Important information related to the visual assessment of patients, such as facial expressions, head and extremity movements, posture, and mobility are captured sporadically by overburdened nurses, or are not captured at all. Consequently, these important visual cues, although associated with critical indices such as physical functioning, pain, delirious state, and impending clinical deterioration, often cannot be incorporated into clinical status. The overall objectives of this project are to sense, quantify, and communicate patients' clinical conditions in an autonomous and precise manner, and develop a pervasive intelligent sensing system that combines deep learning algorithms with continuous data from inertial, color, and depth image sensors for autonomous visual assessment of critically ill patients. The central hypothesis is that deep learning models will be superior to existing acuity clinical scores by predicting acuity in a dynamic, precise, and interpretable manner, using autonomous assessment of pain, emotional distress, and physical function, together with clinical and physiologic data.
Age range
18 Years
Sex
ALL
See this in plain English?
AI-rewrites the medical criteria so a patient or caregiver can understand them. Always confirm with the trial site.
Bring these to your next appointment. They're a starting point for a shared conversation — not a sign you qualify or a recommendation to enrol.
Generated to help you prepare — always confirm anything about your own eligibility and care with the study team and your doctor.
The trial coordinator is the person who runs the study day to day. These cover the practical side — logistics, costs, and what taking part would actually mean for your life. The study team confirms whether you meet the criteria; these are questions to ask, not a sign you qualify.
A starting point for the conversation — always confirm anything about your own eligibility, costs, and care with the study team and your doctor.
Algorithmic Activity Labeling
Timeframe: Image frames collected continuously for up to 7 days maximum.
Algorithmic Pain Labeling
Timeframe: Image frames collected continuously for up to 7 days maximum.
Decibel Levels
Timeframe: Noise sensor data collected continuously for up to 7 days maximum.
Lux Levels
Timeframe: Light sensor data collected continuously for up to 7 days maximum.
Air Quality
Timeframe: Air quality sensor data collected continuously for up to 7 days maximum.
Circadian Dyssynchrony Index
Timeframe: Change in internal circadian profile from Day 1 to Day 2.
Algorithmic Delirium Recognition Profile
Timeframe: Data collected for up to 7 days maximum.
Delirium Motor Subtyping Scale 4 (DMSS-4)
Timeframe: Changes from baseline up to a maximum of 7 days