R01MH126895
Project Grant
Overview
Grant Description
Development and Clinical Interpretation of Machine Learning Emergency Department Suicide Prediction Algorithms Using Electronic Health Records and Claims - Project Summary
Preventing suicide is one of the great public health challenges facing the US healthcare system. People who seek emergency care for mental health complaints are at high short-term risk of non-fatal suicide events and suicide. Yet, identifying high-risk patients is challenging as risk fluctuates in a poorly understood manner. It is especially difficult to evaluate risk in emergency settings, where access to the patient's mental health history is often limited.
The proposed project seeks to address this critical knowledge gap by pairing data mining and machine learning methods with rich data sources in order to develop short-term prediction models of non-fatal suicidal events and suicide for patients presenting to emergency departments (EDs) with mental health problems.
The specific aims of this study are to:
1) Apply advanced machine learning data analytic techniques to electronic health record (EHR) data to develop a clinically rich description of ED mental health patient characteristics that predict suicide and non-fatal suicidal events over a 90-day follow-up period.
2) Use longitudinal and temporal features of EHR and claims data from the 180 days preceding the ED mental health visit to generate clinically interpretable suicide and suicidal event risk scores.
3) Convene ED physicians to enhance model development, clinical interpretability, and utility of a suicide risk assessment clinical decision support tool.
We will achieve these aims by leveraging several different sophisticated machine learning analytic methods of existing longitudinal clinical and service use information. We seek to develop point-in-time, short-term risk scores for suicidal symptoms and suicide death and the clinical features that drive that risk that may be used to inform clinical risk assessment and management of patients who present to EDs with mental health complaints.
Risk algorithms will be developed and validated using health information from a large combined EHR and claims dataset with over 24 million commercially insured patients, which is linked to the National Death Index. Findings will yield new insights regarding patient-specific risk factors and potential targets for intervention.
By drawing on data sources common to most healthcare systems and using efficient computer algorithms, this approach has the potential to develop clinically interpretable suicide risk scores at the point of ED evaluation and following disposition. This will help frontline clinicians focus their efforts on high-risk patients during high-risk periods to inform intervention decisions about suicide risk.
Preventing suicide is one of the great public health challenges facing the US healthcare system. People who seek emergency care for mental health complaints are at high short-term risk of non-fatal suicide events and suicide. Yet, identifying high-risk patients is challenging as risk fluctuates in a poorly understood manner. It is especially difficult to evaluate risk in emergency settings, where access to the patient's mental health history is often limited.
The proposed project seeks to address this critical knowledge gap by pairing data mining and machine learning methods with rich data sources in order to develop short-term prediction models of non-fatal suicidal events and suicide for patients presenting to emergency departments (EDs) with mental health problems.
The specific aims of this study are to:
1) Apply advanced machine learning data analytic techniques to electronic health record (EHR) data to develop a clinically rich description of ED mental health patient characteristics that predict suicide and non-fatal suicidal events over a 90-day follow-up period.
2) Use longitudinal and temporal features of EHR and claims data from the 180 days preceding the ED mental health visit to generate clinically interpretable suicide and suicidal event risk scores.
3) Convene ED physicians to enhance model development, clinical interpretability, and utility of a suicide risk assessment clinical decision support tool.
We will achieve these aims by leveraging several different sophisticated machine learning analytic methods of existing longitudinal clinical and service use information. We seek to develop point-in-time, short-term risk scores for suicidal symptoms and suicide death and the clinical features that drive that risk that may be used to inform clinical risk assessment and management of patients who present to EDs with mental health complaints.
Risk algorithms will be developed and validated using health information from a large combined EHR and claims dataset with over 24 million commercially insured patients, which is linked to the National Death Index. Findings will yield new insights regarding patient-specific risk factors and potential targets for intervention.
By drawing on data sources common to most healthcare systems and using efficient computer algorithms, this approach has the potential to develop clinically interpretable suicide risk scores at the point of ED evaluation and following disposition. This will help frontline clinicians focus their efforts on high-risk patients during high-risk periods to inform intervention decisions about suicide risk.
Funding Goals
NOT APPLICABLE
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
Philadelphia,
Pennsylvania
191046205
United States
Geographic Scope
Single Zip Code
Related Opportunity
Analysis Notes
Amendment Since initial award the total obligations have increased 316% from $784,177 to $3,265,508.
Trustees Of The University Of Pennsylvania was awarded
Machine Learning Suicide Prediction in Emergency Departments
Project Grant R01MH126895
worth $3,265,508
from the National Institute of Mental Health in August 2021 with work to be completed primarily in Philadelphia Pennsylvania United States.
The grant
has a duration of 3 years 9 months and
was awarded through assistance program 93.242 Mental Health Research Grants.
The Project Grant was awarded through grant opportunity Innovative Mental Health Services Research Not Involving Clinical Trials (R01).
Status
(Complete)
Last Modified 5/20/24
Period of Performance
8/5/21
Start Date
5/31/25
End Date
Funding Split
$3.3M
Federal Obligation
$0.0
Non-Federal Obligation
$3.3M
Total Obligated
Activity Timeline
Subgrant Awards
Disclosed subgrants for R01MH126895
Transaction History
Modifications to R01MH126895
Additional Detail
Award ID FAIN
R01MH126895
SAI Number
R01MH126895-2593634455
Award ID URI
SAI UNAVAILABLE
Awardee Classifications
Private Institution Of Higher Education
Awarding Office
75N700 NIH NATIONAL INSTITUTE OF MENTAL HEALTH
Funding Office
75N700 NIH NATIONAL INSTITUTE OF MENTAL HEALTH
Awardee UEI
GM1XX56LEP58
Awardee CAGE
7G665
Performance District
PA-03
Senators
Robert Casey
John Fetterman
John Fetterman
Budget Funding
| Federal Account | Budget Subfunction | Object Class | Total | Percentage |
|---|---|---|---|---|
| National Institute of Mental Health, National Institutes of Health, Health and Human Services (075-0892) | Health research and training | Grants, subsidies, and contributions (41.0) | $1,418,559 | 82% |
| National Institute on Aging, National Institutes of Health, Health and Human Services (075-0843) | Health research and training | Grants, subsidies, and contributions (41.0) | $303,332 | 18% |
Modified: 5/20/24