Istituto per le Applicazioni del Calcolo 'Mauro Picone' CNR, Napoli, Italy.
Istituto per le Applicazioni del Calcolo 'Mauro Picone' CNR, Napoli, Italy.
Comput Med Imaging Graph. 2014 Jul;38(5):337-47. doi: 10.1016/j.compmedimag.2014.03.003. Epub 2014 Mar 21.
This work investigates the capability of supervised classification methods in detecting both major tissues and subcortical structures using multispectral brain magnetic resonance images. First, by means of a realistic digital brain phantom, we investigated the classification performance of various Discriminant Analysis methods, K-Nearest Neighbor and Support Vector Machine. Then, using phantom and real data, we quantitatively assessed the benefits of integrating anatomical information in the classification, in the form of voxels coordinates as additional features to the intensities or tissue probabilistic atlases as priors. In addition we tested the effect of spatial correlations between neighboring voxels and image denoising. For each brain tissue we measured the classification performance in terms of global agreement percentage, false positive and false negative rates and kappa coefficient. The effectiveness of integrating spatial information or a tissue probabilistic atlas has been demonstrated for the aim of accurately classifying brain magnetic resonance images.
这项工作研究了监督分类方法在使用多光谱脑磁共振图像检测主要组织和皮质下结构方面的能力。首先,通过一个现实的数字脑模型,我们研究了各种判别分析方法、K-最近邻和支持向量机的分类性能。然后,使用模型和真实数据,我们以体素坐标的形式定量评估了将解剖学信息整合到分类中的好处,作为对强度或组织概率图谱的附加特征。此外,我们还测试了相邻体素之间的空间相关性和图像去噪的影响。对于每种脑组织,我们根据全局一致性百分比、假阳性率和假阴性率以及kappa 系数来衡量分类性能。事实证明,整合空间信息或组织概率图谱对于准确分类脑磁共振图像是有效的。