用于癌症检测的深度卷积神经网络:更快的R-CNN, U-Net和GoogLeNet

Zirui He, Zeyan Liu, Bowen Wu
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引用次数: 0

摘要

深度学习作为大数据分析涉及的关键技术之一的出现,给医疗领域带来了前所未有的进步,采用高效、准确的模型,在语音识别、视觉对象分类、癌症检测、药物发现等诸多领域取得了良好的实用效果。本文的主要目的是研究目前在医学领域流行的深度学习方法。主要的方法包括Faster基于区域的卷积网络(Faster R-CNN)、U-Net和GoogLeNet。与其他流行的深度模型相比,这三种方法表现出了突出的性能。此外,这两种方法的结合也会达到不错的精度,就像Faster R-CNN结合GoogLeNet一样。文章阐述了医学领域如何利用这三种CNN架构从医学图像中检测癌症。此外,将计算机辅助检测(CAD)系统与这三种模型结合起来,医生和放射科医生可以有效和准确地进行癌症诊断工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Convolutional Neural Networks for Cancer Detection: Faster R-CNN, U-Net and GoogLeNet
The emergence of deep learning as one of the key technologies involved in big data analysis has brought unprecedented progress to the medical field that adopts efficient and accurate models achieving good practical results in speech recognition, visual object classifications, cancer detection, drug discovery and many other fields. The main goal of this paper is to examine the popular methods of deep learning currently in the medical field. The major methodology includes Faster region-based convolutional network (Faster R-CNN), U-Net, and GoogLeNet. These three methods show outstanding performance than other popular deep models. Also, the combination of the two of these methods will also achieve decent accuracy like Faster R-CNN combining GoogLeNet. The article expounds on how the medical field takes advantage of these three CNN architectures to detect cancer from medical images. Moreover, incorporating the computer-aided detection (CAD) systems with the three models, doctors and radiologists efficiently and accurately perform the work of diagnosing cancer.
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