Detection of Cancer in Lung CT Image Using 3D CNN

Syed Amer Ali, Nikhil Vallapureddy, Sridivya Mannem, Yashwanth Gudla, V. Malathy
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Abstract

The use of image processing techniques to analyze CT scan pictures including lung cancer cells is gaining popularity these days. Lung illnesses are diseases that damage the lungs and weaken the respiratory system. Lung cancer is one of the top causes of death in individuals around the world. Humans have a better chance of surviving if they are detected early. The average survival rate for persons with lung cancer increases from 14 to 49 percent if the disease is detected early. While computed tomography (CT) is significantly more effective than X-ray, a full diagnosis requires the use of numerous imaging techniques to complement one another. A deep neural network is constructed and tested for detecting lung cancer from CT images. This strategy is more about diagnosing at ahead of schedule and critical stages with keen computational procedures with different noise is expected to be eliminated by detaching the CT images and calculating the survival rate which is the root idea of digital image processing. A highly linked convolution neural network was used to classify the lung image as normal or cancerous. A dataset of lung pictures is employed, with 85 percent of the photos being used for training and 15% being used for testing and classification.
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基于3D CNN的肺癌CT图像检测
最近,利用影像处理技术对肺癌细胞等CT扫描图像进行分析的方法越来越流行。肺部疾病是损害肺部和削弱呼吸系统的疾病。肺癌是世界上个人死亡的主要原因之一。如果及早发现,人类存活的机会会更大。如果发现得早,肺癌患者的平均存活率会从14%提高到49%。虽然计算机断层扫描(CT)明显比x射线更有效,但全面的诊断需要使用多种成像技术来相互补充。构建了一种用于肺癌CT图像检测的深度神经网络并进行了测试。该策略更多的是提前诊断和关键阶段诊断,计算过程灵敏,通过分离CT图像并计算存活率来消除不同的噪声,这是数字图像处理的根本思想。使用高度关联的卷积神经网络将肺图像分类为正常或癌变。使用肺图像数据集,85%的照片用于训练,15%用于测试和分类。
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