Modified convolutional neural network for lung cancer detection: Improved cat swarm-based optimal training

Web Intell. Pub Date : 2023-03-20 DOI:10.3233/web-221801
Vikul Pawar, P. Premchand
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引用次数: 1

Abstract

Lung cancer is the most lethal and severe illness in existence. However, lung cancer patients may live longer if they receive early detection and treatment. In the medical field, the best imaging technique is CT scan imaging as it is more complex for doctors to identify cancer and interpret from CT scan images. Consequently, the computer-aided diagnosis (CAD) is more useful for doctors to find out cancerous nodules. To identify lung cancer, a number of CAD techniques utilising machine learning (ML) and image processing are used nowadays. The goal of this study is to present a novel method for detecting lung cancer that entails four main steps: (i) Pre-processing, (ii) Segmentation, (iii) Feature extraction, and (iv) Classification. ”The input image is first put through a pre-processing step in which the CLAHE model is used to pre-process the image. The segmentation phase of the pre-processed images is then initiated, and it makes use of a modified Level set segmentation method. The retrieved features from the segmented images include statistical features, colour features, and texture features (GLCM, GLRM, and LBP). The Layer Fused Conventional Neural Network (LF-CNN) is then utilised to classify these features in the end. Particularly, layer-wise modification is carried out, and along with that, the LF-CNN is trained by the Modified Cat swarm Optimization (MCSO) Algorithm via selecting optimal weights. The accepted scheme is then compared to the current models in terms of several metrics, including recall, FNR, MCC, FDR, Threat score, FPR, precision, FOR, accuracy, specificity, NPV, FMS, and sensitivity.
肺癌检测的改进卷积神经网络:改进的基于猫群的最优训练
肺癌是现存的最致命、最严重的疾病。然而,如果肺癌患者得到早期发现和治疗,他们可能会活得更长。在医学领域,最好的成像技术是CT扫描成像,因为医生从CT扫描图像中识别癌症和解释癌症更为复杂。因此,计算机辅助诊断(CAD)对医生发现癌性结节更有帮助。为了识别肺癌,目前使用了许多利用机器学习(ML)和图像处理的CAD技术。本研究的目标是提出一种检测肺癌的新方法,该方法包括四个主要步骤:(1)预处理,(2)分割,(3)特征提取,(4)分类。输入图像首先经过预处理步骤,其中使用CLAHE模型对图像进行预处理。然后对预处理后的图像进行分割,利用改进的水平集分割方法。从分割图像中检索到的特征包括统计特征、颜色特征和纹理特征(GLCM、GLRM和LBP)。最后利用层融合传统神经网络(LF-CNN)对这些特征进行分类。特别地,进行了分层修改,并通过选择最优权值,使用修正猫群优化算法(Modified Cat swarm Optimization, MCSO)对LF-CNN进行了训练。然后,根据召回率、FNR、MCC、FDR、威胁评分、FPR、精度、FOR、准确性、特异性、NPV、FMS和敏感性等几个指标,将接受的方案与当前模型进行比较。
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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