Inheritance-guided Hierarchical Assignment for Clinical Automatic Diagnosis
Abstract
Clinical diagnosis, which aims to assign diagnosis codes for a patient based on the clinical note, plays an essential role in clinical decision-making. Considering that manual diagnosis could be error-prone and time-consuming, many intelligent approaches based on clinical text mining have been proposed to perform automatic diagnosis. However, these methods may not achieve satisfactory results due to the following challenges. First, most of the diagnosis codes are rare, and the distribution is extremely unbalanced. Second, existing methods are challenging to capture the correlation between diagnosis codes. Third, the lengthy clinical note leads to the excessive dispersion of key information related to codes. To tackle these challenges, we propose a novel framework to combine the inheritance-guided hierarchical assignment and co-occurrence graph propagation for clinical automatic diagnosis. Specifically, we propose a hierarchical joint prediction strategy to address the challenge of unbalanced codes distribution. Then, we utilize graph convolutional neural networks to obtain the correlation and semantic representations of medical ontology. Furthermore, we introduce multi attention mechanisms to extract crucial information. Finally, extensive experiments on MIMIC-III dataset clearly validate the effectiveness of our method.
Cite
@article{arxiv.2101.11374,
title = {Inheritance-guided Hierarchical Assignment for Clinical Automatic Diagnosis},
author = {Yichao Du and Pengfei Luo and Xudong Hong and Tong Xu and Zhe Zhang and Chao Ren and Yi Zheng and Enhong Chen},
journal= {arXiv preprint arXiv:2101.11374},
year = {2021}
}
Comments
17 pages, 5 figures, DASFAA 2021