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Subject2Vec: Generative-Discriminative Approach from a Set of Image Patches to a Vector

机译:Subject2Vec:从一组图像补丁到矢量的生成-区分方法

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摘要

We propose an attention-based method that aggregates local image features to a subject-level representation for predicting disease severity. In contrast to classical deep learning that requires a fixed dimensional input, our method operates on a set of image patches; hence it can accommodate variable length input image without image resizing. The model learns a clinically interpretable subject-level representation that is reflective of the disease severity. Our model consists of three mutually dependent modules which regulate each other: (1) a discriminative network that learns a fixed-length representation from local features and maps them to disease severity; (2) an attention mechanism that provides interpretability by focusing on the areas of the anatomy that contribute the most to the prediction task; and (3) a generative network that encourages the diversity of the local latent features. The generative term ensures that the attention weights are non-degenerate while maintaining the relevance of the local regions to the disease severity. We train our model end-to-end in the context of a large-scale lung CT study of Chronic Obstructive Pulmonary Disease (COPD). Our model gives state-of-the art performance in predicting clinical measures of severity for COPD.The distribution of the attention provides the regional relevance of lung tissue to the clinical measurements.
机译:我们提出了一种基于注意力的方法,该方法将局部图像特征聚集到主题级别的表示中以预测疾病的严重程度。与需要固定尺寸输入的经典深度学习相反,我们的方法对一组图像块进行操作。因此,它可以容纳可变长度的输入图像,而无需调整图像大小。该模型学习反映疾病严重程度的临床可解释的受试者水平表示。我们的模型由三个相互依赖的模块组成,这三个模块相互调节:(1)区分网络,该网络从局部特征中学习固定长度的表示并将其映射到疾病严重程度; (2)一种关注机制,通过专注于对预测任务贡献最大的解剖区域来提供可解释性; (3)鼓励地方潜在特征多样化的生成网络。生成术语可确保注意权重不退化,同时保持局部区域与疾病严重程度的相关性。在大规模的慢性阻塞性肺疾病(COPD)肺部CT研究中,我们对模型进行了端到端的训练。我们的模型在预测COPD严重程度的临床指标方面提供了最新技术表现。注意力的分布提供了肺组织与临床指标的区域相关性。

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