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Multi-sequence texture analysis in classification of in vivo MR images of the prostate

机译:多序列纹理分析在前列腺体内MR图像分类中的应用

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摘要

The aim of the study is to investigate the potential of multi-sequence texture analysis in the characterization of prostatic tissues from in vivo Magnetic Resonance Images (MRI). The approach consists in simultaneous analysis of several images, each acquired under different conditions, but representing the same part of the organ. First, the texture of each image is characterized independently of the others. Then the feature values corresponding to different acquisition conditions are combined in one vector, characterizing a combination of textures derived from several sequences. Three MRI sequences are considered: T1-weighted, T2-weighted, and diffusion-weighted. Their textures are characterized using six methods (statistical and model-based). In total, 30 tissue descriptors are calculated for each sequence. The feature space is reduced using a modified Monte Carlo feature selection, combined with wrapper methods, and Principal Components Analysis.
机译:这项研究的目的是研究体内磁共振图像(MRI)表征前列腺组织的多序列纹理分析的潜力。该方法包括同时分析多个图像,每个图像在不同条件下获取,但代表器官的相同部分。首先,每个图像的纹理都与其他图像无关。然后,将与不同采集条件相对应的特征值组合到一个向量中,以表征从多个序列得出的纹理的组合。考虑了三个MRI序列:T1加权,T2加权和扩散加权。使用六种方法(基于统计和基于模型)表征其纹理。总共为每个序列计算30个组织描述符。使用修改后的蒙特卡洛特征选择,结合包装方法和主成分分析,可以减少特征空间。

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