Artificial Intelligence for Dynamic, individualized CPR guidance: AID CPR
Project Number5K08HL168330-02
Contact PI/Project LeaderNASSAL, MICHELLE M.J.
Awardee OrganizationOHIO STATE UNIVERSITY
Description
Abstract Text
Project Summary/Abstract
Out-of-hospital cardiac arrest (OHCA) is a dynamic process that requires new interventions to improve
outcomes. End-tidal carbon dioxide (ETCO2) measurement is a tool that is widely recognized, easy to use, and
can potentially provide real-time insights into ongoing resuscitation efforts; however, it has yet to be applied to
individualized medicine. Our overall hypothesis is that integrating ETCO2 capnography into OHCA resuscitation
will improve outcomes. Using innovative signal processing and machine learning methods, we will identify a wide
range of resuscitation quality characteristics over resuscitation, their relation to individual patient characteristics
and predictability of OHCA outcomes.
These goals will be accomplished via the following aims:
Aim 1. Determine the influence of resuscitation interventions on real-time physiologic dynamics and outcomes
in OHCA.
Aim 2. Establish the influence of individual patient characteristics on the real-time physiologic dynamics and
OHCA outcomes.
Aim 3. Develop a novel cardiac arrest resuscitation strategy based upon real-time individualized physiologic
dynamics.
We will create a large repository of cardiopulmonary resuscitation process data encompassing data from over
5300 adult OHCA. This work will define intra-arrest ETCO2 dynamics over resuscitation to allow for the
development of guided resuscitation efforts, and the resultant data will provide a solid foundation for future
hypothesis-driven research.
Dr. Nassal’s training plan encompasses both formal didactics and experiential training with experienced
mentors and collaborators that will develop a skillset in both signal processing and equitable artificial intelligent
driven algorithms. The team has extensive experience in using machine learning and multimodal signal
processing for classification and predictions in resuscitation. This training program will develop a unique skillset
in advanced cardiac signal processing; artificial intelligence, including equitable machine learning processing;
and expertise in the application of these skills to develop dynamically guided resuscitation strategies that few
other physician-scientist possess.
Public Health Relevance Statement
Project Narrative
Out-of-hospital cardiac arrest (OHCA) is a major public health problem annually affecting close to half a million
people in the US. As survival is only at 10%, new interventions that reflect the dynamic process during
resuscitation are needed to improve outcomes. This proposal will define real-time physiologic dynamics in
relation to patient specific characteristics and resuscitation interventions to develop new artificial intelligent driven
resuscitation algorithms.
No Sub Projects information available for 5K08HL168330-02
Publications
Publications are associated with projects, but cannot be identified with any particular year of the project or fiscal year of funding. This is due to the continuous and cumulative nature of knowledge generation across the life of a project and the sometimes long and variable publishing timeline. Similarly, for multi-component projects, publications are associated with the parent core project and not with individual sub-projects.
No Publications available for 5K08HL168330-02
Patents
No Patents information available for 5K08HL168330-02
Outcomes
The Project Outcomes shown here are displayed verbatim as submitted by the Principal Investigator (PI) for this award. Any opinions, findings, and conclusions or recommendations expressed are those of the PI and do not necessarily reflect the views of the National Institutes of Health. NIH has not endorsed the content below.
No Outcomes available for 5K08HL168330-02
Clinical Studies
No Clinical Studies information available for 5K08HL168330-02
News and More
Related News Releases
No news release information available for 5K08HL168330-02
History
No Historical information available for 5K08HL168330-02
Similar Projects
No Similar Projects information available for 5K08HL168330-02