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Classification of Prostate Cancer Grades and T-Stages Based on Tissue Elasticity Using Medical Image Analysis

机译:基于组织弹性的医学图像分析对前列腺癌分级和T分期的分类

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In this paper, we study the correlation of tissue (i.e. prostate) elasticity with the spread and aggression of prostate cancers. We describe an improved, in-vivo method that estimates the individualized, relative tissue elasticity parameters directly from medical images. Although elasticity reconstruction, or elastograph, can be used to estimate tissue elasticity, it is less suited for in-vivo measurements or deeply-seated organs like prostate. We develop a non-invasive method to estimate tissue elasticity values based on pairs of medical images, using a finite-element based biomechanical model derived from an initial set of images, local displacements, and an optimization-based framework. We demonstrate the feasibility of a statistically-based multi-class learning method that classifies a clinical T-stage and Gleason score using the patient's age and relative prostate elasticity values reconstructed from computed tomography (CT) images.
机译:在本文中,我们研究了组织(即前列腺)弹性与前列腺癌的扩散和侵袭性的相关性。我们描述了一种改进的体内方法,该方法直接从医学图像中估计出个性化的相对组织弹性参数。尽管可以使用弹性重建或弹性成像仪来估计组织弹性,但它不太适合于体内测量或诸如前列腺之类的深部器官。我们开发了一种非侵入性的方法,可以基于成对的医学图像,使用基于有限元素的生物力学模型来估计组织弹性值,该模型是从初始图像集,局部位移和基于优化的框架中得出的。我们证明了基于统计的多类学习方法的可行性,该方法使用从计算机断层扫描(CT)图像重建的患者年龄和相对前列腺弹性值对临床T期和Gleason评分进行分类。

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