Multi-layer Convolutional Approach for Lung Cancer Detection using CXR

Sara Javed, S. Anwar, M. Umair
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Abstract

Lung cancer is considered as one of the most significant causes of deaths globally. Diagnosis at an initial stage, using computed tomography chest scans could give a better chance to the patient to survive by providing an opportunity for effective care plans and treatment. We propose a new deep-learning method to learn high level image representation towards attaining a significant classification accuracy. This technique consists of three important steps, which are data preparation, pre-processing of data, and classification. The proposed model is a multi-layer convolutional neural network (CNN) that uses different convolutional layers, pooling layers, flatten, dense layers, dropout layers, and performs classification. Two pretrained models which are VGG16 and Densenet, that takes weights using ImageNet pretraining are also employed. This work utilized chest CT-scan image dataset. The dataset contains the images in PNG or JPG format which are suitable for the model. The data contains three types of chest cancers which are adenocarcinoma, large cell carcinoma, and squamous cell carcinoma as well as normal controls. Our experimental results showed that the proposed models achieved the maximum accuracy of 99.75% using the multi-layer CNN model, of 97.25% using Densenet-201, and of 96% using VGG-16.
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基于CXR的多层卷积肺癌检测方法
肺癌被认为是全球最重要的死亡原因之一。在最初阶段进行诊断,使用计算机断层扫描胸部扫描可以提供有效的护理计划和治疗机会,从而为患者提供更好的生存机会。我们提出了一种新的深度学习方法来学习高水平的图像表示,以获得显著的分类精度。该技术包括三个重要步骤,即数据准备、数据预处理和分类。提出的模型是一个多层卷积神经网络(CNN),它使用不同的卷积层、池化层、平坦层、密集层、dropout层,并进行分类。使用了两个预训练模型VGG16和Densenet,它们使用ImageNet预训练取权。本研究利用胸部ct扫描图像数据集。数据集包含适合模型的PNG或JPG格式的图像。数据包括三种类型的乳腺癌分别是腺癌、大细胞癌和鳞状细胞癌以及正常对照。我们的实验结果表明,我们提出的模型使用多层CNN模型达到了99.75%的最高准确率,使用Densenet-201达到了97.25%,使用VGG-16达到了96%。
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