Hierarchical Bayesian classification of multimodal medical images

K. Mardia, T. J. Hainsworth, J. Kirkbride, M. Hurn, E. Berry
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引用次数: 1

Abstract

It has gradually been recognised that Bayesian algorithms are more widely applicable and reliable than ad hoc algorithms. Advantages include the use of explicit and realistic stochastic models making it easier to understand the working behind the algorithm and allowing confidence statements about conclusions. The authors propose a method, within a Bayesian framework, to assimilate information from images obtained from different modalities at different resolutions. The algorithm is used with a pair of images, from which a fused high resolution image and improved data reconstructions are simultaneously obtained. The authors illustrate their method by 2 examples, the first fuses a pair of SPECT and CT phantom images and the second a pair of MR brain scan images, obtained from different acquisition techniques. The authors provide a pseudo-comparison of the latter example with a commercially available package called ANALYZE. However, the phantom images from physical experiment given here provide a true validation and performance of the model.
多模态医学图像的层次贝叶斯分类
人们逐渐认识到贝叶斯算法比自组织算法应用更广泛、更可靠。优点包括使用显式和现实的随机模型,使其更容易理解算法背后的工作原理,并允许对结论进行置信度陈述。作者提出了一种方法,在贝叶斯框架内,从不同分辨率下从不同模式获得的图像中吸收信息。将该算法应用于一对图像,同时获得融合后的高分辨率图像和改进后的数据重构。作者通过两个例子来说明他们的方法,第一个是融合一对SPECT和CT的虚幻图像,第二个是融合一对磁共振脑扫描图像,从不同的采集技术获得。作者将后一个示例与一个名为ANALYZE的商用软件包进行了伪比较。然而,这里给出的物理实验的幻像提供了一个真实的验证和模型的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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