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Conversational stories & self organizing maps: Innovations for the scalable study of uncertainty in healthcare communication

Authors :
Nick Cheney
Joseph Wills
Ali Javed
Cailin J. Gramling
David Gramling
Robert Gramling
Francesca Arnoldy
Laurence A. Clarfeld
Brigitte N. Durieux
Ann Wong
Margaret J. Eppstein
Donna M. Rizzo
Jeremy E. Matt
Jack Straton
Tess Braddish
Source :
Patient Education and Counseling. 104:2616-2621
Publication Year :
2021
Publisher :
Elsevier BV, 2021.

Abstract

Background Understanding uncertainty in participatory decision-making requires scientific attention to interaction between what actually happens when patients, families and clinicians engage one another in conversation and the multi-level contexts in which these occur. Achieving this understanding will require conceptually grounded and scalable methods for use in large samples of people representing diversity in cultures, speaking and decision-making norms, and clinical situations. Discussion Here, we focus on serious illness and describe Conversational Stories as a scalable and conceptually grounded framework for characterizing uncertainty expression in these clinical contexts. Using actual conversations from a large direct-observation cohort study, we demonstrate how natural language processing and unsupervised machine learning methods can reveal underlying types of uncertainty stories in serious illness conversations. Conclusions Conversational Storytelling offers a meaningful analytic framework for scalable computational methods to study uncertainty in healthcare conversations.

Details

ISSN :
07383991
Volume :
104
Database :
OpenAIRE
Journal :
Patient Education and Counseling
Accession number :
edsair.doi.dedup.....a4f0cca5eccf53508d1912f53e5c4559