An Acoustical and Lexical Machine-Learning Pipeline to Identify Connectional Silences
Context: Developing scalable methods for conversation analytics is essential for health care communication science and quality improvement. Purpose: To assess the feasibility of automating the identification of a conversational feature, Connectional Silence, which is associated with important patien...
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Veröffentlicht in: | Journal of palliative medicine 2023-12, Vol.26 (12), p.1627-1633 |
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Hauptverfasser: | , , , , , , , |
Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Context:
Developing scalable methods for conversation analytics is essential for health care communication science and quality improvement.
Purpose:
To assess the feasibility of automating the identification of a conversational feature,
Connectional Silence,
which is associated with important patient outcomes.
Methods:
Using audio recordings from the Palliative Care Communication Research Initiative cohort study, we develop and test an automated measurement pipeline comprising three machine-learning (ML) tools—a random forest algorithm and a custom convolutional neural network that operate in parallel on audio recordings, and subsequently a natural language processing algorithm that uses brief excerpts of automated speech-to-text transcripts.
Results:
Our ML pipeline identified
Connectional Silence
with an overall sensitivity of 84% and specificity of 92%. For
Emotional
and
Invitational
subtypes, we observed sensitivities of 68% and 67%, and specificities of 95% and 97%, respectively.
Conclusion:
These findings support the capacity for coordinated and complementary ML methods to fully automate the identification of
Connectional Silence
in natural hospital-based clinical conversations. |
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ISSN: | 1096-6218 1557-7740 |
DOI: | 10.1089/jpm.2023.0087 |