Optimal linear transformation for MRI feature extraction

H. Soltanian-Zadeh, J. Windham, D. Peck
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引用次数: 75

Abstract

Presents development and application of a feature extraction method for magnetic resonance imaging (MRI), without explicit calculation of tissue parameters. A three-dimensional (3-D) feature space representation of the data is generated in which normal tissues are clustered around pre-specified target positions and abnormalities are clustered elsewhere. This is accomplished by a linear minimum mean square error transformation of categorical data to target positions. From the 3-D histogram (cluster plot) of the transformed data, clusters are identified and regions of interest (ROIs) for normal and abnormal tissues are defined. These ROIs are used to estimate signature (feature) vectors for each tissue type which in turn are used to segment the MRI scene. The proposed feature space is compared to those generated by tissue-parameter-weighted images, principal component images, and angle images, demonstrating its superiority for feature extraction. The method and its performance are illustrated using MRI images of an egg phantom and a human brain.
MRI特征提取的最优线性变换
介绍了一种无需明确计算组织参数的磁共振成像(MRI)特征提取方法的开发和应用。生成数据的三维(3d)特征空间表示,其中正常组织聚集在预先指定的目标位置周围,异常组织聚集在其他地方。这是通过分类数据到目标位置的线性最小均方误差变换来实现的。从转换数据的三维直方图(聚类图)中,识别聚类并定义正常和异常组织的兴趣区域(roi)。这些roi用于估计每个组织类型的特征(特征)向量,这些特征向量又用于分割MRI场景。将所提出的特征空间与组织参数加权图像、主成分图像和角度图像生成的特征空间进行了比较,证明了其在特征提取方面的优越性。该方法和它的性能说明了核磁共振成像图像的鸡蛋幻影和人类的大脑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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