Mdpg: a novel multi-disease diagnosis prediction method based on patient knowledge graphs

AbstractDiagnosis prediction, a key factor in enhancing healthcare efficiency, remains a focal point in clinical decision support research. However, the time-series, sparse and multi-noise characteristics of electronic health record (EHR) data make it a great challenge. Existing methods commonly address these issues using RNNs and incorporating medical prior knowledge from medical knowledge bases, but they neglect the local spatial characteristics and spatial –temporal correlation of the data. Consequently, we propose MDPG, a diagnosis prediction model based on patient knowledge graphs. Initially, we represent the electronic visit records of patients as a patient-centered temporal knowledge graph, capturing the local spatial structure and temporal char acteristics of the visit information. Subsequently, we design the spatial graph convolution block, temporal self-attention block, and spatial–temporal synchronous graph convolution block to capture the spatial, temporal, and spatial–temporal correlations embedded in them, respectively. Ultimatel y, we accomplish the prediction of patients’ future states through multi-label classification. We conduct comprehensive experiments on two real-world datasets independently and evaluate the results using visit-level precision@k and code-level accuracy@k metrics. The experimental results demonstrat e that MDPG outperforms all baseline models, yielding the best performance.
Source: Health Information Science and Systems - Category: Information Technology Source Type: research