Caroline Meskers


2022

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Modeling Dutch Medical Texts for Detecting Functional Categories and Levels of COVID-19 Patients
Jenia Kim | Stella Verkijk | Edwin Geleijn | Marieke van der Leeden | Carel Meskers | Caroline Meskers | Sabina van der Veen | Piek Vossen | Guy Widdershoven
Proceedings of the Thirteenth Language Resources and Evaluation Conference

Electronic Health Records contain a lot of information in natural language that is not expressed in the structured clinical data. Especially in the case of new diseases such as COVID-19, this information is crucial to get a better understanding of patient recovery patterns and factors that may play a role in it. However, the language in these records is very different from standard language and generic natural language processing tools cannot easily be applied out-of-the-box. In this paper, we present a fine-tuned Dutch language model specifically developed for the language in these health records that can determine the functional level of patients according to a standard coding framework from the World Health Organization. We provide evidence that our classification performs at a sufficient level to generate patient recovery patterns that can be used in the future to analyse factors that contribute to the rehabilitation of COVID-19 patients and to predict individual patient recovery of functioning.