Predicting ASD and Other Developmental Outcomes in the First Year of Life Using EEG in a Diverse Community-Based Sample
Project Number5R01NS120986-04
Former Number1R01NS120986-01
Contact PI/Project LeaderNELSON, CHARLES ALEXANDER Other PIs
Awardee OrganizationBOSTON CHILDREN'S HOSPITAL
Description
Abstract Text
Project Summary
Children with autism who receive early intervention services have better outcomes than those who do not. It is
therefore imperative to lower the age of diagnosis. There is strong evidence that there are reliable behavioral
signs/symptoms of the disorder that emerge in the second year of life. However, there is mounting evidence from
our laboratory that there are patterns in the EEG that emerge as early as 3 months that are reliably associated
with autism outcomes at 2-3 years. In this proposal we seek to extend our previous work in two important ways.
First, we will deploy our high-dimensional EEG data collection in a large pediatric primary care clinic, thus
demonstrating the potential scalability of EEG as a biomarker of autism risk. Second, we will focus our efforts
on a population of infants who have historically been underserved and understudied: primarily Black and
Hispanic infants growing up in low-income homes. We will enroll 720 infants over 3 years (240/year), and based
on previous work, anticipate a retention rate of 85%. We will collect resting EEG data at 4, 9 and 12 months in
conjunction with their well-baby visits at the clinic. At 24 months diagnostic outcomes will be evaluated using the
ADOS, developmental measures, and expert clinical judgement. In addition to the EEG assessment in the first
year of life, a general developmental screener will be included (Ages and Stages Questionnaire-3) and indices
associated with a number of non-genetic variables associated with increased autism risk (e.g., infant sex,
parental age, prenatal maternal health, etc.) will be obtained from a demographic questionnaire and medical
records. The specific aims of the project are:
Aim 1: Using a prospective study design in a racially, ethnically and socioeconomically diverse primary
care population, we will identify EEG features measured <1 year of life that are associated with ASD at
2-years of age.
Aim 2: To develop predictive models with EEG biomarkers and other risk factors that reliably predict
later diagnosis of ASD.
Aim 3: To determine the specificity of predictive features for ASD versus other neurodevelopmental
outcomes such as language or cognitive delays.
Our ultimate goal is to create a scalable, practical, neurobiologically-based tool that can be readily integrated
into a pediatric primary care setting, and in so doing, greatly improve our ability to identify autism in the first year.
We believe our approach will allow us to demonstrate scalability of EEG in the primary care setting, develop
usable models for children at greatest risk of delayed diagnosis, and improve our understanding of the underlying
neural mechanisms of idiopathic autism.
Public Health Relevance Statement
Narrative
As the prevalence of autism rises to unprecedented levels, the need to identify children who are at the greatest
risk for developing this disorder is paramount to providing early intervention services in a timely way. In the
current application we propose to collect high-dimensional EEG data in a large pediatric primary care clinic that
disproportionately serves under-represented groups (95% Hispanic or African American), with the goal of being
able to identify children in the first year of life who will subsequently develop autism by age 24 months.
National Institute of Neurological Disorders and Stroke
CFDA Code
853
DUNS Number
076593722
UEI
Z1L9F1MM1RY3
Project Start Date
15-December-2021
Project End Date
30-November-2026
Budget Start Date
01-December-2024
Budget End Date
30-November-2025
Project Funding Information for 2025
Total Funding
$594,360
Direct Costs
$393,214
Indirect Costs
$201,146
Year
Funding IC
FY Total Cost by IC
2025
National Institute of Neurological Disorders and Stroke
$594,360
Year
Funding IC
FY Total Cost by IC
Sub Projects
No Sub Projects information available for 5R01NS120986-04
Publications
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Outcomes
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History
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