Literature DB >> 30328760

Identifying Connectional Silence in Palliative Care Consultations: A Tandem Machine-Learning and Human Coding Method.

Brigitte N Durieux1, Cailin J Gramling1, Viktoria Manukyan2, Margaret J Eppstein3, Donna M Rizzo4, Lindsay M Ross2, Aidan G Ryan2, Michelle A Niland2, Laurence A Clarfeld2, Stewart C Alexander5, Robert Gramling6.   

Abstract

Background: Systematic measurement of conversational features in the natural clinical setting is essential to better understand, disseminate, and incentivize high quality serious illness communication. Advances in machine-learning (ML) classification of human speech offer exceptional opportunity to complement human coding (HC) methods for measurement in large scale studies.
Objectives: To test the reliability, efficiency, and sensitivity of a tandem ML-HC method for identifying one feature of clinical importance in serious illness conversations: Connectional Silence. Design: This was a cross-sectional analysis of 354 audio-recorded inpatient palliative care consultations from the Palliative Care Communication Research Initiative multisite cohort study. Setting/Subjects: Hospitalized people with advanced cancer. Measurements: We created 1000 brief audio "clips" of randomly selected moments predicted by a screening ML algorithm to be two-second or longer pauses in conversation. Each clip included 10 seconds of speaking before and 5 seconds after each pause. Two HCs independently evaluated each clip for Connectional Silence as operationalized from conceptual taxonomies of silence in serious illness conversations. HCs also evaluated 100 minutes from 10 additional conversations having unique speakers to identify how frequently the ML screening algorithm missed episodes of Connectional Silence.
Results: Connectional Silences were rare (5.5%) among all two-second or longer pauses in palliative care conversations. Tandem ML-HC demonstrated strong reliability (kappa 0.62; 95% confidence interval: 0.47-0.76). HC alone required 61% more time than the Tandem ML-HC method. No Connectional Silences were missed by the ML screening algorithm. Conclusions: Tandem ML-HC methods are reliable, efficient, and sensitive for identifying Connectional Silence in serious illness conversations.

Entities:  

Keywords:  artificial intelligence; communication; human connection; palliative care; silence

Mesh:

Year:  2018        PMID: 30328760     DOI: 10.1089/jpm.2018.0270

Source DB:  PubMed          Journal:  J Palliat Med        ISSN: 1557-7740            Impact factor:   2.947


  8 in total

1.  Silence in Conversations About Advancing Pediatric Cancer.

Authors:  Sarah L Rockwell; Cameka L Woods; Monica E Lemmon; Justin N Baker; Jennifer W Mack; Karen L Andes; Erica C Kaye
Journal:  Front Oncol       Date:  2022-06-29       Impact factor: 5.738

2.  Content of Tele-Palliative Care Consultations with Patients Receiving Dialysis.

Authors:  Katharine L Cheung; Samantha Smoger; Manjula Kurella Tamura; Renee D Stapleton; Terry Rabinowitz; Michael A LaMantia; Robert Gramling
Journal:  J Palliat Med       Date:  2022-03-04       Impact factor: 2.947

3.  Toward A Germinal Theory of Knowing- Revealing-Humanizing as Expressions of Caring in Cancer Palliative Care.

Authors:  Chinomso Ugochukwu Nwozichi
Journal:  Asia Pac J Oncol Nurs       Date:  2019 Jul-Sep

4.  Using artificial intelligence to analyse and teach communication in healthcare.

Authors:  Phyllis Butow; Ehsan Hoque
Journal:  Breast       Date:  2020-01-17       Impact factor: 4.380

5.  Using natural language processing to explore heterogeneity in moral terminology in palliative care consultations.

Authors:  Eline van den Broek-Altenburg; Robert Gramling; Kelly Gothard; Maarten Kroesen; Caspar Chorus
Journal:  BMC Palliat Care       Date:  2021-01-25       Impact factor: 3.234

6.  Enhancing serious illness communication using artificial intelligence.

Authors:  Isaac S Chua; Christine S Ritchie; David W Bates
Journal:  NPJ Digit Med       Date:  2022-01-27

Review 7.  Application Scenarios for Artificial Intelligence in Nursing Care: Rapid Review.

Authors:  Kathrin Seibert; Dominik Domhoff; Dominik Bruch; Matthias Schulte-Althoff; Daniel Fürstenau; Felix Biessmann; Karin Wolf-Ostermann
Journal:  J Med Internet Res       Date:  2021-11-29       Impact factor: 5.428

8.  Leveraging Advances in Artificial Intelligence to Improve the Quality and Timing of Palliative Care.

Authors:  Paul Windisch; Caroline Hertler; David Blum; Daniel Zwahlen; Robert Förster
Journal:  Cancers (Basel)       Date:  2020-05-03       Impact factor: 6.639

  8 in total

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