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A multimodal deep architecture for traditional Chinese medicine diagnosis

机译:中医诊断的多模式深层建筑

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摘要

Traditional Chinese medicine (TCM) is found on a long-term medical practice in China. Rare human brains can fully grasp the deep TCM knowledge derived from a tremendous amount of experience. In this big data era, a big electronic brain might be competent via deep learning techniques. For this prospect, the electronic brain needs to process various heterogeneous data, such as images, texts, audio signals, and other sensory data. It used to be a challenge to analyze the heterogeneous data by the computer-aided system until the advances of the powerful deep learning tools. We propose a multimodal deep learning framework to mimic a TCM practitioner to diagnose a patient on the basis of multimodal perceptions of see, listen, smell, ask, and touch. The framework learns common representations from various high-dimensional sensory data, and fuse the information for final classification. We propose to use conceptual alignment deep neural networks to embed prior knowledge and obtain interpretable latent representations. We implement a multimodal deep architecture to process tongue image and description text data for TCM diagnosis. Experiments illustrate that the multimodal deep architecture can extract effective features from heterogeneous data, produce interpretable representations, and finally achieve a higher accuracy than either corresponding unimodal architectures.
机译:中药(TCM)在中国的长期医疗实践中被发现。稀有的人性大脑可以完全掌握源自巨大经验的深度教育学知识。在这个大数据时代,大型电子大脑可能通过深度学习技术能力。对于这种展望,电子大脑需要处理各种异构数据,例如图像,文本,音频信号和其他感官数据。它曾经是通过计算机辅助系统分析异构数据的挑战,直到强大的深度学习工具的进步。我们提出了一种多模式深度学习框架来模仿TCM从业者,基于对看,倾听,嗅觉,询问和触摸的多式化看法来诊断患者。该框架从各种高维感官数据中了解了常见的表示,并融合了最终分类的信息。我们建议使用概念对齐深度神经网络来嵌入先验知识并获得可解释的潜在表示。我们实施多模式深度架构来处理舌片图像和描述TCM诊断的文本数据。实验说明了多模式深度架构可以从异构数据中提取有效特征,产生可解释的表示,并且最终比相应的单向架构实现更高的精度。

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