Lung Cancer Classification and Detection Using Convolutional Neural Networks

Deniz Nisham Anwer, Serkan Ozbay
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引用次数: 5

Abstract

The immense growth of technology has led to a booming development in the medical science research field. One of the major focuses of researchers is cancer detection in different organs like brain, breast, lung, etc. Lung cancer has a higher cause of death amongst the other cancer types all over the world. Undoubtedly, the most critical point in lung cancer is its early detection where it can lead many patients to survive against the illness. Therefore, one of the most important parts in fighting against lung cancer is detecting it in earlier stages and that's why many systems are being developed with the technology development for achieving this goal. In this work, a recognition system for identifying some lung cancer types including small cell lung cancer, adenocarcinoma, squamous cell cancer, large cell carcinoma, undifferentiated non-small cell lung cancer and also for identifying normal lung is proposed. The proposed algorithm is based on deep learning and convolutional neural network. The system is implemented by transfer learning of MATLAB GUI and it is trained and tested by the data which is collected in K1 hospital located in Kirkuk city, Iraq. The system's convolutional neural network architecture has been developed in deep learning network and it is designed with seven layers and trained in transfer learning with almost 100 samples for each lung cancer type and 50 samples for normal lung. It is found that the proposed system has been successfully worked for the defined purposes.
基于卷积神经网络的肺癌分类与检测
科技的飞速发展带动了医学研究领域的蓬勃发展。研究人员的主要关注点之一是不同器官的癌症检测,如脑、乳腺、肺等。肺癌是世界上死亡率最高的癌症。毫无疑问,肺癌最关键的一点是它的早期发现,它可以使许多患者在对抗疾病的情况下生存下来。因此,对抗肺癌最重要的部分之一是在早期阶段检测到它,这就是为什么许多系统正在随着技术的发展而发展,以实现这一目标。本研究提出了一种识别小细胞肺癌、腺癌、鳞状细胞癌、大细胞癌、未分化非小细胞肺癌及正常肺的识别系统。该算法基于深度学习和卷积神经网络。该系统采用MATLAB图形化界面的迁移学习实现,并通过在伊拉克基尔库克市K1医院采集的数据进行训练和测试。该系统的卷积神经网络架构是在深度学习网络中开发的,它被设计为七层,并进行了迁移学习训练,每种肺癌类型有近100个样本,正常肺有50个样本。结果发现,拟议的系统已成功地实现了所确定的目的。
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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