Neurophysiological Marker of ADHD in Children
Neurophysiological Marker of Attention Deficit Hyperactivity Disorder in Children
Study Overview
Status
Status
Conditions
Conditions
Intervention / Treatment
Intervention / Treatment
- Diagnostic test: electroencephalography absolute delta power
- Diagnostic test: electroencephalography relative delta power
- Diagnostic test: electroencephalography absolute theta power
- Diagnostic test: electroencephalography relative theta power
- Diagnostic test: electroencephalography absolute slow alpha power
- Diagnostic test: electroencephalography relative slow alpha power
- Diagnostic test: electroencephalography absolute fast alpha power
- Diagnostic test: electroencephalography relative fast alpha power
- Diagnostic test: electroencephalography absolute beta power
- Diagnostic test: electroencephalography relative beta power
- Diagnostic test: Korean ADHD rating scale
- Diagnostic test: Korean Version of Diagnostic Interview Schedule for Children Version IV
Detailed Description
Study Type
Study Type
Enrollment (Actual)
Enrollment
Contacts and Locations
Study Contact
Study Contact
- Name: Jun Won Kim, M.D. Ph.D.
- Phone Number: +82-53-630-4780
- Email: f_affection@naver.com
Study Locations
-
-
Nam-gu
-
Daegu, Nam-gu, Korea, Republic of, 42471
- Daegu Catholic University Medical Center
-
-
Participation Criteria
Eligibility Criteria
Eligibility Criteria
Ages Eligible for Study
Accepts Healthy Volunteers
Sampling Method
Study Population
Description
Inclusion Criteria:
- Participants between 7 and 12 years of age diagnosed with ADHD according to the DSM-5 criteria were included in the study
Exclusion Criteria:
- Children with a history of brain damage, neurological disorders, genetic disorders, substance dependence, epilepsy, or any other mental disorder were excluded from participation.
- Children with an IQ of 70 or lower according to the Korean-Wechsler Intelligence Scale for Children (Fourth Edition) or who were receiving drug treatment were also excluded from this study
Study Plan
How is the study designed?
Design Details
- Observational Models: Case-Only
- Time Perspectives: Retrospective
Number of groups / cohorts
Cohorts and Interventions
Group / CohortGroup / Cohort |
Intervention / TreatmentIntervention / Treatment |
|---|---|
|
ADHD
|
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
The KARS is a standardized screening tool for ADHD in Korean children and rating scale completed by the parents.
The DISC-IV is a structured diagnostic tool that was developed for use in epidemiological studies in children and adolescents
|
|
NT NeuroTypical
|
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
The KARS is a standardized screening tool for ADHD in Korean children and rating scale completed by the parents.
The DISC-IV is a structured diagnostic tool that was developed for use in epidemiological studies in children and adolescents
|
|
ADHD NOS
|
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
We used MATLAB 7.0.1 (Math Works, Natick, MA, USA) and the EEGLAB toolbox to pre-process and analyze the EEG recordings.
First, the EEG data were down-sampled to 250 Hz.
Next, the EEG data were detrended and mean-subtracted to remove the DC component.
A 1-Hz high-pass filter and a 60-Hz notch filter were applied to remove eye and electrical noise.
Next, independent component analysis (ICA) was performed to remove the well-defined sources of artifacts.
ICA has been shown to reliably isolate artifacts caused by eye and muscle movements and heart noise (23).
Finally, clinical psychiatrists and EEG experts visually inspected the corrected EEGs.
For the analysis, we selected more than two minutes of artifact-free EEG readings from the three-minute recordings
The KARS is a standardized screening tool for ADHD in Korean children and rating scale completed by the parents.
The DISC-IV is a structured diagnostic tool that was developed for use in epidemiological studies in children and adolescents
|
What is the study measuring?
Primary Outcome Measures
Primary Outcome Measures
Outcome Measure |
Measure Description |
Time Frame |
|---|---|---|
|
QEEG topographical plots of the results of the statistical comparisons to normative values (z-scores) using Neuroguide software
Time Frame: through study completion, an average of 1 year
|
The investigators measures QEEG on first outpatient clinic and conduct topography for mapping
|
through study completion, an average of 1 year
|
Collaborators and Investigators
Sponsor
Sponsor
Study record dates
Study Major Dates
Study Start (Actual)
Study Start
Primary Completion (Actual)
Primary Completion
Study Completion (Actual)
Study Completion
Study Registration Dates
First Submitted
First Submitted
First Submitted That Met QC Criteria
First Submitted That Met QC Criteria
First Posted (Actual)
First Posted
Study Record Updates
Last Update Posted (Actual)
Last Update Posted
Last Update Submitted That Met QC Criteria
Last Update Submitted That Met QC Criteria
Last Verified
Last Verified
More Information
Terms related to this study
Keywords
Additional Relevant MeSH Terms
Other Study ID Numbers
Other Study ID Numbers
- CR-18-096
Plan for Individual participant data (IPD)
Plan to Share Individual Participant Data (IPD)?
IPD Plan Description
Drug and device information, study documents
Studies a U.S. FDA-regulated drug product
Studies a U.S. FDA-regulated device product
This information was retrieved directly from the website clinicaltrials.gov without any changes. If you have any requests to change, remove or update your study details, please contact register@clinicaltrials.gov. As soon as a change is implemented on clinicaltrials.gov, this will be updated automatically on our website as well.
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