Investigating Topic Modeling Techniques to Extract Meaningful Insights in Italian Long COVID Narration

BioTech (Basel). 2022 Sep 3;11(3):41. doi: 10.3390/biotech11030041.

Abstract

Through an adequate survey of the history of the disease, Narrative Medicine (NM) aims to allow the definition and implementation of an effective, appropriate, and shared treatment path. In the present study different topic modeling techniques are compared, as Latent Dirichlet Allocation (LDA) and topic modeling based on BERT transformer, to extract meaningful insights in the Italian narration of COVID-19 pandemic. In particular, the main focus was the characterization of Post-acute Sequelae of COVID-19, (i.e., PASC) writings as opposed to writings by health professionals and general reflections on COVID-19, (i.e., non-PASC) writings, modeled as a semi-supervised task. The results show that the BERTopic-based approach outperforms the LDA-base approach by grouping in the same cluster the 97.26% of analyzed documents, and reaching an overall accuracy of 91.97%.

Keywords: BERTopic; LDA; narrative medicine; text mining; topic modeling.

Grants and funding

This research received no external funding.