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首页> 外文期刊>Physics in medicine and biology. >Computer-aided diagnosis of prostate cancer using multi-parametric MRI: comparison between PUN and Tofts models
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Computer-aided diagnosis of prostate cancer using multi-parametric MRI: comparison between PUN and Tofts models

机译:使用多参数MRI的电脑辅助诊断前列腺癌:双关语和TOFTS模型的比较

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摘要

Computer-aided diagnosis (CAD) systems are increasingly being used in clinical settings to report multi-parametric magnetic resonance imaging (mp-MRI) of the prostate. Usually, CAD systems automatically highlight cancer-suspicious regions to the radiologist, reducing reader variability and interpretation errors. Nevertheless, implementing this software requires the selection of which mp-MRI parameters can best discriminate between malignant and non-malignant regions. To exploit functional information, some parameters are derived from dynamic contrast-enhanced (DCE) acquisitions. In particular, much CAD software employs pharmacokinetic features, such as K-trans and k(ep), derived from the Tofts model, to estimate a likelihood map of malignancy. However, non-pharmacokinetic models can be also used to describe DCE-MRI curves, without any requirement for prior knowledge or measurement of the arterial input function, which could potentially lead to large errors in parameter estimation. In this work, we implemented an empirical function derived from the phenomenological universalities (PUN) class to fit DCE-MRI. The parameters of the PUN model are used in combination with T2-weighted and diffusion-weighted acquisitions to feed a support vector machine classifier to produce a voxel-wise malignancy likelihood map of the prostate. The results were all compared to those for a CAD system based on Tofts pharmacokinetic features to describe DCE-MRI curves, using different quality aspects of image segmentation, while also evaluating the number and size of false positive (FP) candidate regions. This study included 61 patients with 70 biopsy-proven prostate cancers (PCa). The metrics used to evaluate segmentation quality between the two CAD systems were not statistically different, although the PUN-based CAD reported a lower number of FP, with reduced size compared to the Tofts-based CAD. In conclusion, the CAD software based on PUN parameters is a feasible means with which to detect PCa, without affecting segmentation quality, and hence it could be successfully applied in clinical settings, improving the automated diagnosis process and reducing computational complexity.
机译:计算机辅助诊断(CAD)系统越来越多地用于临床环境中以报告前列腺的多参数磁共振成像(MP-MRI)。通常,CAD系统自动将癌症可疑地区突出显示到放射科学家,减少了读者可变性和解释错误。然而,实施该软件需要选择MP-MRI参数可以最佳地区分恶性和非恶性区域。为了利用功能信息,某些参数源自动态对比度增强(DCE)采集。特别地,许多CAD软件采用来自Tofts模型的k-trans和k(ep),例如k-trans和k(ep),以估计恶性肿瘤的可能性图。然而,非药代动力学模型也可以用于描述DCE-MRI曲线,而不需要对动脉输入函数的先前知识或测量的任何要求,这可能导致参数估计中的大误差。在这项工作中,我们实施了源自符合DCE-MRI的现象学普遍性(双关语)阶层的经验函数。该PUN模型的参数组合使用与T2加权和扩散加权收购喂支持向量机分类器以产生前列腺的体素明智恶性似然图。结果与基于TOFTS药代动力学特征的CAD系统的结果进行了比较,以描述DCE-MRI曲线,使用图像分割的不同质量方面,同时还评估假阳性(FP)候选区域的数量和大小。本研究包括61例患有70例活组织检查验证的前列腺癌(PCA)。用于评估两个CAD系统之间的分割质量的度量在统计学上没有统计学不同,尽管基于双关语CAD报告了较少的FP,但与基于TOFTS的CAD相比,尺寸减小。总之,基于POM参数的CAD软件是一种可行的方法,可以使用该方法来检测PCA,而不会影响分割质量,因此它可以成功应用于临床环境中,从而改善自动诊断过程并降低计算复杂性。

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