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Bodypart Recognition Using Multi-stage Deep Learning

机译:使用多阶段深度学习的身体部位识别

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Automatic medical image analysis systems often start from identifying the human body part contained in the image. Specifically, given a transversal slice, it is important to know which body part it comes from, namely "slice-based bodypart recognition". This problem has its unique characteristic - the body part of a slice is usually identified by local discriminative regions instead of global image context, e.g., a cardiac slice is differentiated from an aorta arch slice by the mediastinum region. To leverage this characteristic, we design a multi-stage deep learning framework that aims at: (1) discover the local regions that are discriminative to the bodypart recognition, and (2) learn a bodypart identifier based on these local regions. These two tasks are achieved by the two stages of our learning scheme, respectively. In the pre-train stage, a convolutional neural network (CNN) is learned in a multi-instance learning fashion to extract the most discriminative local patches from the training slices. In the boosting stage, the learned CNN is further boosted by these local patches for bodypart recognition. By exploiting the discriminative local appearances, the learned CNN becomes more accurate than global image context-based approaches. As a key hallmark, our method does not require manual annotations of the discriminative local patches. Instead, it automatically discovers them through multi-instance deep learning. We validate our method on a synthetic dataset and a large scale CT dataset (7000+ slices from wholebody CT scans). Our method achieves better performances than state-of-the-art approaches, including the standard CNN.
机译:自动医学图像分析系统通常从识别图像中包含的人体部位开始。具体来说,给定一个横向切片,重要的是要知道它来自哪个身体部位,即“基于切片的身体部位识别”。该问题具有其独特的特征-切片的身体部位通常是通过局部区分区域而不是整体图像上下文来识别的,例如,通过纵隔区域将心脏切片与主动脉弓切片区分开来。为了利用此特征,我们设计了一个多阶段的深度学习框架,旨在:(1)发现与身体部位识别有区别的局部区域,以及(2)根据这些局部区域学习身体部位标识符。这两个任务分别通过我们的学习方案的两个阶段来完成。在训练前阶段,以多实例学习方式学习卷积神经网络(CNN),以从训练切片中提取最具区分性的局部补丁。在增强阶段,通过这些局部补丁进一步增强学习的CNN,以进行身体部位识别。通过利用具有区别性的局部外观,学习到的CNN变得比基于全局图像上下文的方法更为准确。作为一个重要标志,我们的方法不需要对注释性本地补丁进行手动注释。相反,它通过多实例深度学习自动发现它们。我们在合成数据集和大型CT数据集(来自全身CT扫描的7000多个切片)上验证了我们的方法。与包括标准CNN在内的最新技术相比,我们的方法具有更好的性能。

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