基于自适应正则化核模糊C均值和增强水平集算法的超声肝肿瘤分割

D. Uplaonkar, Virupakshappa, Nagabhushan Patil
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引用次数: 2

摘要

目的开发一种肝脏超声图像肿瘤分割的混合算法。设计/方法/方法采集超声图像后,采用对比度有限的自适应直方图均衡化方法(CLAHE)进行预处理,增强图像的视觉质量,有助于更好的分割。然后,采用基于自适应正则化核的模糊C均值(ARKFCM),结合局部三元模式和选择性水平集方法从增强图像中分割出肿瘤;结果所提出的分割算法能精确地从增强图像中分割出肿瘤部分,且计算成本较低。在Jaccard系数、dice系数、精度、Matthews相关系数、f-score和精度等方面,与现有分割算法和ground真值进行了比较。实验分析表明,该算法的准确率达到99.18%,f-score值达到92.17%,优于现有算法。从实验分析来看,本文提出的基于增强水平集算法的ARKFCM在超声肝肿瘤分割中获得了比基于图的相关算法更好的性能。然而,与基于图的算法相比,该算法的骰子系数提高了3.11%。原创性/价值图像预处理采用CLAHE算法。采用ARKFCM算法中的选择性水平集模型和局部三元模式对预处理后的图像进行分割。本研究中提出的算法具有聚类参数的独立性、保留图像细节的鲁棒性和寻找阈值的最优性等优点,有效降低了计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ultrasound liver tumor segmentation using adaptively regularized kernel-based fuzzy C means with enhanced level set algorithm
PurposeThe purpose of this study is to develop a hybrid algorithm for segmenting tumor from ultrasound images of the liver.Design/methodology/approachAfter collecting the ultrasound images, contrast-limited adaptive histogram equalization approach (CLAHE) is applied as preprocessing, in order to enhance the visual quality of the images that helps in better segmentation. Then, adaptively regularized kernel-based fuzzy C means (ARKFCM) is used to segment tumor from the enhanced image along with local ternary pattern combined with selective level set approaches.FindingsThe proposed segmentation algorithm precisely segments the tumor portions from the enhanced images with lower computation cost. The proposed segmentation algorithm is compared with the existing algorithms and ground truth values in terms of Jaccard coefficient, dice coefficient, precision, Matthews correlation coefficient, f-score and accuracy. The experimental analysis shows that the proposed algorithm achieved 99.18% of accuracy and 92.17% of f-score value, which is better than the existing algorithms.Practical implicationsFrom the experimental analysis, the proposed ARKFCM with enhanced level set algorithm obtained better performance in ultrasound liver tumor segmentation related to graph-based algorithm. However, the proposed algorithm showed 3.11% improvement in dice coefficient compared to graph-based algorithm.Originality/valueThe image preprocessing is carried out using CLAHE algorithm. The preprocessed image is segmented by employing selective level set model and Local Ternary Pattern in ARKFCM algorithm. In this research, the proposed algorithm has advantages such as independence of clustering parameters, robustness in preserving the image details and optimal in finding the threshold value that effectively reduces the computational cost.
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