zhenyuanlu/awesome-pain-intensity-classification-papers
A comprehensive list of pain intensity classification papers mainly based on deep learning algorithms
This is a curated collection of academic papers focused on using artificial intelligence to automatically assess pain intensity. It provides healthcare researchers and clinicians with a categorized list of studies, including the AI models used, the physiological signals analyzed (like heart rate or skin conductance), and the datasets employed. The goal is to help those exploring objective ways to measure and classify pain without subjective patient reporting.
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Use this if you are a medical researcher, clinician, or bioengineer looking for a comprehensive overview of existing literature on AI-driven pain assessment, including specific methodologies and datasets.
Not ideal if you are a patient seeking pain management solutions or a general user looking for consumer-facing pain tracking apps.
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Oct 20, 2024
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