U24MH136069
Cooperative Agreement
Overview
Grant Description
Coordinating individually measured phenotypes to advance mental health research - Project summary
Background: Mental health research faces significant challenges, including the heterogeneity of diagnostic groups and the lack of precise characterization of individual patients, hindering effective clinical decision-making.
However, data-driven approaches, such as machine learning and computational analyses, have emerged as crucial tools to address these challenges.
By integrating data from behavioral assessments, clinical records, and biological markers, these approaches can generate more precise and objective clinical phenotypes, leading to improved diagnostic accuracy, personalized treatment selection, mechanistic insights, and enhanced monitoring and prognosis.
The use of data-driven approaches holds immense importance in revolutionizing mental health research, enabling tailored interventions, and advancing our understanding and management of mental disorders.
By integrating diverse data sources and leveraging advanced computational techniques, the Individually Measured Phenotypes to Advance Computational Translation in Mental Health (IMPACT-MH) initiative was formed, with the goal to harness the power of big data to address the complexity and heterogeneity of mental disorders, ultimately improving patient care and outcomes.
Research gap: Mental disorders exhibit complex characteristics, making it difficult to represent, collect, and analyze heterogeneous data effectively.
One major challenge is the absence of a unified representation for mental health data.
While the Research Domain Criteria framework (RDoC) aims to provide a systematic framework, a formal representation using existing biomedical standards, such as ontologies, is still lacking.
Developing such standards is crucial to generate computational phenotypes.
Additionally, once data standards and normalization methods are established, disseminating them to researchers is essential for promoting the generation of interoperable and reusable data.
Moreover, ensuring the generalizability of phenotyping algorithms beyond their original development institute and minimizing bias associated with potential errors are critical factors for enabling broad applications of such algorithms in mental health research.
Addressing these challenges is pivotal for advancing computational phenotyping in mental health and facilitating its broader utilization.
Method: To tackle these challenges, we will establish three cores within our three aims:
Aim 1. Project coordination and data management core. This core will facilitate effective coordination and communication across IMPACT-MH projects.
Additionally, it will build a robust data management system that encompasses the necessary infrastructure and pipelines to efficiently gather, integrate, store, and manipulate de-identified multi-modal data from multiple IMPACT-MH projects and submit them to NIH data repositories.
Aim 2. Data standards core. This core will work on defining comprehensive data standards by leveraging the RDoC framework and existing ontologies.
It will also develop a consensus process and data harmonization methods aimed at maximizing the clinical, administrative, and scientific value of the various ascertainment and assessment practices used across the IMPACT-MH projects.
Aim 3. Data analytics core. This core will focus on conducting rigorous analyses on the aggregated data from the IMPACT-MH projects.
It will develop methods to address potential biases associated with the datasets, algorithms, and applications used.
By implementing sound analytical approaches, we aim to ensure the validity and reliability of the findings generated from the data.
Background: Mental health research faces significant challenges, including the heterogeneity of diagnostic groups and the lack of precise characterization of individual patients, hindering effective clinical decision-making.
However, data-driven approaches, such as machine learning and computational analyses, have emerged as crucial tools to address these challenges.
By integrating data from behavioral assessments, clinical records, and biological markers, these approaches can generate more precise and objective clinical phenotypes, leading to improved diagnostic accuracy, personalized treatment selection, mechanistic insights, and enhanced monitoring and prognosis.
The use of data-driven approaches holds immense importance in revolutionizing mental health research, enabling tailored interventions, and advancing our understanding and management of mental disorders.
By integrating diverse data sources and leveraging advanced computational techniques, the Individually Measured Phenotypes to Advance Computational Translation in Mental Health (IMPACT-MH) initiative was formed, with the goal to harness the power of big data to address the complexity and heterogeneity of mental disorders, ultimately improving patient care and outcomes.
Research gap: Mental disorders exhibit complex characteristics, making it difficult to represent, collect, and analyze heterogeneous data effectively.
One major challenge is the absence of a unified representation for mental health data.
While the Research Domain Criteria framework (RDoC) aims to provide a systematic framework, a formal representation using existing biomedical standards, such as ontologies, is still lacking.
Developing such standards is crucial to generate computational phenotypes.
Additionally, once data standards and normalization methods are established, disseminating them to researchers is essential for promoting the generation of interoperable and reusable data.
Moreover, ensuring the generalizability of phenotyping algorithms beyond their original development institute and minimizing bias associated with potential errors are critical factors for enabling broad applications of such algorithms in mental health research.
Addressing these challenges is pivotal for advancing computational phenotyping in mental health and facilitating its broader utilization.
Method: To tackle these challenges, we will establish three cores within our three aims:
Aim 1. Project coordination and data management core. This core will facilitate effective coordination and communication across IMPACT-MH projects.
Additionally, it will build a robust data management system that encompasses the necessary infrastructure and pipelines to efficiently gather, integrate, store, and manipulate de-identified multi-modal data from multiple IMPACT-MH projects and submit them to NIH data repositories.
Aim 2. Data standards core. This core will work on defining comprehensive data standards by leveraging the RDoC framework and existing ontologies.
It will also develop a consensus process and data harmonization methods aimed at maximizing the clinical, administrative, and scientific value of the various ascertainment and assessment practices used across the IMPACT-MH projects.
Aim 3. Data analytics core. This core will focus on conducting rigorous analyses on the aggregated data from the IMPACT-MH projects.
It will develop methods to address potential biases associated with the datasets, algorithms, and applications used.
By implementing sound analytical approaches, we aim to ensure the validity and reliability of the findings generated from the data.
Awardee
Funding Goals
THE MISSION OF THE NATIONAL INSTITUTE OF MENTAL HEALTH (NIMH) IS TO TRANSFORM THE UNDERSTANDING AND TREATMENT OF MENTAL ILLNESSES THROUGH BASIC AND CLINICAL RESEARCH, PAVING THE WAY FOR PREVENTION, RECOVERY, AND CURE. IN MAY 2020, NIMH RELEASED ITS NEW STRATEGIC PLAN FOR RESEARCH. THE NEW STRATEGIC PLAN BUILDS ON THE SUCCESSES OF PREVIOUS NIMH STRATEGIC PLANS BY PROVIDING A FRAMEWORK FOR SCIENTIFIC RESEARCH AND EXPLORATION, AND ADDRESSING NEW CHALLENGES IN MENTAL HEALTH. THE NEW STRATEGIC PLAN OUTLINES FOUR HIGH-LEVEL GOALS: GOAL 1: DEFINE THE BRAIN MECHANISMS UNDERLYING COMPLEX BEHAVIORS GOAL 2: EXAMINE MENTAL ILLNESS TRAJECTORIES ACROSS THE LIFESPAN GOAL 3: STRIVE FOR PREVENTION AND CURES GOAL 4: STRENGTHEN THE PUBLIC HEALTH IMPACT OF NIMH-SUPPORTED RESEARCH THESE FOUR GOALS FORM A BROAD ROADMAP FOR THE INSTITUTE'S RESEARCH PRIORITIES OVER THE NEXT FIVE YEARS, BEGINNING WITH THE FUNDAMENTAL SCIENCE OF THE BRAIN AND BEHAVIOR, AND EXTENDING THROUGH EVIDENCE-BASED SERVICES THAT IMPROVE PUBLIC HEALTH OUTCOMES. THE INSTITUTE'S OVERALL FUNDING STRATEGY IS TO SUPPORT A BROAD SPECTRUM OF INVESTIGATOR-INITIATED RESEARCH IN FUNDAMENTAL SCIENCE, WITH INCREASING USE OF INSTITUTE-SOLICITED INITIATIVES FOR APPLIED RESEARCH WHERE PUBLIC HEALTH IMPACT IS A SHORT-TERM MEASURE OF SUCCESS. THE NEW STRATEGIC PLAN ALSO ADDRESSES A NUMBER OF CROSS-CUTTING THEMES THAT ARE RELEVANT TO ALL RESEARCH SUPPORTED BY NIMH, THESE THEMES HIGHLIGHT AREAS WHERE NIMH-FUNDED SCIENCE MAY HAVE THE GREATEST IMPACT, BRIDGE GAPS, AND OFFER NOVEL APPROACHES TO ACCELERATE ADVANCES IN MENTAL HEALTH RESEARCH. FOR EXAMPLE, NIMH VALUES A COMPREHENSIVE RESEARCH AGENDA THAT TAKES AN INCLUSIVE APPROACH THAT ENSURES RESEARCH INTERESTS ARE VARIED, MAINTAIN DIVERSE PARTICIPATION AND PARTNERSHIPS, AND ACHIEVE RESEARCH GOALS ACROSS MULTIPLE TIMEFRAMES. THIS INCLUDES DIVERSE METHODOLOGIES, TOOLS, AND MODELS, RESEARCH ADDRESSING COMPLEX BASIC, TRANSLATIONAL, AND APPLIED QUESTIONS, RESEARCH INCLUDING BOTH SEXES AND, AS APPROPRIATE, GENETIC BACKGROUND, AND, PARTICIPANTS FROM DIVERSE RACIAL AND ETHNIC BACKGROUNDS, AND ACROSS GENDER IDENTITIES, GEOGRAPHICAL CONTEXT, SOCIOECONOMIC STATUS, NEUROTYPE, AND AGE OFFERING THE BEST POSSIBLE REPRESENTATION, FOR THE BROADEST NUMBER OF INDIVIDUALS WHO MAY ULTIMATELY BENEFIT FROM THESE SCIENTIFIC ADVANCES. TO ACCOMPLISH THE GOALS OUTLINED IN THE NEW STRATEGIC PLAN, NIMH WILL SUPPORT RESEARCH THAT AIMS: TO CHARACTERIZE THE GENOMIC, MOLECULAR, CELLULAR, AND CIRCUIT COMPONENTS CONTRIBUTING TO BRAIN ORGANIZATION AND FUNCTION, TO IDENTIFY THE DEVELOPMENTAL, FUNCTIONAL, AND REGULATORY MECHANISMS RELEVANT TO COGNITIVE, AFFECTIVE, AND SOCIAL DOMAINS, ACROSS UNITS OF ANALYSIS, AND, TO GENERATE AND VALIDATE NOVEL TOOLS, TECHNIQUES, AND MEASURES TO QUANTIFY CHANGES IN THE ACTIVITY OF MOLECULES, CELLS, CIRCUITS, AND CONNECTOMES. TO DISCOVER GENE VARIANTS AND OTHER GENOMIC ELEMENTS THAT CONTRIBUTE TO THE DEVELOPMENT OF MENTAL ILLNESSES IN DIVERSE POPULATIONS, TO ADVANCE OUR UNDERSTANDING OF THE COMPLEX ETIOLOGY OF MENTAL ILLNESSES USING MOLECULAR EPIDEMIOLOGIC APPROACHES THAT INCORPORATE INDIVIDUAL GENETIC INFORMATION IN LARGE COHORTS, TO ELUCIDATE HOW HUMAN GENETIC VARIATION AFFECTS THE COORDINATION OF MOLECULAR, CELLULAR, AND PHYSIOLOGICAL NETWORKS SUPPORTING HIGHER-ORDER FUNCTIONS AND EMERGENT PROPERTIES OF NEUROBIOLOGICAL SYSTEMS, AND, TO DEVELOP NOVEL TOOLS AND TECHNIQUES FOR THE ANALYSIS OF LARGE-SCALE GENETIC, MULTI-OMIC DATA AS IT APPLIES TO MENTAL HEALTH. TO UTILIZE CONNECTOMIC APPROACHES TO IDENTIFY BRAIN NETWORKS AND CIRCUIT COMPONENTS THAT CONTRIBUTE TO VARIOUS ASPECTS OF MENTAL FUNCTION AND DYSFUNCTION, TO DETERMINE THROUGH BRAIN-WIDE ANALYSIS HOW CHANGES IN THE PHYSIOLOGICAL PROPERTIES OF MOLECULES, CELLS, AND CIRCUITS CONTRIBUTE TO MENTAL ILLNESSES, TO DEVELOP MOLECULAR, CELLULAR, AND CIRCUIT-LEVEL BIOMARKERS OF IMPAIRED NEURAL FUNCTION IN HUMANS, AND, TO DEVELOP INNOVATIVE TECHNOLOGIES, INCLUDING NEW IMAGING, COMPUTATIONAL, PHARMACOLOGICAL, AND GENETIC TOOLS TO INTERROGATE AND MODULATE CIRCUIT ACTIVITY AND STRUCTURE ALTERED IN MENTAL ILLNESSES. TO ELUCIDATE THE MECHANISMS CONTRIBUTING TO THE TRAJECTORIES OF BRAIN DEVELOPMENT AND BEHAVIOR, AND, TO CHARACTERIZE THE EMERGENCE AND PROGRESSION OF MENTAL ILLNESSES, AND IDENTIFYING SENSITIVE PERIODS FOR OPTIMAL INTERVENTION. TO DETERMINE EARLY RISK AND PROTECTIVE FACTORS, AND RELATED MECHANISMS, TO SERVE AS NOVEL INTERVENTION GROUPS, AND, TO DEVELOP RELIABLE AND ROBUST BIOMARKERS AND ASSESSMENT TOOLS TO PREDICT ILLNESS ONSET, COURSE, AND ACROSS DIVERSE POPULATIONS. TO DEVELOP NOVEL INTERVENTIONS USING A MECHANISM-INFORMED, EXPERIMENTAL THERAPEUTICS APPROACH, AND, TO DEVELOP AND IMPLEMENT MEASUREMENT STRATEGIES TO FACILITATE MECHANISM-BASED INTERVENTION DEVELOPMENT AND TESTING. TO INVESTIGATE PERSONALIZED INTERVENTION STRATEGIES ACROSS DISEASE PROGRESSION AND DEVELOPMENT, AND, TO DEVELOP AND REFINE COMPUTATIONAL APPROACHES AND RESEARCH DESIGNS THAT CAN BE USED TO INFORM AND TEST PERSONALIZED INTERVENTIONS. TO DEVELOP AND TEST APPROACHES FOR ADAPTING, COMBINING, AND SEQUENCING INTERVENTIONS TO ACHIEVE THE GREATEST IMPACT ON THE LIVES AND FUNCTIONING OF PERSONS SEEKING CARE, TO CONDUCT EFFICIENT PRAGMATIC TRIALS THAT EMPLOY NEW TOOLS TO RAPIDLY IDENTIFY, ENGAGE, ASSESS, AND FOLLOW PARTICIPANTS IN THE CONTEXT OF ROUTINE CARE, AND, TO ENHANCE THE PRACTICAL RELEVANCE OF EFFECTIVENESS RESEARCH VIA DEPLOYMENT-FOCUSED, HYBRID, EFFECTIVENESS-IMPLEMENTATION STUDIES. TO EMPLOY ASSESSMENT PLATFORMS WITHIN HEALTHCARE SYSTEMS TO ACCURATELY ASSESS THE DISTRIBUTION AND DETERMINANTS OF MENTAL ILLNESSES AND TO INFORM STRATEGIES FOR IMPROVED SERVICES, TO OPTIMIZE REAL-WORLD DATA COLLECTION SYSTEMS TO IDENTIFY STRATEGIES FOR IMPROVING ACCESS, QUALITY, EFFECTIVENESS, AND CONTINUITY OF MENTAL HEALTH SERVICES, AND, TO COMPARE ALTERNATIVE FINANCING MODELS TO PROMOTE EFFECTIVE AND EFFICIENT CARE FOR INDIVIDUALS WITH SERIOUS EMOTIONAL DISTURBANCES AND SERIOUS MENTAL ILLNESSES. TO STRENGTHEN PARTNERSHIPS WITH KEY STAKEHOLDERS TO DEVELOP AND VALIDATE STRATEGIES FOR IMPLEMENTING, SUSTAINING, AND CONTINUOUSLY IMPROVE EVIDENCE-BASED PRACTICES, TO BUILD MODELS TO SCALE-UP EVIDENCE-BASED PRACTICES FOR USE IN PUBLIC AND PRIVATE PRIMARY CARE, SPECIALTY CARE AND OTHER SETTINGS, AND, TO DEVELOP DECISION-SUPPORT TOOLS AND TECHNOLOGIES THAT INCREASE THE EFFECTIVENESS AND CONTINUOUS IMPROVEMENT OF MENTAL HEALTH INTERVENTIONS IN PUBLIC AND PRIVATE PRIMARY CARE, SPECIALTY CARE, AND OTHER SETTINGS. TO ADAPT, VALIDATE, AND SCALE-UP PROGRAMS CURRENTLY IN USE THAT IMPROVE MENTAL HEALTH SERVICES FOR UNDERSERVED POPULATIONS, TO DEVELOP AND VALIDATE SERVICE DELIVERY MODELS THAT PROVIDE EVIDENCE-BASED CARE FOR INDIVIDUALS THROUGHOUT THE COURSE OF MENTAL ILLNESS, TO DEVELOP AND VALIDATE SYSTEMS-LEVEL STRATEGIES USING TECHNOLOGY AND OTHER APPROACHES, TO IDENTIFY, SUPPORT, AND MONITOR THE EFFECTIVENESS OF EVIDENCE-BASED CARE THROUGHOUT THE COURSE OF ILLNESS, AND, TO DEVELOP AND VALIDATE DECISION-MAKING MODELS THAT BRIDGE MENTAL HEALTH, MEDICAL, AND OTHER CARE SETTINGS TO INTEGRATE THE APPROPRIATE CARE FOR PEOPLE WITH SERIOUS MENTAL ILLNESSES AND COMORBID MEDICAL CONDITIONS.
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
New Haven,
Connecticut
065103210
United States
Geographic Scope
Single Zip Code
Related Opportunity
Analysis Notes
Amendment Since initial award the total obligations have increased 155% from $1,662,906 to $4,241,312.
Yale Univ was awarded
Enhancing Mental Health Research through Advanced Phenotyping Strategies
Cooperative Agreement U24MH136069
worth $4,241,312
from the National Institute of Mental Health in July 2024 with work to be completed primarily in New Haven Connecticut United States.
The grant
has a duration of 4 years 9 months and
was awarded through assistance program 93.242 Mental Health Research Grants.
The Cooperative Agreement was awarded through grant opportunity Administrative Supplements to Existing NIH Grants and Cooperative Agreements (Parent Admin Supp Clinical Trial Optional).
Status
(Ongoing)
Last Modified 9/24/25
Period of Performance
7/15/24
Start Date
4/30/29
End Date
Funding Split
$4.2M
Federal Obligation
$0.0
Non-Federal Obligation
$4.2M
Total Obligated
Activity Timeline
Subgrant Awards
Disclosed subgrants for U24MH136069
Transaction History
Modifications to U24MH136069
Additional Detail
Award ID FAIN
U24MH136069
SAI Number
U24MH136069-3689619500
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
FL6GV84CKN57
Awardee CAGE
4B992
Performance District
CT-03
Senators
Richard Blumenthal
Christopher Murphy
Christopher Murphy
Modified: 9/24/25