2024
DOI: 10.1109/access.2024.3384359
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PainMeter: Automatic Assessment of Pain Intensity Levels From Multiple Physiological Signals Using Machine Learning

Da’ad Albahdal,
Wijdan Aljebreen,
Dina M. Ibrahim

Abstract: Pain assessment traditionally relies on self-report, but it is subjective and influenced by various factors. To address this, there's a need for an affordable and scalable objective pain identification method. Current research suggests that pain has physiological markers beyond the brain, such as changes in cardiovascular activity and electrodermal responses. Utilizing these markers, real-time pain detection algorithms were developed using the BioVid Heat Pain dataset, consisting of 86 healthy individuals expe… Show more

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