Back to Search Start Over

RACER: An LLM-powered Methodology for Scalable Analysis of Semi-structured Mental Health Interviews

Authors :
Singh, Satpreet Harcharan
Jiang, Kevin
Bhasin, Kanchan
Sabharwal, Ashutosh
Moukaddam, Nidal
Patel, Ankit B
Publication Year :
2024

Abstract

Semi-structured interviews (SSIs) are a commonly employed data-collection method in healthcare research, offering in-depth qualitative insights into subject experiences. Despite their value, the manual analysis of SSIs is notoriously time-consuming and labor-intensive, in part due to the difficulty of extracting and categorizing emotional responses, and challenges in scaling human evaluation for large populations. In this study, we develop RACER, a Large Language Model (LLM) based expert-guided automated pipeline that efficiently converts raw interview transcripts into insightful domain-relevant themes and sub-themes. We used RACER to analyze SSIs conducted with 93 healthcare professionals and trainees to assess the broad personal and professional mental health impacts of the COVID-19 crisis. RACER achieves moderately high agreement with two human evaluators (72%), which approaches the human inter-rater agreement (77%). Interestingly, LLMs and humans struggle with similar content involving nuanced emotional, ambivalent/dialectical, and psychological statements. Our study highlights the opportunities and challenges in using LLMs to improve research efficiency and opens new avenues for scalable analysis of SSIs in healthcare research.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.02656
Document Type :
Working Paper