[HTML][HTML] LMKG: A large-scale and multi-source medical knowledge graph for intelligent medicine applications
P Yang, H Wang, Y Huang, S Yang, Y Zhang… - Knowledge-Based …, 2024 - Elsevier
Abstract Medical Knowledge Graph (KG) has shown great potential in various healthcare
scenarios, such as drug recommendation and clinical decision support system. The factors …
scenarios, such as drug recommendation and clinical decision support system. The factors …
Uncertain knowledge graph embedding: an effective method combining multi-relation and multi-path
Q Liu, Q Zhang, F Zhao, G Wang - Frontiers of Computer Science, 2024 - Springer
Abstract Uncertain Knowledge Graphs (UKGs) are used to characterize the inherent
uncertainty of knowledge and have a richer semantic structure than deterministic knowledge …
uncertainty of knowledge and have a richer semantic structure than deterministic knowledge …
Learning to leverage high-order medical knowledge graph for joint entity and relation extraction
Z Yang, Y Huang, J Feng - Findings of the Association for …, 2023 - aclanthology.org
Automatic medical entity and relation extraction is essential for daily electronic medical
record (EMR) analysis, and has attracted a lot of academic attention. Tremendous progress …
record (EMR) analysis, and has attracted a lot of academic attention. Tremendous progress …
CHIP2022 shared task overview: medical causal entity relationship extraction
Modern medicine emphasizes interpretability and requires doctors to give reasonable, well-
founded and convincing diagnostic results when diagnosing patients. Therefore, there are a …
founded and convincing diagnostic results when diagnosing patients. Therefore, there are a …
A two-stage framework for pig disease knowledge graph fusing
Pig disease knowledge graphs (KGs) are crucial for the prevention and treatment of pig
diseases. Due to the difficulty of knowledge mining in the field of traditional animal …
diseases. Due to the difficulty of knowledge mining in the field of traditional animal …
Exploring partial knowledge base inference in biomedical entity linking
Biomedical entity linking (EL) consists of named entity recognition (NER) and named entity
disambiguation (NED). EL models are trained on corpora labeled by a predefined KB …
disambiguation (NED). EL models are trained on corpora labeled by a predefined KB …
[HTML][HTML] A multi-scale embedding network for unified named entity recognition in Chinese Electronic Medical Records
H Zhao, W **ong - Alexandria Engineering Journal, 2024 - Elsevier
Abstract Named Entity Recognition (NER) in Chinese Electronic Medical Records (EMRs) is
crucial for enhancing healthcare quality and efficiency. However, the unique complexity of …
crucial for enhancing healthcare quality and efficiency. However, the unique complexity of …
Effect of Artificial Intelligence-based Health Education Accurately Linking System (AI-HEALS) for Type 2 diabetes self-management: protocol for a mixed-methods …
Y Wu, H Min, M Li, Y Shi, A Ma, Y Han, Y Gan, X Guo… - BMC public health, 2023 - Springer
Background Patients with type 2 diabetes (T2DM) have an increasing need for personalized
and Precise management as medical technology advances. Artificial intelligence (AI) …
and Precise management as medical technology advances. Artificial intelligence (AI) …
EDET: Entity Descriptor Encoder of Transformer for Multi-Modal Knowledge Graph in Scene Parsing
S Ma, W Wan, Z Yu, Y Zhao - Applied Sciences, 2023 - mdpi.com
In scene parsing, the model is required to be able to process complex multi-modal data such
as images and contexts in real scenes, and discover their implicit connections from objects …
as images and contexts in real scenes, and discover their implicit connections from objects …
Mutually Guided Few-Shot Learning For Relational Triple Extraction
Knowledge graphs (KGs), containing many entity-relation-entity triples, provide rich
information for downstream applications. Although extracting triples from unstructured texts …
information for downstream applications. Although extracting triples from unstructured texts …