Skip to content
/ LORE Public
forked from jacobvsdanniel/LORE

A Literature Semantics Framework for Evidenced Disease-Gene Pathogenicity Prediction at Scale

License

Notifications You must be signed in to change notification settings

ailabstw/LORE

 
 

Repository files navigation

LORE

A Literature Semantics Framework for Evidenced Disease-Gene Pathogenicity Prediction at Scale

Source code authors:

  • Li Peng-Hsuan (李朋軒) @ ailabs.tw (jacobvsdanniel [at] gmail.com)

Introduction

This repo hosts the source codes for LORE (LLM-based Open Relation Extraction and Embedding). We applied LORE to PubMed abstracts for large-scale understanding of disease-gene relationships and created the PMKB-CV knowledge graph. PMKB-CV contains 2K diseases, 600K disease-gene pairs, 11M disease-gene relations, embeddings, and predicted pathogenicity scores. This resource covers 200x more disease-gene pairs than ClinVar, and the predicted pathogenicity scores achieve an 80% Mean Average Precision (MAP) in ranking pathogenic genes for diseases.

For more details, see our paper:

Peng-Hsuan Li, Yih-Yun Sun, Hsueh-Fen Juan, Chien-Yu Chen, Huai-Kuang Tsai, and Jia-Hsin Huang. 2024. LORE: A Literature Semantics Framework for Evidenced Disease-Gene Pathogenicity Prediction at Scale.

The PMKB-CV knowledge graph is publicly available at:

LORE-PMKB-CV © 2024 by Taiwan AI Labs, licensed under CC BY-NC-SA 4.0.

About

A Literature Semantics Framework for Evidenced Disease-Gene Pathogenicity Prediction at Scale

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%