Firefly Competitive Swarm Optimization Based Hierarchical Attention Network for Lung Cancer Detection

B. Spoorthi, S. Mahesh
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Abstract

Lung cancer is a severe disease, which causes high deaths in the world. Earlier discovery of lung cancer is useful to enhance the rate of survival in patients. Computed Tomography (CT) is utilized for determining the tumor and identifying the cancer level in the body. However, the issues of CT images cause less tumor visibility areas and unconstructive rates in tumor regions. This paper devises an optimization-driven technique for classifying lung cancer. The CT image is utilized for determining the position of the tumor. Here, the CT image undergoes segmentation, which is performed using the DeepJoint model. Furthermore, the feature extraction is carried out, wherein features such as local ternary pattern-based features, Histogram of Gradients (HoG) features, and statistical features, like variance, mean, kurtosis, energy, entropy, and skewness. The categorization of lung cancer is performed using Hierarchical Attention Network (HAN). The training of HAN is carried out using proposed Firefly Competitive Swarm Optimization (FCSO), which is devised by combining firefly algorithm (FA), and Competitive Swarm Optimization (CSO). The proposed FCSO-based HAN provided effective performance with high accuracy of 91.3%, sensitivity of 88%, and specificity of 89.1%.
基于萤火虫竞争群优化的分层关注网络肺癌检测
肺癌是一种严重的疾病,在世界上造成很高的死亡率。早期发现肺癌有助于提高患者的生存率。计算机断层扫描(CT)用于确定肿瘤和确定体内的癌症水平。然而,CT图像的问题导致肿瘤可见区域较少和肿瘤区域的非建设性率。本文设计了一种优化驱动的肺癌分类技术。利用CT图像确定肿瘤的位置。在这里,使用DeepJoint模型对CT图像进行分割。此外,进行特征提取,包括基于局部三元模式的特征、梯度直方图(Histogram of Gradients, HoG)特征以及方差、均值、峰度、能量、熵和偏度等统计特征。采用层次注意网络(HAN)对肺癌进行分类。将萤火虫算法(FA)和竞争群体优化(CSO)相结合,提出了萤火虫竞争群体优化(FCSO)算法,对HAN进行训练。基于fcso的HAN具有较高的准确性91.3%,敏感性88%,特异性89.1%。
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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