Application of genetic optimization to medical image segmentation

R. Cornely, W. Kuklinski
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引用次数: 7

Abstract

A number of important problems in medical imaging can be classified as segmentation problems. These segmentation problems can be formulated as configurational optimization problems by representing the configurations of interest in an image as unique subsets of the complete image. An effective segmentation optimization algorithm must determine the specific image subset that best exhibits an a priori set of quantitative characteristics. Here, a genetic optimization algorithm was used to produce a population of individual sub-images that were tested via a quantitative objective function, ranked using a linear fitness and decrement scheme, and modified using a genetic cross-over operator. The algorithm was found to converge within 25 to 50 generations to a good fit to the targeted configuration in a robust and efficient manner.<>
遗传优化在医学图像分割中的应用
医学成像中的许多重要问题都可以归类为分割问题。通过将图像中感兴趣的配置表示为完整图像的唯一子集,这些分割问题可以表述为配置优化问题。一个有效的分割优化算法必须确定最能展示先验定量特征集的特定图像子集。在这里,使用遗传优化算法来产生单个子图像的群体,这些子图像通过定量目标函数进行测试,使用线性适应度和递减方案进行排名,并使用遗传交叉算子进行修改。结果表明,该算法可以在25 ~ 50代内以鲁棒和高效的方式收敛到与目标配置很好的拟合。
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