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Identification of Pulmonary Lung Nodules Ce ntroid on CT Scans Using Moment Analysis

机译:利用矩量分析在CT扫描中识别肺部肺结节

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Lung cancer becomes one of the diseases with a high mortality rate. The identification of lung nodules as a representation of lung cancer becomes a very important part. One method of identifying lung nodules is to segment the lung areas. Increased performance of segmentation is a thing that developed by experts. This research is a preliminary study that develops one of the lung nodule identification techniques by determining its centroid. This centroid will give information how accurate the segmentation method is. The best segmentation method so far gives the smallest value shift of centroid to the ground truth. In determining the central point of the lung nodule, lung cancer CT image is segmented using three different methods namely edge active contour, active base region contour and growing region. The segmented area is then analyzed using a moment analysis that expressed by the center of mass. Center of mass represents centroid coordinates. The coordinate shift between ground truth and suspected nodule coordinates expressed by the standard error value and euclidian distance in pixels. The smallest shift gives a smallest standard error and Euclidean distance. The results showed that the region growing method resulted in 0.004327182 for standard error value and 3.821609503 for a euclidian distance which is smallest than others segmentation methods.
机译:肺癌成为死亡率高的疾病之一。肺结节作为肺癌的代表的鉴定变得非常重要。识别肺结节的一种方法是分割肺区域。细分的性能提高是专家开发的。这项研究是一项初步研究,通过确定其质心来开发一种肺结节鉴定技术。该质心将为您提供分割方法的准确性。迄今为止,最佳的分割方法可将质心向地面真实值的偏移最小。在确定肺结节的中心点时,使用三种不同的方法对肺癌CT图像进行分割,即边缘活动轮廓,活动基础区域轮廓和生长区域。然后使用由质心表示的矩分析来分析分段区域。重心代表质心坐标。由标准误差值和欧氏距离(以像素为单位)表示的地面真相和可疑结节坐标之间的坐标偏移。最小的偏移给出最小的标准误差和欧几里得距离。结果表明,该区域增长方法的标准误差值为0.004327182,而与欧氏距离的误差为3.821609503,这比其他分割方法最小。

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