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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >An expectation-maximisation approach for simultaneous pixel classification and tracer kinetic modelling in dynamic contrast enhanced-magnetic resonance imaging.
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An expectation-maximisation approach for simultaneous pixel classification and tracer kinetic modelling in dynamic contrast enhanced-magnetic resonance imaging.

机译:在动态对比增强磁共振成像中同时进行像素分类和示踪动力学建模的期望最大化方法。

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摘要

Traditionally, tracer kinetic modelling and pixel classification of DCE-MRI studies are accomplished separately, although they could greatly benefit from each other. In this article, we propose an expectation-maximisation scheme for simultaneous pixel classification and compartmental modelling of DCE-MRI studies. The key point in the proposed scheme is the estimation of the kinetic parameters (K(trans) and K(ep)) of the two-compartmental model. Typically, they are estimated via nonlinear least-squares fitting. In our scheme, by exploiting the iterative nature of the EM algorithm, we use instead a Taylor expansion of the modelling equation. We developed the theoretical framework for the particular case of two classes and evaluated the performances of the algorithm by means of simulations. Results indicate that the accuracy of the proposed method supersedes the traditional pixel-by-pixel scheme and approaches the theoretical lower bound imposed by the Cramer-Rao theorem. Preliminary results on real data were also reported.
机译:传统上,DCE-MRI研究的示踪动力学建模和像素分类是单独完成的,尽管它们可以彼此受益匪浅。在本文中,我们为DCE-MRI研究的同时像素分类和隔室建模提出了一种期望最大化方案。该方案的关键是对两室模型的动力学参数(K(trans)和K(ep))进行估计。通常,它们是通过非线性最小二乘拟合估算的。在我们的方案中,通过利用EM算法的迭代性质,我们改用建模方程的泰勒展开式。我们针对两类特殊情况开发了理论框架,并通过仿真评估了算法的性能。结果表明,该方法的准确性取代了传统的逐像素方案,并接近了Cramer-Rao定理的理论下界。还报告了真实数据的初步结果。

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