| Literature DB >> 34353689 |
Robert Gramling1, Ali Javed2, Brigitte N Durieux3, Laurence A Clarfeld2, Jeremy E Matt4, Donna M Rizzo5, Ann Wong3, Tess Braddish6, Cailin J Gramling3, Joseph Wills3, Francesca Arnoldy7, Jack Straton3, Nicholas Cheney2, Margaret J Eppstein2, David Gramling8.
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.Entities:
Mesh:
Year: 2021 PMID: 34353689 DOI: 10.1016/j.pec.2021.07.043
Source DB: PubMed Journal: Patient Educ Couns ISSN: 0738-3991