprecht F A
Interdisciplinary Center for Scientific Computing, IWR, University of Heidelberg, Heidelberg, Germany.
NMR Biomed. 2006 Aug;19(5):599-609. doi: 10.1002/nbm.1041.
We describe the optimal high-level postprocessing of single-voxel (1)H magnetic resonance spectra and assess the benefits and limitations of automated methods as diagnostic aids in the detection of recurrent brain tumor. In a previous clinical study, 90 long-echo-time single-voxel spectra were obtained from 52 patients and classified during follow-up (30/28/32 normal/non-progressive tumor/tumor). Based on these data, a large number of evaluation strategies, including both standard resonance line quantification and algorithms from pattern recognition and machine learning, were compared in a quantitative evaluation. Results from linear and non-linear feature extraction, including ICA, PCA and wavelet transformations, and also the data from resonance line quantification were combined systematically with different classifiers such as LDA, chemometric methods (PLS, PCR), support vector machines and ensemble methods. Classification accuracy was assessed using a leave-one-out cross-validation scheme and the area under the curve (AUC) of the receiver operator characteristic (ROC). A regularized linear regression on spectra with binned channels reached 91% classification accuracy compared with 83% from quantification. Interpreting the loadings of these regressions, we find that lipid and lactate signals are too unreliable to be used in a simple machine rule. Choline and NAA are the main source of relevant information. Overall, we find that fully automated pattern recognition algorithms perform as well as, or slightly better than, a manually controlled and optimized resonance line quantification.
我们描述了单像素(1)H磁共振波谱的最佳高级后处理方法,并评估了自动化方法作为复发性脑肿瘤检测诊断辅助手段的益处和局限性。在先前的一项临床研究中,从52例患者中获得了90个长回波时间的单像素波谱,并在随访期间进行了分类(30/28/32例正常/非进展性肿瘤/肿瘤)。基于这些数据,在定量评估中比较了大量评估策略,包括标准共振线定量以及模式识别和机器学习算法。线性和非线性特征提取的结果,包括独立成分分析(ICA)、主成分分析(PCA)和小波变换,以及共振线定量数据,与不同的分类器系统地结合,如线性判别分析(LDA)、化学计量学方法(偏最小二乘法(PLS)、主成分回归(PCR))、支持向量机和集成方法。使用留一法交叉验证方案和接收者操作特征(ROC)曲线下面积(AUC)评估分类准确性。对具有分箱通道的波谱进行正则化线性回归,分类准确率达到91%,而定量分析的准确率为83%。通过解释这些回归的载荷,我们发现脂质和乳酸信号太不可靠,无法用于简单的机器规则。胆碱和N-乙酰天门冬氨酸(NAA)是相关信息的主要来源。总体而言,我们发现全自动模式识别算法的性能与手动控制和优化的共振线定量相当,或略优于后者。