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大脑灰质、白质和脑脊液的交互式分割:照片和磁共振图像。

Interactive segmentation of cerebral gray matter, white matter, and CSF: photographic and MR images.

作者信息

Bartlett T Q, Vannier M W, McKeel D W, Gado M, Hildebolt C F, Walkup R

机构信息

Mallinckrodt Institute of Radiology, Washington University School of Medicine, St. Louis, MO 63110.

出版信息

Comput Med Imaging Graph. 1994 Nov-Dec;18(6):449-60. doi: 10.1016/0895-6111(94)90083-3.

DOI:10.1016/0895-6111(94)90083-3
PMID:7850740
Abstract

Digital photography of postmortem brain slices was compared with magnetic resonance imaging (MRI) for morphological analysis of human brain atrophy. In this study, we used two human brains obtained at autopsy: a cognitively defined nondemented control (70-yr-old male) and a demented Alzheimer's disease (AD) subject (82-yr-old female). For each of two brains, interactive manual image segmentation was performed by two observers on two image sets: (a) four coronal T1-weighted MR images (5 mm slices); and (b) four digitized photographic images from comparable rostrocaudal levels. Microcomputer image analysis software was used to measure the areas of three segmented cerebral compartments--gray matter (GM), white matter (WM) and CSF--for both image types. Resegmentation error was defined as the absolute difference between the areas derived from two segmentation trials divided by the value from trial 1 and multiplied by 100. This yielded the percent difference between the area measurements from the two trials. We found intra-observer agreement was better (error rates 1-18%) than inter-observer agreement (3-70%) with best agreement for WM and least for CSF, the smallest object class. MRI overestimated GM area relative to digitized photographs in the control but not the AD brain. The results define limitations of manual image segmentations and comparison of MRI with pathologic section photographic images.

摘要

将死后脑切片的数码摄影与磁共振成像(MRI)进行比较,以对人类脑萎缩进行形态学分析。在本研究中,我们使用了两例尸检获得的人脑:一例认知功能正常的非痴呆对照(70岁男性)和一例患有痴呆症的阿尔茨海默病(AD)患者(82岁女性)。对于这两例大脑,两名观察者对两组图像进行交互式手动图像分割:(a)四张冠状面T1加权MR图像(5毫米切片);(b)来自可比的前后水平的四张数字化摄影图像。使用微机图像分析软件测量两种图像类型的三个分割脑区——灰质(GM)、白质(WM)和脑脊液(CSF)——的面积。重新分割误差定义为两次分割试验得出的面积的绝对差值除以试验1的值,再乘以100。这得出了两次试验面积测量值之间的百分比差异。我们发现,观察者内一致性(误差率1 - 18%)优于观察者间一致性(3 - 70%),其中白质一致性最佳,脑脊液一致性最差,脑脊液是最小的目标类别。在对照脑中,相对于数字化照片,MRI高估了灰质面积,但在AD脑中并非如此。这些结果确定了手动图像分割以及MRI与病理切片摄影图像比较的局限性。

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