AcuGRL: Knowledge-Guided Heterogeneous Graph Representation Learning for Exploring regularity in acupuncture records with auxiliary information

Citation Author(s):
jingjing
xu
Submitted by:
Jingjing Xu
Last updated:
Thu, 01/09/2025 - 10:38
DOI:
10.21227/k31k-0335
License:
0
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Abstract 

We propose AcuGRL, a graph representation learning-based framework that models the relationships between acupoints and disease phenotypes as a heterogeneous graph. This framework incorporates a domain knowledge-guided scheme to capture both the structural and semantic features of the network, generating effective embeddings for downstream tasks. Additionally, we integrate micro-level genetic targets with macro-level disease phenotypes to further enhance network connectivity and provide richer contextual information.

Instructions: 

a total of 1313 records published between January 2000 and October 2022 are obtained, encompassing 255 disease phenotypes and 160 acupoints. All co-occurring pairs of acupoints and phenotypes in these records are linked to create a heterogeneous acupointdisease (HAD) graph.