低剂量CT扫描肺结节检测模板匹配灵敏度实验

S. Elhabian, Hossam Abd, El Munim, S. Elshazly, Alya Farag, Mohamed Aboelghar
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引用次数: 8

摘要

模板匹配是CT扫描中检测肺结节的常用方法。模板可以采取不同的形状、大小和强度分布。结节检测的过程基本上分为两个步骤:分离候选结节和消除假阳性结节。概述检测到的结节及其分类(即为每个结节指定病理)的过程完成了早期发现肺结节的CAD系统。本文关注的是模板设计和评估第一步在结节检测过程中的有效性。本文既没有解决减少误报的问题,也没有处理结节的分割和分类问题。只考虑参数模板。模板的灰度分布建模是基于放射科医生提取的典型结节的先验知识。模板匹配的有效性通过交叉验证来研究,并通过命中率曲线来描述,该曲线表明检测概率作为模板的形状、大小和方向的函数(如果适用)。我们在实验中使用了合成的和采样的真实CT扫描图像。通过对合成数据的测试,发现模板匹配对加性噪声比图像模糊更敏感。在CT扫描样本上,小尺寸圆形和空心圆形模板提供了与人类专家相当的结果。
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Experiments on Sensitivity of Template Matching for Lung Nodule Detection in Low Dose CT Scans
Template matching is a common approach for detection of lung nodules from CT scans. Templates may take different shapes, size and intensity distribution. The process of nodule detection is essentially two steps: isolation of candidate nodules, and elimination of false positive nodules. The processes of outlining the detected nodules and their classification (i.e., assigning pathology for each nodule) complete the CAD system for early detection of lung nodules. This paper is concerned with the template design and evaluating the effectiveness of the first step in the nodule detection process. The paper will neither address the problem of reducing false positives nor would it deal with nodule segmentation and classification. Only parametric templates are considered. Modeling the gray scale distribution for the templates is based on the prior knowledge of typical nodules extracted by radiologists. The effectiveness of the template matching is investigated by cross validation with respect to the ground truth and is described by hit rate curves indicating the probability of detection as function of shape, size and orientation, if applicable, of the templates. We used synthetic and sample real CT scan images in our experiments. It is found that template matching is more sensitive to additive noise than image blurring when tests conducted on synthetic data. On the sample CT scans small size circular and hollow-circular templates provided comparable results to human experts.
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