What Kind of Transformer Models to Use for the ICD-10 Codes Classification Task
Version
Published
Date Issued
2024-08-22
Author(s)
Type
Book Chapter
Language
English
Abstract
Coding according to the International Classification of Diseases (ICD)-10 and its clinical modifications (CM) is inherently complex and expensive. Natural Language Processing (NLP) assists by simplifying the analysis of unstructured data from electronic health records, thereby facilitating diagnosis coding. This study investigates the suitability of transformer models for ICD-10 classification, considering both encoder and encoder-decoder architectures. The analysis is performed on clinical discharge summaries from the Medical Information Mart for Intensive Care (MIMIC)-IV dataset, which contains an extensive collection of electronic health records. Pre-trained models such as BioBERT, ClinicalBERT, ClinicalLongformer, and ClinicalBigBird are adapted for the coding task, incorporating specific preprocessing techniques to enhance performance. The findings indicate that increasing context length improves accuracy, and that the difference in accuracy between encoder and encoder-decoder models is negligible.
Publisher DOI
Journal or Serie
Studies in health technology and informatics
Journal or Serie
Studies in Health Technology and Informatics
ISSN
1879-8365
Publisher URL
Volume
316
Publisher
IOS Press
Submitter
Sariyar, Murat
Citation apa
Mansour, M., Yilmaz, F., Miletic, M., & Sariyar, M. (2024). What Kind of Transformer Models to Use for the ICD-10 Codes Classification Task. In Studies in Health Technology and Informatics (Vol. 316, pp. 1008–1012). IOS Press. https://doi.org/10.24451/dspace/11548
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