Chinese medical knowledge atlas construction method based on deep learning

A technology of deep learning and medical knowledge, applied in the field of knowledge graph, which can solve problems such as few entity relationships and inapplicability

Active Publication Date: 2017-05-31
ZHEJIANG UNIV
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Problems solved by technology

Invention 3 Although the word clustering model of deep learning is used to complete the task of extracting entity relations, it is only aimed at the news field, and there are relatively few entity relations
For the medical field with many entities and entity relationships, the processing of contextual relationships is also lacking, so this model is not applicable

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  • Chinese medical knowledge atlas construction method based on deep learning
  • Chinese medical knowledge atlas construction method based on deep learning
  • Chinese medical knowledge atlas construction method based on deep learning

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Embodiment Construction

[0073] Explanation of some terms:

[0074] Knowledge graph: Knowledge graph is essentially a semantic network. Its nodes represent entities or concepts, and edges represent various semantic relationships between entities or concepts. It is a knowledge management and service model that can connect trivial and scattered knowledge in various fields to form a huge, networked knowledge system built on the "semantic network" as the skeleton.

[0075] Knowledge unit (named entity): A knowledge unit refers to the most basic unit form that constitutes the entire knowledge graph. In the knowledge map in the medical field, knowledge units usually refer to medical terms such as diseases, drugs, symptoms, and treatment methods. In the present invention, a knowledge unit has the same meaning as a named entity.

[0076] Named entity recognition (knowledge unit extraction): Named entity recognition refers to the identification of entities with specific meaning in unstructured text data. I...

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Abstract

The invention relates to the technology of a knowledge atlas, and aims to provide a Chinese medical knowledge atlas construction method based on deep learning. The Chinese medical knowledge atlas construction method comprises the following steps: obtaining relevant data of a medical field from a data source; using a word segmentation tool to carry out word segmentation on unstructured data, and using an RNN (Recurrent Neural Network) to finish a sequence labeling task to identify entities related to medical care, so as to realize the extraction of knowledge units; carrying out feature vector construction on the entity, and utilizing the RNN to carry out sequence labeling and finish the identification of a relationship among the knowledge units; carrying out entity alignment, and then utilizing the extracted entities and the relationship between the entities to construct the knowledge atlas. According to the Chinese medical knowledge atlas construction method, a recurrent neural network is artfully used for extracting the knowledge units and identifying the relationship among the knowledge units so as to favorably finish the processing of the unstructured data. According to the Chinese medical knowledge atlas construction method, features suitable for the medical care field are put forward to carry out a training task of a network. Compared with general features, the features put forward by the method can better represent a medical entity, and therefore, the relationship among the extracted knowledge units can be more accurate and comprehensive.

Description

technical field [0001] The present invention relates to knowledge map technology, in particular to a method for constructing a Chinese medical knowledge map based on deep learning. Background technique [0002] As more and more semantic WWW data is opened on the Internet, various Internet search engine companies at home and abroad have begun to build knowledge graphs based on this to improve service quality, such as Google Knowledge Graph (Google Knowledge Graph), Baidu "Zhixin" and so on. Knowledge Graph is essentially a semantic network. Its nodes represent entities or concepts, and edges represent various semantic relationships between entities or concepts. It is a service model of knowledge management, which can connect trivial and scattered knowledge in various fields to form a huge, networked knowledge system built with the "semantic network" as the skeleton. Now, people have begun to apply knowledge graphs to intelligent systems such as comprehensive knowledge retri...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F17/30G06F17/27
CPCG06F16/24564G06F16/367G06F16/951G06F40/30
Inventor 郑小林王维维扈中凯黄嘉伟
Owner ZHEJIANG UNIV
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