Fripp Jurgen, Bourgeat Pierrick, Crozier Stuart, Ourselin Sebastien
BioMedIA Lab, eHealth Research Centre, CSIRO ICT Centre, 300 Adelaide street, Brisbane, QLD, 4001, Australia.
Acad Radiol. 2007 Oct;14(10):1201-8. doi: 10.1016/j.acra.2007.06.021.
The segmentation of textured anatomy from magnetic resonance images (MRI) is a difficult problem. We present an approach that uses features extracted from the magnitude and phase of the MRI signal to segment the bones in the knee. Moreover, we show that by incorporating shape information, more accurate and anatomically valid segmentations are obtained.
Eighteen volunteers were scanned in a whole-body 3T clinical scanner using a transmit-receive quadrature extremity coil. A gradient-echo sequence was used to acquire three-dimensional (3D) volumes of raw complex image data consisting of phase and magnitude information. These images were manually segmented and features were extracted using a bank of Gabor filters. The extracted features were then used to train a support vector machine (SVM) classifier. Each image was then automatically segmented using both the SVM classifier and a 3D active shape model (ASM) driven by the classifier.
The use of phase and magnitude information from both echoes obtained the most accurate classifier results with an average dice similarity coefficient of 0.907. The use of 3D ASMs further improved the robustness, accuracy and anatomic validity of the segmentations with an overall DSC of 0.922 and an average point to surface error along the bone-cartilage interface of 0.73 mm.
Our results demonstrate that the incorporation of phase and multiple echoes improve the results obtained by the classifier. Moreover, we show that 3D ASMs provide a robust and accurate way of using the classifier to obtain anatomically valid segmentation results.
从磁共振成像(MRI)中分割出有纹理的解剖结构是一个难题。我们提出一种方法,利用从MRI信号的幅度和相位中提取的特征来分割膝关节中的骨骼。此外,我们表明,通过纳入形状信息,可以获得更准确且符合解剖学的分割结果。
18名志愿者在全身3T临床扫描仪中使用发射-接收正交肢体线圈进行扫描。使用梯度回波序列获取由相位和幅度信息组成的三维(3D)原始复杂图像数据体。这些图像经过手动分割,并使用一组Gabor滤波器提取特征。然后,将提取的特征用于训练支持向量机(SVM)分类器。接着,使用SVM分类器和由该分类器驱动的3D主动形状模型(ASM)对每个图像进行自动分割。
使用来自两个回波的相位和幅度信息获得了最准确的分类器结果,平均骰子相似系数为0.907。使用3D ASM进一步提高了分割的鲁棒性、准确性和解剖学有效性,总体DSC为0.922,沿骨-软骨界面的平均点到面误差为0.73毫米。
我们的结果表明,纳入相位和多个回波可改善分类器获得的结果。此外,我们表明3D ASM提供了一种强大而准确的方法,利用分类器获得符合解剖学的有效分割结果。