A scoping review of empathy recognition in text using natural language processing

Author:

Shetty Vishal Anand1,Durbin Shauna2,Weyrich Meghan S3,Martínez Airín Denise1,Qian Jing4,Chin David L1ORCID

Affiliation:

1. Department of Health Promotion and Policy, University of Massachusetts , Amherst, MA 01003, United States

2. Center for Evidence-based Policy, Oregon Health & Science University , Portland, OR 97201, United States

3. Center for Healthcare Policy and Research, University of California Davis , Sacramento, CA 95616, United States

4. Department of Biostatistics and Epidemiology, University of Massachusetts , Amherst, MA 01003, United States

Abstract

Abstract Objective To provide a scoping review of studies on empathy recognition in text using natural language processing (NLP) that can inform an approach to identifying physician empathic communication over patient portal messages. Materials and methods We searched 6 databases to identify relevant studies published through May 1, 2023. The study selection was conducted through a title screening, an abstract review, and a full-text review. Our process followed the PRISMA-ScR guidelines. Results Of the 2446 publications identified from our searches, 39 studies were selected for the final review, which summarized: (1) definitions and context of empathy, (2) data sources and tested models, and (3) model performance. Definitions of empathy varied in their specificity to the context and setting of the study. The most common settings in which empathy was studied were reactions to news stories, health-related social media forums, and counseling sessions. We also observed an expected shift in methods used that coincided with the introduction of transformer-based models. Discussion Aspects of the current approaches taken across various domains may be translatable to communication over a patient portal. However, the specific barriers to identifying empathic communication in this context are unclear. While modern NLP methods appear to be able to handle empathy-related tasks, challenges remain in precisely defining and measuring empathy in text. Conclusion Existing work that has attempted to measure empathy in text using NLP provides a useful basis for future studies of patient-physician asynchronous communication, but consideration for the conceptualization of empathy is needed.

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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