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Understanding Deep Convolutional Networks for Biomedical Imaging: A Practical Tutorial

机译:了解生物医学成像的深度卷积网络:实用的教程

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Medical imaging seeks to unveil the internal structures hidden by the skin and bones to assist disease diagnosis and also treatment optimisation. In the past, processing medical images used to be a laborious task. However, the development of artificial intelligence has allowed the machine to gain a high level of understanding to perceive and extract information from biomedical images. Deep learning models, in particular, the convolutional neural networks (CNNs), were developed and implemented successfully for various biomedical applications. Therefore, it is of paramount importance for healthcare practitioners to understand the mechanisms behind the implemented CNNs to accurately interpret their outcomes. This tutorial summarises the key steps to train a functional CNNs. CNNs are usually constructed in the order of a convolution operation, ReLU, spatial pooling and followed by the fully connected layers. In addition, we have also introduced a number of preprocessing methods that target the image augmentation to combat the sparse data problem. We further explored a generative model as an augmentation method known as the generative adversarial networks (GANs), where GANs may yield new useful information to the dataset as compared to the classical augmentation.
机译:医学成像试图揭示皮肤和骨骼隐藏的内部结构,以协助疾病诊断和治疗优化。过去,处理医学图像曾经是一个艰苦的任务。然而,人工智能的发展允许机器获得高度的理解,以从生物医学图像中感知和提取信息。特别是为各种生物医学应用成功开发和实施了深度学习模型,尤其是卷积神经网络(CNNS)。因此,医疗保健从业者可以了解实施的CNN背后的机制至关重要,以准确解释其结果。本教程总结了培训功能性CNN的关键步骤。 CNN通常按卷积操作,Relu,空间池和后跟完全连接的层的顺序构造。此外,我们还引入了许多预处理方法,该方法瞄准图像增强以打击稀疏数据问题。我们进一步探索了一种作为一种被称为生成的对冲网络(GANS)的增强方法的生成模型,其中GAN与经典增强相比,GAN可以向数据集产生新的有用信息。

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