iMEDS: Automated Sedation Assessment in the PICU

Team: iMEDS

Program:

Biomedical Engineering

Project Description:

Among 250,000 children receiving pediatric critical care in the United States annually, more than 90% receive sedatives. Of these, 42% receive improper sedative doses, which lead to adverse outcomes and prolongs PICU stay. This creates an enormous burden for healthcare systems as sedation accounts for 40% of the variability in cost of care in the ICU. Sedation assessments by nurses are typically used to inform sedation decisions, but they increase the nursing burden and result in highly variable outcomes. Against this backdrop of high adverse event rates and the healthcare labor shortage, there is a need to automatically and accurately evaluate patient sedation-agitation state in order to inform dosage decisions.
Multiple input factors are used in sedation assessment including chest heaving, twitching, extubation and response to noxious stimuli. Multimodal vital time-series data from existing ICU
monitors can potentially capture signals that correlate to these events. Accelerometry has also been shown to detect postoperative anesthetic events earlier than other physiological markers. While these data are difficult to interpret in clinical practice, recent advancements in machine learning have demonstrated better performance at managing sedation in adult ICU than critical care clinicians. Therefore, machine learning and sensor technology have the potential to enable precision medicine in pediatric ICU sedation.
We propose a medical device that measures a patient’s accelerometry and combines it with other vital signs measured in the ICU. A machine learning algorithm will be trained to infer patient sedation state using these multimodal signals. This can potentially create a new paradigm of continuous monitoring, consistent assessment and predictive care planning in pediatric sedation management.

Team Members

    [foreach 357]

  • [if 397 not_equal=””][/if 397][395]

  • [/foreach 357]

Project Mentors, Sponsors, and Partners

Course Faculty

    [foreach 429]

  • [if 433 not_equal=””][/if 433][431]

  • [/foreach 429]

Project Links

Additional Project Information

Project Photo

Project Photo Caption:

The iMEDS sedation suite acquires movement signals with accelerometers, integrates it with patient vitals data, and uses machine learning to create real-time sedation assessments. Our solution turns sedation assessment from an art to a science and enables sedation assessment to become a “new vital sign” in the pediatric ICU.

Project Video