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从人脑的磁共振图像中自动分离灰质和白质。

Automated separation of gray and white matter from MR images of the human brain.

作者信息

Schnack H G, Baaré W F, Staal W G, Viergever M A, Kahn R S

机构信息

Department of Psychiatry, A01.126, University Medical Center Utrecht, The Netherlands.

出版信息

Neuroimage. 2001 Jan;13(1):230-7. doi: 10.1006/nimg.2000.0669.

Abstract

A simple automatic procedure for segmentation of gray and white matter in high resolution 1.5T T1-weighted MR human brain images was developed and validated. The algorithm is based on histogram shape analysis of MR images that were corrected for scanner nonuniformity. Calibration and validation was done on a set of 80 MR images of human brains. The automatic method's values for the gray and white matter volumes were compared with the values from thresholds set twice by the best three of six raters. The automatic procedure was shown to perform as good as the best rater, where the average result of the best three raters was taken as reference. The method was also compared with two other histogram-based threshold methods, which yielded comparable results. The conclusion of the study thus is that automated threshold based methods can separate gray and white matter from MR brain images as reliably as human raters using a thresholding procedure.

摘要

开发并验证了一种用于在高分辨率1.5T T1加权人脑磁共振图像中分割灰质和白质的简单自动程序。该算法基于对已校正扫描仪不均匀性的磁共振图像进行直方图形状分析。在一组80张人脑磁共振图像上进行了校准和验证。将自动方法得到的灰质和白质体积值与六位评分者中三位最佳评分者两次设定的阈值所得到的值进行比较。以三位最佳评分者的平均结果为参考,结果表明自动程序的表现与最佳评分者一样好。该方法还与其他两种基于直方图的阈值方法进行了比较,结果相当。因此,该研究的结论是,基于自动阈值的方法在从磁共振脑图像中分离灰质和白质方面,与使用阈值程序的人类评分者一样可靠。

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