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Looking in the Right Place for Anomalies: Explainable Ai Through Automatic Location Learning

机译:在正确的地方寻找异常:通过自动位置学习可解释的AI

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Deep learning has now become the de facto approach to the recognition of anomalies in medical imaging. Their ‘black box’ way of classifying medical images into anomaly labels poses problems for their acceptance, particularly with clinicians. Current explainable AI methods offer justifications through visualizations such as heat maps but cannot guarantee that the network is focusing on the relevant image region fully containing the anomaly. In this paper we develop an approach to explainable AI in which the anomaly is assured to be overlapping the expected location when present. This is made possible by automatically extracting location-specific labels from textual reports and learning the association of expected locations to labels using a hybrid combination of Bi-Directional Long Short-Term Memory Recurrent Neural Networks (Bi-LSTM) and DenseNet-121. Use of this expected location to bias the subsequent attention-guided inference network based on ResNet101 results in the isolation of the anomaly at the expected location when present. The method is evaluated on a large chest X-ray dataset.
机译:深度学习现已成为识别医学成像异常的事实上的方法。他们将医学图像分类为异常标签的“黑匣子”方式给他们的接受带来了问题,尤其是对于临床医生而言。当前可解释的AI方法通过诸如热图的可视化提供了依据,但不能保证网络专注于完全包含异常的相关图像区域。在本文中,我们开发了一种可解释AI的方法,其中可以确保异常出现时与预期位置重叠。通过从双向报告中自动提取特定于位置的标签,并使用双向长期短期记忆递归神经网络(Bi-LSTM)和DenseNet-121的混合组合,学习预期位置与标签的关联,可以实现这一点。使用此预期位置偏向基于ResNet101的后续关注导向的推理网络,可以隔离预期位置(如果存在)的异常情况。该方法在大型胸部X射线数据集上进行评估。

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