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通过磁共振成像自动识别灰质结构以改善白质病变的分割。

Automatic identification of gray matter structures from MRI to improve the segmentation of white matter lesions.

作者信息

Warfield S, Dengler J, Zaers J, Guttmann C R, Wells W M, Ettinger G J, Hiller J, Kikinis R

机构信息

School of Computer Science and Engineering, University of New South Wales, Sydney, Australia.

出版信息

J Image Guid Surg. 1995;1(6):326-38. doi: 10.1002/(SICI)1522-712X(1995)1:6<326::AID-IGS4>3.0.CO;2-C.

Abstract

The segmentation of MRI scans of patients with white matter lesions (WML) is difficult because the MRI characteristics of WML are similar to those of gray matter. Intensity-based statistical classification techniques misclassify some WML as gray matter and some gray matter as WML. We developed a fast elastic matching algorithm that warps a reference data set containing information about the location of the gray matter into the approximate shape of the patient's brain. The region of white matter was segmented after segmenting the cortex and deep gray matter structures. The cortex was identified by using a three-dimensional, region-growing algorithm that was constrained by anatomical, intensity gradient, and tissue class parameters. White matter and WML were then segmented without interference from gray matter by using a two-class minimum-distance classifier. Analysis of double-echo spin-echo MRI scans of 16 patients with clinically determined multiple sclerosis (MS) was carried out. The segmentation of the cortex and deep gray matter structures provided anatomical context. This was found to improve the segmentation of MS lesions by allowing correct classification of the white matter region despite the overlapping tissue class distributions of gray matter and MS lesion.

摘要

对白质病变(WML)患者的磁共振成像(MRI)扫描进行分割很困难,因为WML的MRI特征与灰质相似。基于强度的统计分类技术会将一些WML误分类为灰质,将一些灰质误分类为WML。我们开发了一种快速弹性匹配算法,该算法将包含灰质位置信息的参考数据集扭曲成患者大脑的近似形状。在分割皮质和深部灰质结构后,对白质区域进行分割。通过使用受解剖学、强度梯度和组织类别参数约束的三维区域生长算法来识别皮质。然后使用两类最小距离分类器在不受灰质干扰的情况下对白质和WML进行分割。对16例临床诊断为多发性硬化症(MS)患者的双回波自旋回波MRI扫描进行了分析。皮质和深部灰质结构的分割提供了解剖学背景。结果发现,尽管灰质和MS病变的组织类别分布重叠,但通过对白质区域进行正确分类,这有助于改善MS病变的分割。

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