Ciritsis Alexander, Boss Andreas, Rossi Cristina
Department of Diagnostic and Interventional Radiology, University Hospital Zurich, University of Zurich, Switzerland.
NMR Biomed. 2018 Jul;31(7):e3931. doi: 10.1002/nbm.3931. Epub 2018 Apr 26.
The diffusion-weighted (DW) MR signal sampled over a wide range of b-values potentially allows for tissue differentiation in terms of cellularity, microstructure, perfusion, and T relaxivity. This study aimed to implement a machine learning algorithm for automatic brain tissue segmentation from DW-MRI datasets, and to determine the optimal sub-set of features for accurate segmentation. DWI was performed at 3 T in eight healthy volunteers using 15 b-values and 20 diffusion-encoding directions. The pixel-wise signal attenuation, as well as the trace and fractional anisotropy (FA) of the diffusion tensor, were used as features to train a support vector machine classifier for gray matter, white matter, and cerebrospinal fluid classes. The datasets of two volunteers were used for validation. For each subject, tissue classification was also performed on 3D T -weighted data sets with a probabilistic framework. Confusion matrices were generated for quantitative assessment of image classification accuracy in comparison with the reference method. DWI-based tissue segmentation resulted in an accuracy of 82.1% on the validation dataset and of 82.2% on the training dataset, excluding relevant model over-fitting. A mean Dice coefficient (DSC) of 0.79 ± 0.08 was found. About 50% of the classification performance was attributable to five features (i.e. signal measured at b-values of 5/10/500/1200 s/mm and the FA). This reduced set of features led to almost identical performances for the validation (82.2%) and the training (81.4%) datasets (DSC = 0.79 ± 0.08). Machine learning techniques applied to DWI data allow for accurate brain tissue segmentation based on both morphological and functional information.
在很宽的b值范围内采样的扩散加权(DW)磁共振信号,有可能根据细胞密度、微观结构、灌注和T弛豫率实现组织区分。本研究旨在实现一种机器学习算法,用于从DW-MRI数据集中自动进行脑组织分割,并确定用于精确分割的最佳特征子集。对8名健康志愿者在3T场强下进行弥散加权成像(DWI),使用15个b值和20个扩散编码方向。将逐像素信号衰减以及扩散张量的迹和分数各向异性(FA)用作特征,来训练用于灰质、白质和脑脊液类别的支持向量机分类器。两名志愿者的数据集用于验证。对于每个受试者,还使用概率框架对三维T加权数据集进行组织分类。生成混淆矩阵,以便与参考方法比较来定量评估图像分类准确性。基于DWI的组织分割在验证数据集上的准确率为82.1%,在训练数据集上为82.2%,排除了相关的模型过拟合情况。发现平均骰子系数(DSC)为0.79±0.08。约50%的分类性能归因于五个特征(即b值为5/10/500/1200 s/mm²时测量的信号以及FA)。这一精简的特征集在验证数据集(82.2%)和训练数据集(81.4%)上产生了几乎相同的性能(DSC = 0.79±0.08)。应用于DWI数据的机器学习技术能够基于形态学和功能信息实现准确的脑组织分割。