利用 X 射线图像检测肺癌的增强型卷积神经网络 (CNN) 模型

B. E. Oyovwe, A. E. Edje, E. Omede, C. Ogeh
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摘要

肺癌是一种危及生命的疾病,可通过 X 光、核磁共振成像、CT 扫描等医学影像诊断出来。这项研究提出了一种使用卷积神经网络(CNN)的增强模型,利用 X 光图像检测肺癌。医学图像处理在很大程度上依赖于肺癌图像的诊断。它有助于医生确定正确的诊断和治疗方法。对于许多患者来说,肺癌是最致命的疾病之一。如果能及早诊断出癌细胞的生长,就能挽救许多生命。所谓的模型主要基于卷积神经网络(CNN)架构,该模型具有增强功能,如图像增强、ROI(感兴趣区)分割、特征提取和结节分类。在预处理阶段,应用 AMF(自适应中值滤波器)滤波方法消除数据集 X 光图像中的噪声,并在 CLAHE(对比度受限自适应直方图均衡化)的支持下提高 X 光图像的质量。其次,使用 K-means 聚类算法自动提取肺野的相关特征或感兴趣区域(ROI),即有效训练模型自动识别和裁剪肺野的准确位置。该模型能够将癌症结节分类为癌症或非癌症。该框架在 C# 平台上运行,使用 EMGU 检测肺部 X 射线图像中的肿瘤。实验结果表明,所开发的系统能够以 90.77% 的准确率、86.65% 的精确率和 95.31% 的召回率/灵敏度检测肺癌。
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An enhanced Convolutional Neural Network (CNN) model for the detection of lung cancer using X-Ray image
Lung Cancer is a life-threatening disease which can be diagnosed by Medical Imaging such as X-Ray, MRI, CT Scan etc. This research presented an enhanced model using Convolutional Neural Network (CNN) to detect lung cancer using X-Ray image. Medical image processing relies heavily on the diagnosis of lung cancer images. It aids doctors in determining the correct diagnosis and management. For many patients, lung cancer ranks among the mostdeadly diseases. Many lives can be saved if cancerous growth is diagnosed early. The purported model was predominantly built on Convolutional Neural Network (CNN) architecture and the model was built with enhanced features such as Image Enhancement, Segmenting ROI (Region of Interest), Features Extraction and Nodule Classification. In preprocessing stage, the AMF (Adaptive Median Filter) filtering method was applied to eliminate noise in X-Ray image of the dataset, and quality of X-Ray image was improved with the support of CLAHE (Contrast Limited Adaptive Histogram Equalization). Secondly, K-means Clustering algorithm was used to extract the relevant feature or Region of Interest (ROI) of the lung field automatically i.e. the model was effectively trained to identify and crop the exact location of the lung field automatically. The model was able to classify the cancer nodule as either Cancerous or Non-Cancerous. The framework worked on C# platform, and used EMGU for detection of the tumour in the lung xray image. Experimental result showed that the developed system was able to detect Lung Cancer with 90.77% accuracy, 86.65% precision and 95.31% Recall/Sensitivity. 
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