首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2010 >LogDemons Revisited: Consistent Regularisation and Incompressibility Constraint for Soft Tissue Tracking in Medical Images
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LogDemons Revisited: Consistent Regularisation and Incompressibility Constraint for Soft Tissue Tracking in Medical Images

机译:LogDemons再探:用于医学图像中软组织跟踪的一致正则化和不可压缩约束

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Non-linear image registration is a standard approach to track soft tissues in medical images. By estimating spatial transformations between images, visible structures can be followed over time. For clinical applications the model of transformation must be consistent with the properties of the biological tissue, such as incompressibility. LogDemons is a fast non-linear registration algorithm that provides diffusion-like diffeo-morphic transformations parameterised by stationary velocity fields. Yet, its use for tissue tracking has been limited because of the ad-hoc Gaussian regularisation that prevents implementing other transformation models. In this paper, we propose a mathematical formulation of demons regularisation that fits into LogDemons framework. This formulation enables to ensure volume-preserving deformations by minimising the energy functional directly under the linear divergence-free constraint, yielding little computational overhead. Tests on synthetic incompressible fields showed that our approach outperforms the original logDemons in terms of incompressible deformation recovery. The algorithm showed promising results on one patient for the automatic recovery of myocardium strain from cardiac anatomical and 3D tagged MRI.
机译:非线性图像配准是跟踪医学图像中软组织的标准方法。通过估计图像之间的空间变换,可见的结构可以随时间推移而变化。对于临床应用,转化模型必须与生物组织的特性(如不可压缩性)一致。 LogDemons是一种快速的非线性配准算法,可提供由固定速度场参数化的类似扩散的微晶变换。然而,由于临时的高斯正则化阻止了实现其他转换模型,因此其在组织跟踪中的使用受到了限制。在本文中,我们提出了适合LogDemons框架的恶魔正则化的数学公式。这种公式化可以通过在线性无散度约束下直接最小化能量函数来确保保留体积的变形,从而产生很少的计算开销。对合成不可压缩场的测试表明,在不可压缩形变恢复方面,我们的方法优于原始logDemon。该算法在一名患者的心脏解剖结构和3D标记MRI自动恢复心肌张力方面显示出可喜的结果。

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