Vinitski S, Gonzalez C, Mohamed F, Iwanaga T, Knobler R L, Khalili K, Mack J
Department of Radiology, Thomas Jefferson University Hospital, Philadelphia, PA 19107, USA.
Magn Reson Med. 1997 Mar;37(3):457-69. doi: 10.1002/mrm.1910370325.
Our aim was to develop an accurate multispectral tissue segmentation method based on 3D feature maps. We utilized proton density (PD), T2-weighted fast spin-echo (FSE), and T1-weighted spin-echo images as inputs for segmentation. Phantom constructs, cadaver brains, an animal brain tumor model and both normal human brains and those from patients with either multiple sclerosis (MS) or primary brain tumors were analyzed with this technique. Initially, misregistration, RF inhomogeneity and image noise problems were addressed. Next, a qualified observer identified samples representing the tissues of interest. Finally, k-nearest neighbor algorithm (k-NN) was utilized to create a stack of color-coded segmented images. The inclusion of T1 based images, as a third input, produced significant improvement in the delineation of tissues. In MS, our 3D technique was found to be far superior to that based on any combination of 2D feature maps (P < 0.001). We identified at least two distinctly different classes of lesions within the same MS plaque, representing different stages of the disease process. Further, we obtained the regional distribution of MS lesion burden and followed its changes over time. Neuropsychological aberrations were the clinical counterpart of the structural changes detected in segmentation. We could also delineate the margins of benign brain tumors. In malignant tumors, up to four abnormal tissues were identified: 1) a solid tumor core, 2) a cystic component, 3) edema in the white matter, and 4) areas of necrosis and hemorrhage. Subsequent neurosurgical exploration confirmed the distribution of tissues as predicted by this analysis.
我们的目标是开发一种基于三维特征图的精确多光谱组织分割方法。我们利用质子密度(PD)、T2加权快速自旋回波(FSE)和T1加权自旋回波图像作为分割的输入。使用该技术对体模构建物、尸体脑、动物脑肿瘤模型以及正常人类脑和患有多发性硬化症(MS)或原发性脑肿瘤患者的脑进行了分析。首先,解决了配准错误、射频不均匀性和图像噪声问题。接下来,由一名合格的观察者识别代表感兴趣组织的样本。最后,利用k近邻算法(k-NN)创建一叠彩色编码的分割图像。将基于T1的图像作为第三个输入,在组织描绘方面有了显著改进。在MS中,我们发现三维技术远优于基于任何二维特征图组合的技术(P<0.001)。我们在同一MS斑块内识别出至少两种明显不同类型的病变,代表疾病过程的不同阶段。此外,我们获得了MS病变负荷的区域分布,并跟踪其随时间的变化。神经心理学异常是分割中检测到的结构变化的临床对应物。我们还可以勾勒出良性脑肿瘤的边缘。在恶性肿瘤中,识别出多达四种异常组织:1)实体肿瘤核心,2)囊性成分,3)白质水肿,4)坏死和出血区域。随后的神经外科探查证实了该分析所预测的组织分布。