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A Semi-automated Toolkit for Analysis of Liver Cancer Treatment Response Using Perfusion CT

机译:使用灌注CT分析肝癌治疗反应的半自动化工具包

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摘要

Delineation of hepatic tumours is challenging in CT due to limited inherent tissue contrast, leading to significant intra-/inter-observer variability. Perfusion CT (pCT) allows quantitative assessment of enhancement patterns in normal and abnormal liver. This study aims to develop a semi-automated perfusion analysis toolkit that classifies hepatic tissue based on perfusion-derived parameters. pCT data from patients with hepatic metastases were used in this study. Tumour motion was minimized through image registration; perfusion parameters were derived and then employed in the training of a machine learning algorithm used to classify hepatic tissue. This method was found to deliver promising results for 10 data sets, with recorded sensitivity and specificity of the tissue classification in the ranges of 0.92-0.99 and 0.98-0.99 respectively. This semi-automated method could be used to analyze response over the treatment course, as it is not based on intensity values.
机译:肝脏肿瘤描绘由于固有的内在组织对比度有限,导致具有有限的内部内或观察者间变异性的CT。灌注CT(PCT)允许在正常和异常肝脏中进行增强模式的定量评估。本研究旨在开发半自动灌注分析工具包,其基于灌注衍生参数对肝组织进行分类。本研究中使用来自肝转移患者的PCT数据。通过图像配准肿瘤运动最小化;衍生灌注参数,然后采用用于分类肝组织的机器学习算法的训练。发现该方法为10个数据集提供有希望的结果,分别为0.92-0.99和0.98-0.99的组织分类的记录敏感性和特异性。该半自动方法可用于分析处理过程的响应,因为它不是基于强度值。

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