Rare disease research faces significant challenges due to data sparsity and heterogeneity, leading to diagnostic delays and limited treatments. Knowledge Graphs (KGs) offer a computational solution by integrating multimodal data into structured semantic networks. This review explores the technical paradigms and applications of KGs throughout the rare disease workflow. We first describe the data foundation, focusing on standardized ontologies (e.g., HPO) and integration strategies. Subsequently, we examine core applications in elucidating pathogenic mechanisms via link prediction, enhancing clinical diagnosis through semantic reasoning, and optimizing drug repositioning using Graph Neural Networks. Notably, the review highlights the emerging integration of KGs with Large Language Models (LLMs), particularly Retrieval-Augmented Generation (RAG), to improve interpretability and precision in medical decision-making. Finally, we discuss challenges such as privacy and dynamic updates, proposing future directions like federated learning to advance the field.
Fei et al. (Wed,) studied this question.