R01MH132973
Project Grant
Overview
Grant Description
Computational strategies to tailor existing interventions for first major depressive episodes to inform and test personalized interventions - Abstract
Major depressive disorder (MDD) is a chronic, recurrent illness impacting 20.6% of the U.S. population, causing significant disability and an economic impact of $326.2 billion annually.
One of the largest risk factors for depression chronicity and disability is inadequate antidepressant response, defined as less than a 50% improvement in depressive symptoms after starting antidepressant treatment. Antidepressants are recommended as a first-line depression treatment and taken by 70% of patients with depression.
Inadequate antidepressant response is experienced by 50-60% of patients starting an antidepressant and is responsible for 47% of the economic impact and disability caused by MDD. As such, identifying risk for inadequate antidepressant response early, during a patient’s first clinical presentation for a depressive episode, would be an innovative, urgently needed first step towards preventing recurrent depressive episodes, reducing depression chronicity and disability, and improving MDD outcomes.
This step aligns with the National Institute of Mental Health (NIMH) strategic plan objective 3.2 to “develop strategies for tailoring existing interventions (antidepressants) to optimize (depressive episode) outcomes.”
While previous studies identified separate predictors of antidepressant response, no study to date has focused on integrating known and novel predictors of inadequate antidepressant response during a patient’s first depressive episode. This knowledge gap exists as no large studies in diverse populations have integrated comprehensive clinical, demographic, genetic, and behavioral information in one model to predict inadequate antidepressant response prior to first antidepressant treatment.
Such information is crucial to improve patient care, reduce depressive disorder chronicity and disability, and tailor existing patient interventions to optimize MDD outcomes.
Utilizing electronic health record data from three large, integrated healthcare systems representing over 6.9 million members (Kaiser Permanente (KP) Northern California, KP Washington, and HealthPartners), we aim to quantify inadequate antidepressant response risk at the time of a patient’s first clinical presentation for a depressive episode by integrating clinical, demographic, genetic, and behavioral information in one predictive model.
To accomplish this aim, we will use translational machine learning and predictive modeling, internal and external model validation and testing, prospective validation, and existing genome-wide genotypic data. Further, we will examine barriers and facilitators to clinical applications of predictive models for MDD to facilitate clinical translation and implementation of the predictive model, reducing the time between research innovation and clinical application.
Our long-term goal is to develop a clinical tool informing decision making and promoting MDD treatment optimization.
Major depressive disorder (MDD) is a chronic, recurrent illness impacting 20.6% of the U.S. population, causing significant disability and an economic impact of $326.2 billion annually.
One of the largest risk factors for depression chronicity and disability is inadequate antidepressant response, defined as less than a 50% improvement in depressive symptoms after starting antidepressant treatment. Antidepressants are recommended as a first-line depression treatment and taken by 70% of patients with depression.
Inadequate antidepressant response is experienced by 50-60% of patients starting an antidepressant and is responsible for 47% of the economic impact and disability caused by MDD. As such, identifying risk for inadequate antidepressant response early, during a patient’s first clinical presentation for a depressive episode, would be an innovative, urgently needed first step towards preventing recurrent depressive episodes, reducing depression chronicity and disability, and improving MDD outcomes.
This step aligns with the National Institute of Mental Health (NIMH) strategic plan objective 3.2 to “develop strategies for tailoring existing interventions (antidepressants) to optimize (depressive episode) outcomes.”
While previous studies identified separate predictors of antidepressant response, no study to date has focused on integrating known and novel predictors of inadequate antidepressant response during a patient’s first depressive episode. This knowledge gap exists as no large studies in diverse populations have integrated comprehensive clinical, demographic, genetic, and behavioral information in one model to predict inadequate antidepressant response prior to first antidepressant treatment.
Such information is crucial to improve patient care, reduce depressive disorder chronicity and disability, and tailor existing patient interventions to optimize MDD outcomes.
Utilizing electronic health record data from three large, integrated healthcare systems representing over 6.9 million members (Kaiser Permanente (KP) Northern California, KP Washington, and HealthPartners), we aim to quantify inadequate antidepressant response risk at the time of a patient’s first clinical presentation for a depressive episode by integrating clinical, demographic, genetic, and behavioral information in one predictive model.
To accomplish this aim, we will use translational machine learning and predictive modeling, internal and external model validation and testing, prospective validation, and existing genome-wide genotypic data. Further, we will examine barriers and facilitators to clinical applications of predictive models for MDD to facilitate clinical translation and implementation of the predictive model, reducing the time between research innovation and clinical application.
Our long-term goal is to develop a clinical tool informing decision making and promoting MDD treatment optimization.
Awardee
Funding Goals
NOT APPLICABLE
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
Santa Rosa,
California
954032149
United States
Geographic Scope
Single Zip Code
Related Opportunity
Analysis Notes
Amendment Since initial award the total obligations have increased 287% from $812,514 to $3,146,439.
Kaiser Foundation Hospitals was awarded
Personalized Interventions for First Depressive Episodes
Project Grant R01MH132973
worth $3,146,439
from the National Institute of Mental Health in July 2023 with work to be completed primarily in Santa Rosa California United States.
The grant
has a duration of 4 years 10 months and
was awarded through assistance program 93.242 Mental Health Research Grants.
The Project Grant was awarded through grant opportunity NIMH Biobehavioral Research Awards for Innovative New Scientists (NIMH BRAINS) (R01 Clinical Trial Optional).
Status
(Ongoing)
Last Modified 6/22/26
Period of Performance
7/19/23
Start Date
5/31/28
End Date
Funding Split
$3.1M
Federal Obligation
$0.0
Non-Federal Obligation
$3.1M
Total Obligated
Activity Timeline
Subgrant Awards
Disclosed subgrants for R01MH132973
Transaction History
Modifications to R01MH132973
Additional Detail
Award ID FAIN
R01MH132973
SAI Number
R01MH132973-281021852
Award ID URI
SAI UNAVAILABLE
Awardee Classifications
Nonprofit With 501(c)(3) IRS Status (Other Than An Institution Of Higher Education)
Awarding Office
75N700 NIH National Institute of Mental Health
Funding Office
75N700 NIH National Institute of Mental Health
Awardee UEI
P1RTMASB37B5
Awardee CAGE
0ZUC3
Performance District
CA-04
Senators
Dianne Feinstein
Alejandro Padilla
Alejandro Padilla
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) | $812,514 | 100% |
Modified: 6/22/26