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Deep learning in the small sample size setting : Cascaded feed forward neural networks for medical image segmentation

机译:在小样本量环境中进行深度学习:用于医学图像分割的级联前馈神经网络

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Deep Learning, refers to large set of neural network based algorithms, have emerged as promising machine-learning tools in the general imaging and computer vision domains. Convolutional neural networks (CNNs), a specific class of deep learning algorithms, have been extremely effective in object recognition and localization in natural images. A characteristic feature of CNNs, is the use of a locally connected multi layer topology that is inspired by the animal visual cortex (the most powerful vision system in existence). While CNNs, perform admirably in object identification and localization tasks, typically require training on extremely large datasets. Unfortunately, in medical image analysis, large datasets are either unavailable or are extremely expensive to obtain. Further, the primary tasks in medical imaging are organ identification and segmentation from 3D scans, which are different from the standard computer vision tasks of object recognition. Thus, in order to translate the advantages of deep learning to medical image analysis, there is a need to develop deep network topologies and training methodologies, that are geared towards medical imaging related tasks and can work in a setting where dataset sizes are relatively small. In this paper, we present a technique for stacked supervised training of deep feed forward neural networks for segmenting organs from medical scans. Each 'neural network layer' in the stack is trained to identify a sub region of the original image, that contains the organ of interest. By layering several such stacks together a very deep neural network is constructed. Such a network can be used to identify extremely small regions of interest in extremely large images, inspite of a lack of clear contrast in the signal or easily identifiable shape characteristics. What is even more intriguing is that the network stack achieves accurate segmentation even when it is trained on a single image with manually labelled ground truth. We validate this approach,using a publicly available head and neck CT dataset. We also show that a deep neural network of similar depth, if trained directly using backpropagation, cannot acheive the tasks achieved using our layer wise training paradigm.
机译:深度学习指的是基于神经网络的大量算法,已在一般成像和计算机视觉领域中成为有前途的机器学习工具。卷积神经网络(CNN)是一类特定的深度学习算法,在自然图像中的对象识别和定位方面非常有效。 CNN的一个特征是使用受动物视觉皮层(现有最强大的视觉系统)启发的本地连接的多层拓扑。当CNN在对象识别和定位任务中表现出色时,通常需要在非常大的数据集上进行训练。不幸的是,在医学图像分析中,大型数据集要么不可用,要么获取起来非常昂贵。此外,医学成像的主要任务是器官识别和3D扫描分割,这与对象识别的标准计算机视觉任务不同。因此,为了将深度学习的优势转换为医学图像分析,需要开发深度网络拓扑和培训方法,以适应医学成像相关任务,并且可以在数据集大小相对较小的环境中工作。在本文中,我们提出了一种用于从医学扫描中分割器官的深层前馈神经网络的堆叠监督训练技术。训练堆栈中的每个“神经网络层”以标识原始图像的子区域,其中包含感兴趣的器官。通过将几个这样的堆栈分层在一起,可以构建一个非常深的神经网络。尽管在信号中缺乏清晰的对比度或易于识别的形状特征,但是这种网络可以用于识别非常大的图像中的非常小的关注区域。更有意思的是,即使在使用手动标记的地面真理对单个图像进行训练的情况下,网络堆栈也可以实现准确的分段。我们使用公开的头部和颈部CT数据集验证了这种方法。我们还表明,如果使用反向传播直接训练深度相似的深度神经网络,则无法实现使用我们的分层训练范式实现的任务。

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