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Research on medical image segmentation based on fuzzy clustering algorithm

机译:基于模糊聚类算法的医学图像分割研究

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Objectives: The aim of the study is to apply the fuzzy clustering algorithm to medical image segmentation technology and analyze the application effect of the algorithm. Methods: In this study, the application of bacterial fuzzy clustering algorithm and bacterial foraging optimization algorithm in tooth image segmentation is analyzed. Among them, bacteria fuzzy clustering algorithm is a research group, whereas bacteria foraging optimization algorithm is a conventional group. Relevant researchers need to compare the separation index, partition coefficient, and partition index of the two algorithms. Results: Compared with the conventional group, the separation index and the partition coefficient of the experimental group were relatively high, and the two groups in the separation index and partition coefficients have a statistically significant difference ( P 0.05); compared with the experimental group, the index value was higher in the conventional group, and there was significant difference between the two groups in the zoning index ( P 0.05). Conclusions: Compared with the traditional bacterial optimization algorithm, the application of the bacterial fuzzy clustering algorithm in tooth image segmentation is more remarkable.
机译:目的:研究的目的是将模糊聚类算法应用于医学图像分割技术,并分析该算法的应用效果。方法:本研究分析了细菌模糊聚类算法和细菌觅食优化算法在牙齿图像分割中的应用。其中,细菌模糊聚类算法是一个研究小组,而细菌觅食优化算法是一个常规小组。相关研究人员需要比较两种算法的分离指数,分配系数和分配指数。结果:与常规组相比,实验组的分离指数和分配系数较高,两组的分离指数和分配系数差异有统计学意义(P <0.05);与实验组相比,常规组指标值较高,两组之间的分区指数差异有统计学意义(P <0.05)。结论:与传统的细菌优化算法相比,细菌模糊聚类算法在牙齿图像分割中的应用更为显着。

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