Project Details
Description
Project Summary/Abstract
Traumatic brain injury (TBI) is a major public health issue globally, and while neuroimaging has been useful in
understanding disruption in brain structure and function after injury, there are a number of factors that attenuate
its prognostic ability. For example, there is tremendous heterogeneity in outcome after injury which is only
partially explained by injury severity. Cost frequently limits sample size in neuroimaging studies, yet given the
myriad factors that have been shown to influence patient outcome (age, injury severity, socioeconomic status),
small samples and mass univariate testing often result in many studies being grossly under-powered. One
solution is to combine data and create novel data sharing platforms, and the Enhancing Neuroimaging Genetics
through Meta-Analysis (ENIGMA) consortium has supported this kind of collaboration for over a decade across
a range of clinical disorders. The goal of this proposal is to develop tools and data processing procedures for
use in the ENIGMA Brain Injury working group. In the R61 phase, we aim to develop and test a workflow for
harmonized processing of behavioral data (Aim 1) as well as structural and functional (resting-state) MRI data
(Aim 2). For Aim 1 of the R61, the goal is to offer a decision tree of procedures that is data-dependent, allowing
investigators to establish common cognitive endpoints across cohorts that collect a range of neuropsychological
and clinical measures. This proposal will create sharable procedures, flexible tools, and generalizable guidelines
for best practices for extracting common cognitive endpoints from distinct behavioral test batteries (R61 Aim 1).
In Aim 2 of the R61, we develop an image processing pipeline called Harmonization and Aggregation for
Functional and structural imaging data PIPEline; HAF-PIPE) that allows for aggregation of non-equivalent
imaging data. A primary goal is to decentralize ComBat, an open-source data harmonization tool, so that it can
be used in a virtual sharing environment. Following satisfaction of the R61 Go/No-Go criteria, which is the
curation of the dataset including 13 cohorts, extraction of common cognitive endpoints, and creation of HAF-
PIPE, we will move to the R33 phase. In the R33 phase, we will leverage the large, harmonized dataset and
apply a machine learning technique (CorEx - Correlation Explanation) to identify patient clusters within each
patient population studied. HAF-PIPE and the procedures and guidelines from the R61 phase will then be
extended to additional patient populations and made available to other ENIGMA working groups. The
harmonized data, along with the tools and procedures for creating them, will be accessible to researchers
following proposal submission and approval as a curated dataset. With success, this proposal holds the promise
of significantly advancing data curation, harmonization, and sharing in the clinical neurosciences. We anticipate
that our proposal will significantly advance our understanding of factors that impact outcome after injury and will
yield a tool that will be useful across the neuroimaging community.
Status | Finished |
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Effective start/end date | 6/1/23 → 5/31/24 |
Funding
- National Institute of Neurological Disorders and Stroke: $898,552.00
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