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基于判别聚类的磁共振图像自动组织分割。

Self-supervised MRI tissue segmentation by discriminative clustering.

机构信息

Department of Information and Computer Science, Aalto University School of Science, P. O. Box 15400, FI-00076 Aalto, Espoo, Finland.

出版信息

Int J Neural Syst. 2014 Feb;24(1):1450004. doi: 10.1142/S012906571450004X. Epub 2013 Dec 11.

Abstract

The study of brain lesions can benefit from a clear identification of transitions between healthy and pathological tissues, through the analysis of brain imaging data. Current signal processing methods, able to address these issues, often rely on strong prior information. In this article, a new method for tissue segmentation is proposed. It is based on a discriminative strategy, in a self-supervised machine learning approach. This method avoids the use of prior information, which makes it very versatile, and able to cope with different tissue types. It also returns tissue probabilities for each voxel, crucial for a good characterization of the evolution of brain lesions. Simulated as well as real benchmark data were used to validate the accuracy of the method and compare it against other segmentation algorithms.

摘要

脑损伤的研究可以通过分析脑成像数据,对健康组织和病变组织之间的转变进行清晰的识别,从而受益。目前,能够解决这些问题的信号处理方法往往依赖于较强的先验信息。在本文中,提出了一种新的组织分割方法。它基于有判别力的策略,是一种自监督机器学习方法。该方法避免了使用先验信息,这使得它非常通用,能够处理不同的组织类型。它还为每个体素返回组织概率,这对于病变的演变的良好特征化至关重要。使用模拟和真实基准数据来验证该方法的准确性,并将其与其他分割算法进行比较。

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