2023
DOI: 10.1101/2023.04.15.23288628
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Improving Model Transferability for Clinical Note Section Classification Models Using Continued Pretraining

Abstract: Objective: The classification of clinical note sections is a critical step before doing more fine-grained natural language processing tasks such as social determinants of health extraction and temporal information extraction. Often, clinical note section classification models that achieve high accuracy for one institution experience a large drop of accuracy when transferred to another institution. The objective of this study is to develop methods that classify clinical note sections under the SOAP ("Subjective… Show more

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