用于检测和评估血管瘤演变的自动监测系统

C. Neghina, M. Zamfir, M. Ciuc, Alina Sultana, Maria Popescu
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引用次数: 2

摘要

本文介绍了一种基于面积和发红度两个参数的模糊逻辑自动监测系统,用于检测和评价血管瘤的演变。我们考虑了一对对图像(来自两个不同的时刻),这些图像显示血管瘤要么在进化,要么在静止,要么在退化。该算法的起点是矩形感兴趣区域(ROI),为两幅图像中的每幅手动选择,并使用模糊c均值自动分割。该算法利用模糊c均值提取的血管瘤的面积和红度,对同一患者,在不同的时刻,判断血管瘤是进化的、静止的还是退化的。因为了解肿瘤的形状如何随时间变化也是有用的,我们还包括了一种匹配和重叠血管瘤区域的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic monitoring system for the detection and evaluation of the evolution of hemangiomas
In this paper we introduce an automatic monitoring system for the detection and the evaluation of the evolution of hemangiomas using a fuzzy logic system based on two parameters: area and redness. We have considered pairs of images (from two different moments in time) that show hemangiomas either evolving, stationary or regressing. The starting points of the algorithm are the rectangular regions of interest (ROI), manually selected for each of the two images, and automatically segmented using Fuzzy C-means. Using the area and the redness of the hemagiomas extracted with Fuzzy C-means, for the same patient, at different moments of time, the algorithm decides whether the hemangioma is evolving, stationary or regressing. Because it is also useful to understand how the tumor's shape is changing in time, we have also included a method of matching and overlapping the hemangioma regions.
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