Smocam: 3d回归模型的光滑条件注意遮罩

Salamata Konate, Léo Lebrat, Rodrigo Santa Cruz, P. Bourgeat, V. Doré, J. Fripp, Andrew Bradley, C. Fookes, Olivier Salvado
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引用次数: 1

摘要

尽管深度神经网络在医学图像分析中的普及,但监测和评估网络输出的方法,如分割或回归,仍然有限。在本文中,我们引入SMOCAM (SMOoth Conditional Attention Mask),这是一种优化方法,通过训练后的神经网络的预测来显示输入图像的特定区域。我们开发SMOCAM明确执行显著性分析,复杂的回归任务在3D医学图像。我们的配方在卷积神经网络(CNN)的给定层上优化了3d注意力掩模。与之前的尝试不同,我们的方法相对较快(每次输出40秒),并且适用于3D MRI等大数据。我们将SMOCAM应用于CNN,该CNN通过使用5000多个3D脑MRI进行训练,预测3D MRI的脑形态。我们表明,SMOCAM突出了神经网络在病例代表性不足和大量不对称情况下的局限性。
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Smocam: Smooth Conditional Attention Mask For 3d-Regression Models
Despite the pervasive growth of deep neural networks in medical image analysis, methods to monitor and assess network outputs, such as segmentation or regression, remain limited. In this paper, we introduce SMOCAM (SMOoth Conditional Attention Mask), an optimization method that reveals the specific regions of the input image taken into account by the prediction of a trained neural network. We developed SMOCAM explicitly to perform saliency analysis for complex regression tasks in 3D medical imagery. Our formulation optimises an 3D-attention mask at a given layer of a convolutional neural network (CNN). Unlike previous attempts, our method is relatively fast (40s per output) and is suitable for large data such as 3D MRI. We applied SMOCAM on a CNN that predicts Brain morphometry from 3D MRI which was trained using more than 5000 3D brain MRIs. We show that SMOCAM highlights neural network’s limitations when cases are underrepresented and in cases with large volume asymmetry.
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