MetaGNN-Based Medical Records Unstructured Specialized Vocabulary Few-Shot Representation Learning

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Abstract

With the continuous breakthroughs in artificial intelligence technology, it has become easier to extract general-purpose knowledge using machine learning, but it is a challenging task to extract and learn small samples of knowledge in medical expertise. On the one hand, it is difficult to represent medical expertise entities, and on the other hand, the training samples of such expertise are small, and deep learning methods often require a large number of samples to complete the learning task. To this end, we proposes a graph network learning method for specialized vocabulary representation. Specifically, a contextual knowledge representation model based on graph meta-learning is proposed, which combines text, phrase, vocabulary, and other information to solve the problem of sparse data of medical electronic medical record entities that cannot be extracted and learned. In this method, a text-independent lexical representation learning method, a context-aware graph neural network, and a combined LSTM language model are used to model information from different perspectives as a way to learn semantic representations of professional discourse entities. The experimental results show that the accuracy of the method outperforms other similar methods and proves its effectiveness.

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Ling, H., Luo, G., & Yang, Y. (2022). MetaGNN-Based Medical Records Unstructured Specialized Vocabulary Few-Shot Representation Learning. IEEE Access, 10, 118665–118675. https://doi.org/10.1109/ACCESS.2022.3219988

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