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Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder

NIMH - National Institute of Mental Health

open
OpenLast verified: 2026-07-14

About This Grant

Project Summary Bipolar disorder (BD) is among the deadliest and most costly psychiatric disorders in young people due to its severe and recurrent mood episodes of depression and mania which disrupt functioning, substantially increase the risk for suicide and premature death, and frequently require emergency or inpatient care. As each subsequent mood episode worsens prognosis, prevention of severe mood events in young people with BD is central to mitigating its enormous personal and societal burden. However, prevention is hindered by the lack of widely deployable tools to identify which affected individuals are at risk of a severe mood crisis event within a specific interval and which can guide individualized care. Through this mentored K23 award, the candidate, a PhD-prepared psychiatric nurse practitioner, will build upon her background in early intervention for BD, data- driven analytic approaches, and qualitative methods. Her program of training and research are designed to leverage real-world data and advanced analytic machine learning methods to efficiently identify young individuals with BD at risk for severe mood events and develop a deployment-focused clinical decision support intervention in partnership with clinicians and patients that could be rapidly translated to clinical care (NIMH Strategic Objectives 4.1 and 4.2). Through planned training activities, the candidate will gain a strong skillset in advanced predictive analytics and machine learning using electronic health record (EHR) and administrative data, mixed methods for stakeholder engaged intervention development, embedded health systems research, and BD clinical epidemiology. She will leverage robust, longitudinal health system data from two learning healthcare systems in the Mental Health Research Network, HealthPartners and Kaiser Permanente Northern California, and engagement with clinicians and patients where care is delivered. In Aim 1, rigorous machine learning methods will be used to estimate risk of severe mood crisis events, as indicated by mood-related inpatient hospitalization or emergency visits, over six-month intervals based on rich longitudinal EHR and claims data in a large sample of over 13,200 young patients with BD aged 15-39 years. In Aim 2, to maximize the translational impact of the models, clinicians and patients will be engaged, using a modified Delphi approach and qualitative interviews, in development and evaluation of a clinical decision support tool to guide personalized prevention and early intervention for BD mood crises. This research is a critical step in the candidate's long-term goal of leveraging data-driven approaches to improve individualized, patient-centered delivery of mental health services for individuals in the early course of BD and other serious mental illnesses. Her clinical and research background, expert mentoring team, and embedded research environment ideally positions her to accomplish the research and training aims, building the foundation for a next-step R01 that will externally validate and rigorously evaluate the risk prediction models and decision support tool developed in this proposal.

Grant Summary

Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder is a NIMH - National Institute of Mental Health grant providing up to $200K for university, nonprofit, healthcare org. Applications are due 2031-03-31 (open). Check eligibility and apply with FindGrants.

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Focus Areas

health research

Eligibility

universitynonprofithealthcare org

How to Apply

Funding Range

Up to $200K

Deadline

2031-03-31

Complexity
Medium
  1. 1Confirm your organization is eligible for Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder from NIMH - National Institute of Mental Health, checking organization type, location, and any population or project requirements.
  2. 2Gather the required documents and information, including your organization details, project plan, and budget figures.
  3. 3Draft your application narrative and budget addressing the funder's priorities and review criteria. FindGrants can draft each section for you to review and edit.
  4. 4Review every section against the requirements checklist, then export a submission-ready application pack and submit it to NIMH - National Institute of Mental Health before the deadline.
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Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder: Frequently Asked Questions

Who is eligible for the Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder?

Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder is offered by NIMH - National Institute of Mental Health and is generally open to university, nonprofit, healthcare org. It is open to organizations nationwide unless the funder specifies otherwise. Review the specific eligibility terms before applying, since funders set their own requirements around organization type, location, and the population or project being served.

How much funding does the Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder provide?

Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder provides up to $200K per award from NIMH - National Institute of Mental Health. Actual award sizes depend on the scope of your project, available program funds, and the number of applicants, so build a budget that reflects realistic, allowable costs rather than the maximum figure.

When is the Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder deadline?

Applications for Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder are due 2031-03-31 (open). Because deadlines can change, verify the date with the funder, NIMH - National Institute of Mental Health, and give yourself enough time to prepare a complete, competitive application before the close date.

How do you apply for the Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder?

To apply for Data-driven Development of Clinically Translatable EHR-Based Models to Estimate Severe Mood Episode Risk for Young People with Bipolar Disorder, confirm your eligibility, gather the required documents, and prepare a narrative and budget that address the funder's priorities. FindGrants guides you step by step and can draft each section, then exports a submission-ready application pack for this grant from NIMH - National Institute of Mental Health.