Co-Occurrence Graph-Enhanced Hierarchical Prediction of ICD Codes

Soha S. Mahdi, Eirini Papagiannopoulou,Nikos Deligiannis,Hichem Sahli

ICASSP 2024 - 2024 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)(2024)

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摘要
Recent healthcare applications of natural language processing involve multi-label classification of health records using the International Classification of Diseases (ICD). While prior research highlights intricate text models and explores external knowledge like hierarchical ICD ontology, fewer studies integrate code relationships from whole datasets to enhance ICD coding accuracy. This study presents a modular approach, sequentially combining graph-based integration of ICD code co-occurrence with a hard-coded hierarchical-enriched text representation drawn from the ICD ontology. Findings reveal: 1) significant performance gains in the combined model, aside from the significant performance gain in each enhancement module in isolation, 2) graph-based module’s efficacy is more pronounced when applied to enhanced features using the hierarchical ICD ontology, and 3) experiments demonstrate hierarchy depth’s impact on performance, concluding the deepest level’s enrichment.
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关键词
Automated Clinical Coding,Graph Deep Learning,Extreme Multi Label Text Classification
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