KAC SegNet: A Novel Kernel-Based Active Contour Method for Lung Nodule Segmentation and Classification Using Dense AlexNet Framework

Shubham Dodia, B. Annappa, P. Mahesh
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Abstract

Lung cancer is known to be one of the leading causes of death worldwide. There is a chance of increasing the survival rate of the patients if detected at an early stage. Computed Tomography (CT) scans are prominently used to detect and classify lung cancer nodules/tumors in the thoracic region. There is a need to develop an efficient and reliable computer-aided diagnosis model to detect lung cancer nodules accurately from CT scans. This work proposes a novel kernel-based active-contour (KAC) SegNet deep learning model to perform lung cancer nodule detection from CT scans. The active contour uses a snake method to detect internal and external boundaries of the curves, which is used to extract the Region Of Interest (ROI) from the CT scan. From the extracted ROI, the nodules are further classified into benign and malignant using a Dense AlexNet deep learning model. The key contributions of this work are the fusion of an edge detection method with a deep learning segmentation method which provides enhanced lung nodule segmentation performance, and an ensemble of state-of-the-art deep learning classifiers, which encashes the advantages of both DenseNet and AlexNet to learn better discriminative information from the detected lung nodules. The experimental outcome shows that the proposed segmentation approach achieves a Dice Score Coefficient of 97.8% and an Intersection-over-Union of 92.96%. The classification performance resulted in an accuracy of 95.65%, a False Positive Rate, and False Negative Rate values of 0.0572 and 0.0289. The proposed model is robust compared to the existing state-of-the-art methods.
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KAC分割网:一种基于核的基于密集AlexNet框架的肺结节分割与分类新方法
众所周知,肺癌是世界上导致死亡的主要原因之一。如果在早期发现,有可能提高患者的存活率。计算机断层扫描(CT)主要用于检测和分类胸部区域的肺癌结节/肿瘤。需要建立一种高效可靠的计算机辅助诊断模型,以准确地从CT扫描中发现肺癌结节。这项工作提出了一种新的基于核的活动轮廓(KAC) SegNet深度学习模型,用于从CT扫描中进行肺癌结节检测。活动轮廓采用蛇形法检测曲线的内外边界,提取感兴趣区域(ROI)。从提取的ROI中,使用Dense AlexNet深度学习模型将结节进一步分类为良性和恶性。这项工作的关键贡献是融合了边缘检测方法和深度学习分割方法,提供了增强的肺结节分割性能,以及集成了最先进的深度学习分类器,它利用了DenseNet和AlexNet的优势,从检测到的肺结节中学习更好的判别信息。实验结果表明,该分割方法的Dice Score系数为97.8%,Intersection-over-Union系数为92.96%。分类的准确率为95.65%,假阳性率为0.0572,假阴性率为0.0289。与现有的最先进的方法相比,所提出的模型具有鲁棒性。
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