CancerKG.ORG A Web-scale, Interactive, Verifiable Knowledge Graph-LLM Hybrid for Assisting with Optimal Cancer Treatment and Care
Journal:
arXiv
Published Date:
Dec 31, 2024
Abstract
Here, we describe one of the first Web-scale hybrid Knowledge Graph
(KG)-Large Language Model (LLM), populated with the latest peer-reviewed
medical knowledge on colorectal Cancer. It is currently being evaluated to
assist with both medical research and clinical information retrieval tasks at
Moffitt Cancer Center, which is one of the top Cancer centers in the U.S. and
in the world. Our hybrid is remarkable as it serves the user needs better than
just an LLM, KG or a search-engine in isolation. LLMs as is are known to
exhibit hallucinations and catastrophic forgetting as well as are trained on
outdated corpora. The state of the art KGs, such as PrimeKG, cBioPortal,
ChEMBL, NCBI, and other require manual curation, hence are quickly getting
stale. CancerKG is unsupervised and is capable of automatically ingesting and
organizing the latest medical findings. To alleviate the LLMs shortcomings, the
verified KG serves as a Retrieval Augmented Generation (RAG) guardrail.
CancerKG exhibits 5 different advanced user interfaces, each tailored to serve
different data modalities better and more convenient for the user.