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Evaluating Margin Sharpness Analysis on Similar Pulmonary Nodule Retrieval

机译:相似肺结节摘除的边缘清晰度评估分析

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Lung cancer is the leading cause of cancer-related deaths in the world and its main manifestation is through pulmonary nodules. Pulmonary nodule classification is a challenging task that must be done by qualified specialists, but image interpretation errors and temporal aspects difficult those processes. In order to aid radiologists on the image interpretation process, it is important to integrate computer-based tools with the lung cancer diagnostic process. Content-Based Image Retrieval (CBIR) can provide decision support to specialists by allowing them to find images from a database that are similar to a reference image. However, a well known challenge of CBIR is the image feature extraction process. Margin sharpness descriptors are still imatures and need to be more evaluated in order to optimize the performance of similar pulmonary nodule retrieval. The goal of this work is to perform a Margin Sharpness Analysis (MSA) in pulmonary nodule presented in computed tomography images, to retrieve the most similar nodules based on this MSA and to evaluate the performance of margin sharpness descriptors in the nodule retrieval. The results show that MSA presented a mean precision of 0.62 and 0.63, according to Precision and Recall parameters, regardless nodule malignancy, with Euclidean and Manhattan distances as image similarity measures, respectively. The evaluation also showed that, for the first 10 similar cases, the mean precision was 0.81 for both similarity distances.
机译:肺癌是世界上与癌症相关的死亡的主要原因,其主要表现是通过肺结节。肺结节的分类是一项具有挑战性的任务,必须由合格的专家来完成,但是图像解释错误和时间方面会给这些过程带来困难。为了帮助放射科医生进行图像解释过程,将基于计算机的工具与肺癌诊断过程相集成非常重要。基于内容的图像检索(CBIR)可以通过允许专家从数据库中查找与参考图像相似的图像来为专家提供决策支持。但是,CBIR的一个众所周知的挑战是图像特征提取过程。边缘清晰度描述符仍然是一个特征,需要对其进行更多评估,以优化类似肺结节取回的性能。这项工作的目标是对计算机断层扫描图像中显示的肺结节进行边缘清晰度分析(MSA),以基于该MSA检索最相似的结节,并评估结节检索中边缘清晰度描述符的性能。结果表明,根据Precision和Recall参数,无论结节恶性程度如何,MSA的平均精度分别为0.62和0.63,而欧氏距离和Manhattan距离分别作为图像相似性度量。评估还显示,对于前10个相似的案例,两个相似距离的平均精度为0.81。

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