首页> 外文会议>Image Processing (ICIP 2009), 2009 >A statistical analysis of the effects of CT acquisition parameters on low-level features extracted from CT images of the lung
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A statistical analysis of the effects of CT acquisition parameters on low-level features extracted from CT images of the lung

机译:CT采集参数对从肺部CT图像中提取的低层特征的影响的统计分析

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We propose a solution for automatic classification of lung nodules in an environment with heterogeneous computed tomography (CT) acquisition parameters. Such a classification system needs to take into account the differences in CT acquisition parameters used when obtaining and processing each medical image. Using analysis of variance (ANOVA), our current research proposes to better understand the effects of CT acquisition parameters on predicting various semantic characteristics (such as spiculation, subtlety, and margin) used in the diagnosis interpretation process. All of the parameters were found to affect the low-level image features used in the classification models of these semantic characteristics. When this knowledge is used to normalize those parameters, the final semantic model will become unaffected by the CT acquisition parameters.
机译:我们提出了一种在具有异质计算机断层扫描(CT)采集参数的环境中对肺结节进行自动分类的解决方案。这种分类系统需要考虑在获取和处理每个医学图像时使用的CT采集参数的差异。通过使用方差分析(ANOVA),我们当前的研究建议更好地了解CT采集参数对预测诊断解释过程中使用的各种语义特征(例如,尖刻,细微和空白)的影响。发现所有参数都会影响这些语义特征的分类模型中使用的低级图像特征。当使用此知识对这些参数进行标准化时,最终的语义模型将不受CT采集参数的影响。

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