Automated Empathy Detection for Oncology Encounters

Empathy involves understanding other people's situation, perspective, and feelings. In clinical interactions, it helps clinicians establish rapport with a patient and support patient-centered care and decision making. Understanding physician communication through observation of audio-recorded e...

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Veröffentlicht in:arXiv.org 2020-07
Hauptverfasser: Chen, Zhuohao, Gibson, James, Ming-Chang, Chiu, Hu, Qiaohong, Knight, Tara K, Meeker, Daniella, Tulsky, James A, Pollak, Kathryn I, Narayanan, Shrikanth
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container_title arXiv.org
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creator Chen, Zhuohao
Gibson, James
Ming-Chang, Chiu
Hu, Qiaohong
Knight, Tara K
Meeker, Daniella
Tulsky, James A
Pollak, Kathryn I
Narayanan, Shrikanth
description Empathy involves understanding other people's situation, perspective, and feelings. In clinical interactions, it helps clinicians establish rapport with a patient and support patient-centered care and decision making. Understanding physician communication through observation of audio-recorded encounters is largely carried out with manual annotation and analysis. However, manual annotation has a prohibitively high cost. In this paper, a multimodal system is proposed for the first time to automatically detect empathic interactions in recordings of real-world face-to-face oncology encounters that might accelerate manual processes. An automatic speech and language processing pipeline is employed to segment and diarize the audio as well as for transcription of speech into text. Lexical and acoustic features are derived to help detect both empathic opportunities offered by the patient, and the expressed empathy by the oncologist. We make the empathy predictions using Support Vector Machines (SVMs) and evaluate the performance on different combinations of features in terms of average precision (AP).
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subjects Annotations
Cost analysis
Decision making
Empathy
Natural language processing
Speech recognition
Support vector machines
title Automated Empathy Detection for Oncology Encounters
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