TY - JOUR
T1 - Speech prosody as a biosignal for physical pain detection
AU - Oshrat, Yaniv
AU - Bloch, Ayala
AU - Lerner, Anat
AU - Cohen, Azaria
AU - Avigal, Mireille
AU - Zeilig, Gabi
N1 - Publisher Copyright:
© 2016, International Speech Communications Association. All rights reserved.
PY - 2016
Y1 - 2016
N2 - Obtaining an objective assessment of pain is an important challenge for clinicians. The purpose of this study is to examine the connections between subjective reports of pain and measureable biosignals of human speech prosody, as a step towards coping with this challenge. Patients reporting pain were voice-recorded to attain reports on different levels of pain. Recording was done in the patients’ natural environment at the medical center. Features were extracted from the voice-recordings, including features that were exclusively developed for this study. A machine-learning based classification process was performed in order to distinguish between samples with “no significant pain” and with “significant pain” reported. This classification process distinguished well between the two categories. Moreover, features developed during this study improved classification results in comparison to classification based solely on knownfeatures. Results indicate that there is evidence of a connection between measureable biosignal parameters of speech and the simultaneous self-reported pain level. This finding might be useful for developing future methods to more objective assessment of pain.
AB - Obtaining an objective assessment of pain is an important challenge for clinicians. The purpose of this study is to examine the connections between subjective reports of pain and measureable biosignals of human speech prosody, as a step towards coping with this challenge. Patients reporting pain were voice-recorded to attain reports on different levels of pain. Recording was done in the patients’ natural environment at the medical center. Features were extracted from the voice-recordings, including features that were exclusively developed for this study. A machine-learning based classification process was performed in order to distinguish between samples with “no significant pain” and with “significant pain” reported. This classification process distinguished well between the two categories. Moreover, features developed during this study improved classification results in comparison to classification based solely on knownfeatures. Results indicate that there is evidence of a connection between measureable biosignal parameters of speech and the simultaneous self-reported pain level. This finding might be useful for developing future methods to more objective assessment of pain.
KW - Machine learning
KW - Signal processing
KW - Speech prosody in pain
KW - Statistical classifiers
UR - http://www.scopus.com/inward/record.url?scp=84982969239&partnerID=8YFLogxK
U2 - 10.21437/speechprosody.2016-86
DO - 10.21437/speechprosody.2016-86
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AN - SCOPUS:84982969239
SN - 2333-2042
VL - 2016-January
SP - 420
EP - 424
JO - Proceedings of the International Conference on Speech Prosody
JF - Proceedings of the International Conference on Speech Prosody
T2 - 8th Speech Prosody 2016
Y2 - 31 May 2016 through 3 June 2016
ER -