利用深度学习从CT图像中检测肺癌和结肠癌

J. D. Akinyemi, Akinkunle A. Akinola, Olajumoke O. Adekunle, T. Adetiloye, E. Dansu
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引用次数: 0

摘要

癌症是一种致命的疾病,已成为全球健康问题。此外,肺癌被广泛报道为全球最致命的癌症类型,其次是结肠癌。同时,早期发现是预防肺癌和结肠癌死亡的主要方法之一。为了帮助肺癌和结肠癌的早期检测,我们提出了一种计算机辅助诊断方法,该方法采用深度学习(DL)架构,从可疑身体部位的计算机断层扫描(CT)图像中增强对这些癌症类型的检测。我们的实验数据集(LC25000)包含25000张肺、结肠癌良、恶性组织的CT图像。我们使用来自计算机视觉预训练DL架构的权重,高效网络,来构建和训练肺癌和结肠癌检测模型。effentnet是一种卷积神经网络架构,可以同时缩放所有输入维度,如深度、宽度和分辨率。我们的研究结果显示,训练集、验证集和测试集的检测准确率分别为99.63%、99.50%和99.72%。
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Lung and colon cancer detection from CT images using Deep Learning
Cancer is a deadly disease that has gained a reputation as a global health concern. Further, lung cancer has been widely reported as the most deadly cancer type globally, while colon cancer comes second. Meanwhile, early detection is one of the primary ways to prevent lung and colon cancer fatalities. To aid the early detection of lung and colon cancer, we propose a computer-aided diagnostic approach that employs a Deep Learning (DL) architecture to enhance the detection of these cancer types from Computed Tomography (CT) images of suspected body parts. Our experimental dataset (LC25000) contains 25000 CT images of benign and malignant lung and colon cancer tissues. We used weights from a pre-trained DL architecture for computer vision, EfficientNet, to build and train a lung and colon cancer detection model. EfficientNet is a Convolutional Neural Network architecture that scales all input dimensions such as depth, width, and resolution at the same time. Our research findings showed detection accuracies of 99.63%, 99.50%, and 99.72% for training, validation, and test sets, respectively.
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来源期刊
Machine Graphics and Vision
Machine Graphics and Vision Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
0.40
自引率
0.00%
发文量
1
期刊介绍: Machine GRAPHICS & VISION (MGV) is a refereed international journal, published quarterly, providing a scientific exchange forum and an authoritative source of information in the field of, in general, pictorial information exchange between computers and their environment, including applications of visual and graphical computer systems. The journal concentrates on theoretical and computational models underlying computer generated, analysed, or otherwise processed imagery, in particular: - image processing - scene analysis, modeling, and understanding - machine vision - pattern matching and pattern recognition - image synthesis, including three-dimensional imaging and solid modeling
期刊最新文献
Use of virtual reality to facilitate engineer training in the aerospace industry An efficient pedestrian attributes recognition system under challenging conditions Performance evaluation of Machine Learning models to predict heart attack Lung and colon cancer detection from CT images using Deep Learning Riesz-Laplace Wavelet Transform and PCNN Based Image Fusion
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