R01HD103654
Project Grant
Overview
Grant Description
Leveraging the Electronic Health Record to Characterize and Optimize Care Delivery for Children with Cerebral Palsy:
Cerebral Palsy (CP) is the most common physical disability of childhood, but it is highly heterogeneous with respect to its severity, response to therapy, care needs, and impact on wellness for the child and family. To optimize health and wellness throughout life and enable new research avenues to be effectively tested, it is critical to develop a comprehensive clinical care and biopsychosocial data model. Development of a comprehensive model would both accelerate and improve understanding, care, and further research, including the identification of novel targets for interventions.
The overriding objective of this proposal is to develop a precision health model for CP-related phenotypes, health status, care activities, and psychosocial well-being that will individualize care. To accomplish this objective, we will automate the collection, cleaning, and integration of multi-dimensional, multi-domain and multi-cohort based "big data" extracted from the Electronic Health Record (EHR), and combine this EHR data with prospectively collected, high-resolution clinical, functional, environmental and psychosocial data.
The focus of this proposal will be on children between ages 6 and 12 years. Preliminary work indicates that the medical center provides care for approximately 1,800 patients with CP who are between the ages of 6 and 12 years and have at least three years of EHR data. From this EHR cohort, we will prospectively recruit 200 children and their families for detailed phenotyping. Recruitment will be stratified by Gross Motor Functional Classification System (GMFCS) levels: 60% GMFCS I, II, or III (able to walk) and 40% GMFCS IV or V (use a wheelchair). Using this multi-cohort design will allow for robust characterization of multi-dimensional factors that impact care receipt, functional outcomes, quality of life and participation.
Aim 1 will focus on creating a diverse and comprehensive data repository using both retrospective and prospective data to characterize actual versus optimal care (defined by current evidence-based literature). Aim 2 will lead to development of a receipt of care coefficient score and characterize how the degree of optimal care relates to function, quality of life and participation, controlling for functional status and age. Models developed in Aim 2 will be translated into a clinical decision tool prototype. Aim 3 will demonstrate proof of concept for scalability of machine learning algorithms with the PEDSnet Learning Health System.
This project innovatively combines retrospective EHR data with prospective clinical data to elucidate individual, treatment, family, and environmental factors associated with greater receipt of evidence-based care and/or better outcomes. This project will move the field toward precision medicine for CP and create a foundation for development of clinical dashboards to optimize practice.
Cerebral Palsy (CP) is the most common physical disability of childhood, but it is highly heterogeneous with respect to its severity, response to therapy, care needs, and impact on wellness for the child and family. To optimize health and wellness throughout life and enable new research avenues to be effectively tested, it is critical to develop a comprehensive clinical care and biopsychosocial data model. Development of a comprehensive model would both accelerate and improve understanding, care, and further research, including the identification of novel targets for interventions.
The overriding objective of this proposal is to develop a precision health model for CP-related phenotypes, health status, care activities, and psychosocial well-being that will individualize care. To accomplish this objective, we will automate the collection, cleaning, and integration of multi-dimensional, multi-domain and multi-cohort based "big data" extracted from the Electronic Health Record (EHR), and combine this EHR data with prospectively collected, high-resolution clinical, functional, environmental and psychosocial data.
The focus of this proposal will be on children between ages 6 and 12 years. Preliminary work indicates that the medical center provides care for approximately 1,800 patients with CP who are between the ages of 6 and 12 years and have at least three years of EHR data. From this EHR cohort, we will prospectively recruit 200 children and their families for detailed phenotyping. Recruitment will be stratified by Gross Motor Functional Classification System (GMFCS) levels: 60% GMFCS I, II, or III (able to walk) and 40% GMFCS IV or V (use a wheelchair). Using this multi-cohort design will allow for robust characterization of multi-dimensional factors that impact care receipt, functional outcomes, quality of life and participation.
Aim 1 will focus on creating a diverse and comprehensive data repository using both retrospective and prospective data to characterize actual versus optimal care (defined by current evidence-based literature). Aim 2 will lead to development of a receipt of care coefficient score and characterize how the degree of optimal care relates to function, quality of life and participation, controlling for functional status and age. Models developed in Aim 2 will be translated into a clinical decision tool prototype. Aim 3 will demonstrate proof of concept for scalability of machine learning algorithms with the PEDSnet Learning Health System.
This project innovatively combines retrospective EHR data with prospective clinical data to elucidate individual, treatment, family, and environmental factors associated with greater receipt of evidence-based care and/or better outcomes. This project will move the field toward precision medicine for CP and create a foundation for development of clinical dashboards to optimize practice.
Funding Goals
NOT APPLICABLE
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
Cincinnati,
Ohio
45229
United States
Geographic Scope
Single Zip Code
Related Opportunity
Analysis Notes
Amendment Since initial award the End Date has been extended from 05/31/26 to 05/31/27 and the total obligations have increased 374% from $700,155 to $3,318,435.
Childrens Hospital Medical Center was awarded
Precision Health Model for Children with CP
Project Grant R01HD103654
worth $3,318,435
from the National Institute of Child Health and Human Development in September 2021 with work to be completed primarily in Cincinnati Ohio United States.
The grant
has a duration of 5 years 8 months and
was awarded through assistance program 93.865 Child Health and Human Development Extramural Research.
The Project Grant was awarded through grant opportunity NIH Research Project Grant (Parent R01 Clinical Trial Not Allowed).
Status
(Ongoing)
Last Modified 6/22/26
Period of Performance
9/1/21
Start Date
5/31/27
End Date
Funding Split
$3.3M
Federal Obligation
$0.0
Non-Federal Obligation
$3.3M
Total Obligated
Activity Timeline
Subgrant Awards
Disclosed subgrants for R01HD103654
Transaction History
Modifications to R01HD103654
Additional Detail
Award ID FAIN
R01HD103654
SAI Number
R01HD103654-2829337937
Award ID URI
SAI UNAVAILABLE
Awardee Classifications
Nonprofit With 501(c)(3) IRS Status (Other Than An Institution Of Higher Education)
Awarding Office
75NT00 NIH Eunice Kennedy Shriver National Institute of Child Health & Human Development
Funding Office
75NT00 NIH Eunice Kennedy Shriver National Institute of Child Health & Human Development
Awardee UEI
JZD1HLM2ZU83
Awardee CAGE
01SC8
Performance District
OH-01
Senators
Sherrod Brown
J.D. (James) Vance
J.D. (James) Vance
Budget Funding
| Federal Account | Budget Subfunction | Object Class | Total | Percentage |
|---|---|---|---|---|
| National Institute of Child Health and Human Development, National Institutes of Health, Health and Human Services (075-0844) | Health research and training | Grants, subsidies, and contributions (41.0) | $673,343 | 100% |
Modified: 6/22/26