Simonetti Arjan W, Melssen Willem J, Szabo de Edelenyi Fabien, van Asten Jack J A, Heerschap Arend, Buydens Lutgarde M C
Laboratory for Analytical Chemistry, University of Nijmegen, Toernooiveld 1, 6525 ED Nijmegen, The Netherlands.
NMR Biomed. 2005 Feb;18(1):34-43. doi: 10.1002/nbm.919.
The purpose of this paper is to evaluate the effect of the combination of magnetic resonance spectroscopic imaging (MRSI) data and magnetic resonance imaging (MRI) data on the classification result of four brain tumor classes. Suppressed and unsuppressed short echo time MRSI and MRI were performed on 24 patients with a brain tumor and four volunteers. Four different feature reduction procedures were applied to the MRSI data: simple quantitation, principal component analysis, independent component analysis and LCModel. Water intensities were calculated from the unsuppressed MRSI data. Features were extracted from the MR images which were acquired with four different contrasts to comply with the spatial resolution of the MRSI. Evaluation was performed by investigating different combinations of the MRSI features, the MRI features and the water intensities. For each data set, the isolation in feature space of the tumor classes, healthy brain tissue and cerebrospinal fluid was calculated and visualized. A test set was used to calculate classification results for each data set. Finally, the effect of the selected feature reduction procedures on the MRSI data was investigated to ascertain whether it was more important than the addition of MRI information. Conclusions are that the combination of features from MRSI data and MRI data improves the classification result considerably when compared with features obtained from MRSI data alone. This effect is larger than the effect of specific feature reduction procedures on the MRSI data. The addition of water intensities to the data set also increases the classification result, although not significantly. We show that the combination of data from different MR investigations can be very important for brain tumor classification, particularly if a large number of tumors are to be classified simultaneously.
本文旨在评估磁共振波谱成像(MRSI)数据与磁共振成像(MRI)数据相结合对四种脑肿瘤类别的分类结果的影响。对24例脑肿瘤患者和4名志愿者进行了抑制和未抑制的短回波时间MRSI及MRI检查。对MRSI数据应用了四种不同的特征约简程序:简单定量、主成分分析、独立成分分析和LCModel。从未抑制的MRSI数据中计算水强度。从具有四种不同对比度的MR图像中提取特征,以符合MRSI的空间分辨率。通过研究MRSI特征、MRI特征和水强度的不同组合进行评估。对于每个数据集,计算并可视化肿瘤类别、健康脑组织和脑脊液在特征空间中的分离情况。使用测试集计算每个数据集的分类结果。最后,研究了所选特征约简程序对MRSI数据的影响,以确定其是否比添加MRI信息更重要。结论是,与仅从MRSI数据获得的特征相比,MRSI数据和MRI数据的特征组合显著改善了分类结果。这种效果大于特定特征约简程序对MRSI数据的影响。向数据集中添加水强度也会提高分类结果,尽管不显著。我们表明,来自不同MR检查的数据组合对于脑肿瘤分类可能非常重要,特别是在要同时对大量肿瘤进行分类的情况下。