Intelligent classification of lung malignancies using deep learning techniques

P. Yadlapalli, D. Bhavana, G. Suryanarayana
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引用次数: 3

Abstract

PurposeComputed tomography (CT) scan can provide valuable information in the diagnosis of lung diseases. To detect the location of the cancerous lung nodules, this work uses novel deep learning methods. The majority of the early investigations used CT, magnetic resonance and mammography imaging. Using appropriate procedures, the professional doctor in this sector analyses these images to discover and diagnose the various degrees of lung cancer. All of the methods used to discover and detect cancer illnesses are time-consuming, expensive and stressful for the patients. To address all of these issues, appropriate deep learning approaches for analyzing these medical images, which included CT scan images, were utilized.Design/methodology/approachRadiologists currently employ chest CT scans to detect lung cancer at an early stage. In certain situations, radiologists' perception plays a critical role in identifying lung melanoma which is incorrectly detected. Deep learning is a new, capable and influential approach for predicting medical images. In this paper, the authors employed deep transfer learning algorithms for intelligent classification of lung nodules. Convolutional neural networks (VGG16, VGG19, MobileNet and DenseNet169) are used to constrain the input and output layers of a chest CT scan image dataset.FindingsThe collection includes normal chest CT scan pictures as well as images from two kinds of lung cancer, squamous and adenocarcinoma impacted chest CT scan images. According to the confusion matrix results, the VGG16 transfer learning technique has the highest accuracy in lung cancer classification with 91.28% accuracy, followed by VGG19 with 89.39%, MobileNet with 85.60% and DenseNet169 with 83.71% accuracy, which is analyzed using Google Collaborator.Originality/valueThe proposed approach using VGG16 maximizes the classification accuracy when compared to VGG19, MobileNet and DenseNet169. The results are validated by computing the confusion matrix for each network type.
利用深度学习技术对肺部恶性肿瘤进行智能分类
目的计算机断层扫描(CT)对肺部疾病的诊断提供有价值的信息。为了检测癌性肺结节的位置,本工作使用了新颖的深度学习方法。大多数早期调查使用CT,磁共振和乳房x线摄影成像。该部门的专业医生使用适当的程序分析这些图像,以发现和诊断不同程度的肺癌。所有用于发现和检测癌症疾病的方法都是耗时、昂贵且给患者带来压力的。为了解决所有这些问题,我们使用了适当的深度学习方法来分析这些医学图像,包括CT扫描图像。设计/方法/方法放射科医生目前使用胸部CT扫描在早期发现肺癌。在某些情况下,放射科医生的感知在识别被错误检测的肺黑色素瘤中起着至关重要的作用。深度学习是一种新的、有能力的、有影响力的医学图像预测方法。本文采用深度迁移学习算法对肺结节进行智能分类。使用卷积神经网络(VGG16, VGG19, MobileNet和DenseNet169)来约束胸部CT扫描图像数据集的输入和输出层。结果收集了正常胸部CT扫描图像,以及两种肺癌的CT扫描图像,鳞状和腺癌的影响胸部。根据混淆矩阵结果,VGG16迁移学习技术在肺癌分类中准确率最高,达到91.28%,其次是VGG19,准确率为89.39%,MobileNet为85.60%,DenseNet169为83.71%,使用谷歌Collaborator进行分析。与VGG19、MobileNet和DenseNet169相比,使用VGG16提出的方法最大限度地提高了分类精度。通过计算每种网络类型的混淆矩阵来验证结果。
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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