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Generation of Multimodal Justification Using Visual Word Constraint Model for Explainable Computer-Aided Diagnosis

机译:使用可视化词约束模型的可解释计算机辅助诊断生成多模态证明

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The ambiguity of the decision-making process has been pointed out as the main obstacle to practically applying the deep learning-based method in spite of its outstanding performance. Interpretability can guarantee the confidence of the deep learning system, therefore it is particularly important in the medical field. In this study, a novel deep network is proposed to explain the diagnostic decision with visual pointing map and diagnostic sentence justifying result simultaneously. To increase the accuracy of sentence generation, a visual word constraint model is devised in training justification generator. To verify the proposed method, comparative experiments were conducted on the problem of the diagnosis of breast masses. Experimental results demonstrated that the proposed deep network can explain diagnosis more accurately with various textual justifications.
机译:决策过程的歧义性已被指出,尽管其表现出色,但却是实际应用基于深度学习的方法的主要障碍。可解释性可以保证深度学习系统的可信度,因此它在医学领域尤其重要。在这项研究中,提出了一种新颖的深度网络,以直观的指示图和诊断语句对正结果同时解释诊断决策。为了提高句子生成的准确性,在训练证明生成器中设计了视觉单词约束模型。为了验证所提出的方法,对乳腺肿块的诊断问题进行了对比实验。实验结果表明,所提出的深度网络可以用各种文本依据更准确地解释诊断。

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