A text style transfer system for reducing the physician–patient expertise gap: An analysis with automatic and human evaluations

Luca Bacco, Felice Dell'Orletta, Huiyuan Lai, Mario Merone*, Malvina Nissim

*Corresponding author voor dit werk

OnderzoeksoutputAcademicpeer review

6 Citaten (Scopus)
149 Downloads (Pure)

Samenvatting

Physicians and patients often come from different backgrounds and have varying levels of education, which can result in communication difficulties in the healthcare process. To address this expertise gap, we present a “Text Style Transfer” system. Our system uses Semantic Textual Similarity techniques based on Sentence Transformers models to create pseudo-parallel datasets from a large, non-parallel corpus of lay and expert texts. This approach allowed us to train a denoising autoencoder model (BART), overcoming the limitations of previous systems. Our extensive analysis, which includes both automatic metrics and human evaluations from both lay (patients) and expert (physicians) individuals, shows that our system outperforms state-of-the-art models and is comparable to human-provided gold references in some cases.

Originele taal-2English
Artikelnummer120874
Aantal pagina's18
TijdschriftExpert systems with applications
Volume233
DOI's
StatusPublished - 15-dec.-2023

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