Project Details
Description
PROJECT SUMMARY/ ABSTRACT
Currently, no accurate prognostic model of posttraumatic stress following trauma exposure for emergency
department (ED) patients is available at the point-of-care without requiring clinical screening or diagnostic
interviews. The proposed research is based on the rationale that the 139 million annual ED visits provide a
critical window to proactively plan risk-based follow-up care at an early stage, where patients are still in contact
with the health care system. While clinical interviews are still the gold standard to screen for acute stress
symptoms following trauma exposure, their feasibility in clinical practice as routine screenings in the ED is
severely limited given the acute care priorities in the ED. The long-term goal of the proposed research is to
develop a prognostic model that is accurate, scalable, practical, and feasible with low additional burden on the
highly taxed ED procedures. The overall objective is to use advanced computational methods to extract
objective markers for posttraumatic stress from video and audio data to build a clinical readout at the point-of-
care that will enable ED clinicians to prognosticate the risk for posttraumatic stress disorder (PTSD).
Based on our preliminary data, we hypothesize that voice and speech content, head movement, pupil dilation,
gaze, and facial landmark features of emotion provide probabilistic information that will allow us to identify
digital biomarkers for PTSD. This hypothesis will be tested by pursuing two specific aims directed at analyzing
digital biomarkers to predict 1) who is at risk to develop PTSD and 2) to combine digital biomarkers with
routinely available electronic health records to predict at the point of care who will develop PTSD one month
after ED discharge to plan follow-up specialty care and who is at risk for chronic PTSD. This proposed
prospective longitudinal study will chart PTSD symptoms in a cohort of 350 trauma survivors. The proposed
research is of high clinically significance. The prognostic model will facilitate risk-targeted early interventions
for curtailing delayed treatment, assist clinicians in prioritizing treatment allocation and reduce downstream
health care costs. This research project aims to deliver an objective, accurate, and reliable digital measure for
patients’ well-being. Such digital biomarkers will enable more efficient discharge planning and will promote
early prevention strategies. The mental besides the physical well-being of trauma-survivors admitted to the ED
after a life-threatening event is of high value and is the foundation of a well-functioning, high-quality emergency
care system. The SARS-CoV-2 pandemic, future disasters, or other large-scale emergencies underscore the
critical need to support highly charged EDs through computational methods to better determine risks of long-
term mental health care needs without disrupting the standard operating procedures of acute care.
Status | Finished |
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Effective start/end date | 5/19/22 → 12/31/22 |
ASJC Scopus Subject Areas
- Health Informatics
- Psychiatry and Mental health
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