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An interactive color pre-processing method to improve tumor segmentation in digital medical images

机译:一种交互式彩色预处理方法,可改善数字医学图像中的肿瘤分割

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摘要

In the last few decades the medical imaging field has grown considerably, and new techniques such as computerized axial tomography (CAT) and Magnetic Resonance Imaging (MRI) are able to obtain medical images in noninvasive ways. These new technologies have opened the medical field, offering opportunities to improve patient diagnosis, education and training, treatment monitoring, and surgery planning. One of these opportunities is in the tumor segmentation field.Tumor segmentation is the process of virtually extracting the tumor from the healthy tissues of the body by computer algorithms. This is a complex process since tumors have different shapes, sizes, tissue densities, and locations. The algorithms that have been developed cannot take into account all these variations and higher accuracy is achieved with specialized methods that generally work with specific types of tissue data.In this thesis a color pre-processing method for segmentation is presented. Most tumor segmentation methods are based on grayscale values of the medical images. The method proposed in this thesis adds color information to the original values of the image. The user selects the region of interest (ROI), usually the tumor, from the grayscale medical image and from this initial selection, the image is mapped into a colored space. Tissue densities that are part of the tumor are assigned an RGB component and any tissues outside the tumor are set to black. The user can tweak the color ranges in real time to achieve better results, in cases where the tumor pixels are non-homogenous in terms of intensity. The user then places a seed in the center of the tumor and begins segmentation. A pixel in the image is segmented as part of the tumor if it\u27s within an initial 10% threshold. This threshold is determined if the seed is within the average RGB values of the tumor, and within the search region. The search region is calculated by growing or shrinking the previous region using the information or previous segmented regions of the set of slices. The method automatically segments all the slices on the set from the inputs of the first slice. All through the segmentation process the user can tweak different parameters and visualize the segmentation results in real time.The method was run on ten test cases several runs were performed for each test cases. 10 out of the 20 test runs gave false positives of 25% or less, and 10 out of the 20 test runs gave false negatives of 25% or less. Using only grayscale thresholding methods the results for the same test cases show a false positive of up to 52% on the easy cases and up to 284% on the difficult cases, and false negatives of up to 14% on the easy cases and up to 99% on the difficult cases. While the results of the grayscale and color pre-processing methods on easy cases were similar, the results of color pre-processing were much better on difficult cases, thus supporting the claim that adding color to medical images for segmentation can significantly improve accuracy of tumor segmentation.
机译:在过去的几十年中,医学成像领域有了长足发展,诸如计算机轴向断层扫描(CAT)和磁共振成像(MRI)等新技术能够以非侵入性方式获得医学图像。这些新技术已经打开了医学领域,为改善患者诊断,教育和培训,治疗监测以及手术计划提供了机会。这些机会之一是在肿瘤分割领域。肿瘤分割是通过计算机算法从人体健康组织中虚拟提取肿瘤的过程。由于肿瘤具有不同的形状,大小,组织密度和位置,因此这是一个复杂的过程。已经开发出的算法不能考虑所有这些变化,并且通过通常可用于特定类型的组织数据的专用方法实现了更高的精度。本文提出了一种用于分割的颜色预处理方法。大多数肿瘤分割方法都是基于医学图像的灰度值。本文提出的方法将色彩信息添加到图像的原始值中。用户从灰度医学图像中选择感兴趣的区域(ROI),通常是肿瘤,并从该初始选择中将图像映射到彩色空间中。将作为肿瘤一部分的组织密度分配为RGB分量,并将肿瘤以外的任何组织设置为黑色。在肿瘤像素强度不均匀的情况下,用户可以实时调整颜色范围以获得更好的结果。然后,使用者将种子放在肿瘤中心并开始分割。如果图像中的像素在初始10%阈值之内,则被分割为肿瘤的一部分。确定该阈值是否是种子在肿瘤的平均RGB值之内以及搜索区域之内。通过使用信息或切片集合的先前分割的区域来增大或缩小先前的区域来计算搜索区域。该方法自动从第一个切片的输入中分割集合上的所有切片。在整个细分过程中,用户都可以调整不同的参数并实时显示细分结果。该方法在10个测试用例上运行,每个测试用例都进行了几次运行。 20个测试运行中有10个的假阳性率不超过25%,20个测试运行中有10个的假阴性率不超过25%。仅使用灰度阈值方法,相同测试用例的结果在简单情况下的假阳性率高达52%,在困难情况下的假阳性率高达284%,在简单情况下的假阴性率高达14%。在困难案件中占99%。尽管在简单情况下的灰度和颜色预处理方法的结果相似,但在困难情况下的颜色预处理结果要好得多,因此支持了这样的主张,即在医学图像上添加颜色以进行分割可以显着提高肿瘤的准确性。分割。

著录项

  • 作者

    Martinez Escobar, Marisol;

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  • 年度 2008
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  • 原文格式 PDF
  • 正文语种 en
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