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Regression Concept Vectors for Bidirectional Explanations in Histopathology

机译:组织病理学双向解释的回归概念向量

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Explanations for deep neural network predictions in terms of domain-related concepts can be valuable in medical applications, where justifications are important for confidence in the decision-making. In this work, we propose a methodology to exploit continuous concept measures as Regression Concept Vectors (RCVs) in the activation space of a layer. The directional derivative of the decision function along the RCVs represents the network sensitivity to increasing values of a given concept measure. When applied to breast cancer grading, nuclei texture emerges as a relevant concept in the detection of tumor tissue in breast lymph node samples. We evaluate score robustness and consistency by statistical analysis.
机译:关于深层神经网络预测的领域相关概念的解释在医学应用中可能是有价值的,在医学应用中,合理性对于决策的信心很重要。在这项工作中,我们提出了一种方法来利用连续概念量作为层的激活空间中的回归概念向量(RCV)。决策函数沿RCV的方向导数表示网络对给定概念量度的增加值的敏感性。当应用于乳腺癌分级时,核纹理作为检测乳腺癌淋巴结样本中的肿瘤组织的一个相关概念出现。我们通过统计分析评估分数的稳健性和一致性。

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