A robust Segmentation Model-based Fuzzy Swarm Intelligence and Logistic Chaotic Map for Hepatic CT Focal Lesion Segmentation

A. Anter, Samir A. Elsagheer, A. B. Zaky
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Abstract

Computed tomography (CT) scans of the liver and hepatic lesions must be segmented in order to diagnose liver abnormalities precisely and reduce the likelihood of liver surgery. In this study, a dynamic hybrid model is proposed for the automatic identification and segmentation of hepatic lesions from CT scans. More specifically, a powerful optimization model for accuracy, speed, and optimal convergence based on kernel fuzzy c-means (FCM), chaotic map, and antlion optimization (ALO) algorithm for automatic hepatic focal lesion segmentation is proposed; named (CALO-FCM). In order to achieve the best cluster centroids and produce more accurate segmentation results, ALO is employed to guide FCM. By balancing exploration and exploitation rates, the performance of ALO is improved in terms of local minima avoidance and convergence speed. It might be argued that the CALO improves computational performance and prevents the FCM from becoming trapped in local minima. The proposed model shows good detection and segmentation outcomes on a set of patients with abdominal liver CT when compared to other methods. Additionally, the experimental findings demonstrated that the proposed model could locate the ideal centroids and avoid the local optima issue. This new hybrid model may lead to an earlier and more accurate clinical diagnosis of a hepatic lesion, assisting medical professionals in their judgement and enabling patients to receive an earlier prognosis.
基于模糊群智能和Logistic混沌映射鲁棒分割模型的肝脏CT病灶分割
为了准确诊断肝脏异常和减少肝脏手术的可能性,肝脏和肝脏病变的CT扫描必须进行分段。本研究提出了一种动态混合模型,用于CT扫描肝脏病变的自动识别和分割。更具体地说,提出了一种基于核模糊c均值(FCM)、混沌映射和蚁群优化(ALO)算法的肝脏病灶自动分割的精度、速度和最优收敛性的强大优化模型;命名(CALO-FCM)。为了获得最佳聚类质心,得到更准确的分割结果,采用ALO来指导FCM。通过平衡勘探和开采速度,该算法在避免局部极小值和收敛速度方面得到了提高。可能有人认为,CALO提高了计算性能,并防止FCM陷入局部最小值。与其他方法相比,该模型对一组腹部肝脏CT患者的检测和分割效果较好。此外,实验结果表明,该模型能够定位理想质心,避免了局部最优问题。这种新的混合模型可能会导致更早和更准确的肝病变临床诊断,协助医疗专业人员的判断,使患者得到更早的预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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