A Pain Assessment Framework based on multimodal data and Deep Machine Learning methods
Stefanos Gkikas

TL;DR
This paper presents a novel multimodal deep learning framework for automatic pain assessment, integrating demographic and clinical data to improve accuracy and applicability in real-world clinical settings.
Contribution
It introduces innovative computational methods for multimodal pain assessment, achieving state-of-the-art performance and addressing practical clinical application challenges.
Findings
Achieved high accuracy in pain detection using multimodal data
Developed adaptable pipelines for different clinical scenarios
Explored new AI approaches including foundation and generative models
Abstract
From the original abstract: This thesis initially aims to study the pain assessment process from a clinical-theoretical perspective while exploring and examining existing automatic approaches. Building on this foundation, the primary objective of this Ph.D. project is to develop innovative computational methods for automatic pain assessment that achieve high performance and are applicable in real clinical settings. A primary goal is to thoroughly investigate and assess significant factors, including demographic elements that impact pain perception, as recognized in pain research, through a computational standpoint. Within the limits of the available data in this research area, our goal was to design, develop, propose, and offer automatic pain assessment pipelines for unimodal and multimodal configurations that are applicable to the specific requirements of different scenarios. The…
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Taxonomy
TopicsPain Management and Opioid Use · Emotion and Mood Recognition · Opioid Use Disorder Treatment
