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Using a Large Open Clinical Corpus for Improved ICD-10 Diagnosis Coding

Authors :
Lamproudis, Anastasios
Olsen Svenning, Therese
Torsvik, Torbjørn
Budrionis, Andrius
Dinh Ngo, Phuong
Vakili, Thomas
Dalianis, Hercules
Lamproudis, Anastasios
Olsen Svenning, Therese
Torsvik, Torbjørn
Budrionis, Andrius
Dinh Ngo, Phuong
Vakili, Thomas
Dalianis, Hercules
Publication Year :
2024

Abstract

With the recent advances in natural language processing and deep learning, the development of tools that can assist medical coders in ICD-10 diagnosis coding and increase their efficiency in coding discharge summaries is significantly more viable than before. To that end, one important component in the development of these models is the datasets used to train them. In this study, such datasets are presented, and it is shown that one of them can be used to develop a BERT-based language model that can consistently perform well in assigning ICD-10 codes to discharge summaries written in Swedish. Most importantly, it can be used in a coding support setup where a tool can recommend potential codes to the coders. This reduces the range of potential codes to consider and, in turn, reduces the workload of the coder. Moreover, the de-identified and pseudonymised dataset is open to use for academic users.

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1428113680
Document Type :
Electronic Resource