A Machine Learning Approach to Continuous Vital Sign Data Analysis

NCT01448161 · Status: COMPLETED · Type: OBSERVATIONAL · Enrollment: 605

Last updated 2023-09-28

No results posted yet for this study

Summary

Study hypothesis: Machine Learning algorithms and techniques previously developed for use in the robotics field can be applied to the field of medicine. These state-of-the-art, feature extraction and machine learning techniques can utilize patient vital sign data from bedside monitors to discover hidden relationships within the physiological waveforms and identify physiological trends or concerning conditions that are predictive of various clinical events. These algorithms could potentially provide preemptive alerts to clinicians of a developing patient problem, well before any human could detect a worrisome combination of events or trend in the data.

Specific aims:

1. Collect physiological waveform and numeric trend data from patient vital signs monitors in ICUs at the University of Colorado Hospital and Children's Hospital Colorado.
2. Combine the physiological data from patient monitors with clinical data obtained from patient Electronic Medical Records including IV fluids, medications, ventilator settings, urine output, etc. for use in developing models of various clinical conditions.
3. Apply Machine Learning techniques to these models to identify physiological waveform features and trend information, which are characteristic and predictive of common clinical conditions including but not limited to:

* Post-operative atrial fibrillation and other cardiac dysrhythmias
* Post-operative cardiac tamponade
* Tension pneumothorax
* Optimal post-operative and post-resuscitation fluid needs
* Intracranial hypertension and cerebral perfusion pressure

Conditions

  • Vital Signs

Sponsors & Collaborators

  • University of Colorado, Denver

    lead OTHER

Principal Investigators

  • Steve Moulton, MD · Children's Hospital Colorado

Eligibility

Max Age
89 Years
Sex
ALL
Healthy Volunteers
No

Timeline & Regulatory

Start
2011-09-01
Primary Completion
2022-05-19
Completion
2022-05-19

More Related Trials

Read the full study record

This page highlights key information. For complete eligibility criteria, study locations, investigator contacts, and the full protocol, visit the original record on ClinicalTrials.gov.

View NCT01448161 on ClinicalTrials.gov