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Segmentation algorithms of subcortical brain structures On MRI for radiotherapy and radiosurgery: A survey

机译:皮质下大脑结构的分割算法在MRI放射治疗和放射外科中的应用:一项调查

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摘要

This work covers the current state of the art with regard to approaches to segment subcortical brain structures. A huge range of diverse methods have been presented in the literature during the last decade to segment not only one or a constrained number of structures, but also a complete set of these subcortical regions. Special attention has been paid to atlas based segmentation methods, statistical models and deformable models for this purpose. More recently, the introduction of machine learning techniques, such as artificial neural networks or support vector machines, has helped the researchers to optimize the classification problem. These methods are presented in this work, and their advantages and drawbacks are further discussed. Although these methods have proved to perform well, their use is often limited to those situations where either there are no lesions in the brain or the presence of lesions does not highly vary the brain anatomy. Consequently, the development of segmentation algorithms that can deal with such lesions in the brain and still provide a good performance when segmenting subcortical structures is highly required in practice by some clinical applications, such as radiotherapy or radiosurgery. (C) 2015 Elsevier Masson SAS. All rights reserved.
机译:这项工作涵盖了有关分割皮层下大脑结构的方法的最新技术。在过去的十年中,文献中提出了各种各样的方法,不仅可以分割一个或一定数量的结构,而且可以分割这些皮质下区域的完整集合。为此,已经特别关注基于图集的分割方法,统计模型和可变形模型。最近,诸如人工神经网络或支持向量机之类的机器学习技术的引入已帮助研究人员优化分类问题。这些方法将在本工作中介绍,并进一步讨论它们的优缺点。尽管已证明这些方法效果良好,但它们的使用通常仅限于大脑中无病变或存在病变不会严重改变大脑解剖结构的情况。因此,在某些临床应用中,例如放射疗法或放射外科手术中,在实践中高度需要分割皮层下结构时,可以处理脑部病变并仍提供良好性能的分割算法的开发。 (C)2015 Elsevier Masson SAS。版权所有。

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    《Innovation and research in biomedical en》 |2015年第4期|200-212|共13页
  • 作者单位

    Aquilab, F-59120 Loos Les Lille, France|Univ Lille, CHU Lille, INSERM, U1189 ONCO THAI Image Assisted Laser Therapy Onco, F-59000 Lille, France;

    Aquilab, F-59120 Loos Les Lille, France;

    Univ Lille, CHU Lille, INSERM, U1189 ONCO THAI Image Assisted Laser Therapy Onco, F-59000 Lille, France;

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