Opstad K S, Ladroue C, Bell B A, Griffiths J R, Howe F A
Cancer Research UK Biomedical Magnetic Resonance Research Group, St George's University of London, London, UK.
NMR Biomed. 2007 Dec;20(8):763-70. doi: 10.1002/nbm.1147.
(1)H MRS is an attractive choice for non-invasively diagnosing brain tumours. Many studies have been performed to create an objective decision support system, but there is not yet a consensus as to the best techniques of MRS acquisition or data processing to be used for optimum classification. In this study, we investigate whether LCModel analysis of short-TE (30 ms), single-voxel tumour spectra provide a better input for classification than the use of the original spectra. A total of 145 histologically diagnosed brain tumour spectra were acquired [14 astrocytoma grade II (AS2), 15 astrocytoma grade III (AS3), 42 glioblastoma (GBM), 41 metastases (MET) and 33 meningioma (MNG)], and linear discriminant analyses (LDA) were performed on the LCModel analysis of the spectra and the original spectra. The results consistently suggest improvement in classification when the LCModel concentrations are used. LDA of AS2, MNG and high-grade tumours (HG, comprising GBM and MET) correctly classified 94% using the LCModel dataset compared with 93% using the spectral dataset. The inclusion of AS3 reduced the accuracy to 82% and 78% for LCModel analysis and the original spectra, respectively, and further separating HG into GBM and MET gave 70% compared with 60%. Generally MNG spectra have profiles that are visually distinct from those of the other tumour types, but the classification accuracy was typically about 80%, with MNG with substantial lipid/macromolecule signals being classified as HG. Omission of the lipid/macromolecule concentrations in the LCModel dataset provided an improvement in classification of MNG (91% compared with 76%). In conclusion, there appears to be an advantage to performing pattern recognition on the quantitative analysis of tumour spectra rather than using the whole spectra. However, the results suggest that a two-step LDA process may help in classifying the five tumour groups to provide optimum classification of MNG with high lipid/macromolecule contributions which maybe misclassified as HG.
(1)氢磁共振波谱(H MRS)是无创诊断脑肿瘤的一个有吸引力的选择。已经进行了许多研究来创建一个客观的决策支持系统,但对于用于最佳分类的磁共振波谱采集或数据处理的最佳技术尚未达成共识。在本研究中,我们调查短回波时间(30毫秒)的单体素肿瘤波谱的LCModel分析是否比使用原始波谱为分类提供更好的输入。共采集了145例经组织学诊断的脑肿瘤波谱[14例二级星形细胞瘤(AS2)、15例三级星形细胞瘤(AS3)、42例胶质母细胞瘤(GBM)、41例转移瘤(MET)和33例脑膜瘤(MNG)],并对波谱的LCModel分析结果和原始波谱进行线性判别分析(LDA)。结果一致表明,使用LCModel浓度时分类有所改善。AS2、MNG和高级别肿瘤(HG,包括GBM和MET)的LDA使用LCModel数据集正确分类率为94%,而使用波谱数据集为93%。纳入AS3后,LCModel分析和原始波谱的准确率分别降至82%和78%,将HG进一步分为GBM和MET时,准确率分别为70%和60%。一般来说,MNG波谱的轮廓在视觉上与其他肿瘤类型不同,但分类准确率通常约为80%,具有大量脂质/大分子信号的MNG被分类为HG。在LCModel数据集中忽略脂质/大分子浓度可提高MNG的分类准确率(从76%提高到91%)。总之,对肿瘤波谱进行定量分析而不是使用整个波谱进行模式识别似乎具有优势。然而,结果表明,两步LDA过程可能有助于对五个肿瘤组进行分类,以实现对具有高脂质/大分子贡献且可能被误分类为HG的MNG的最佳分类。