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| Name | Class |
|---|---|
| National Institute on Aging (NIA) | NIH |
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The proposed research will use closed-loop transcranial magnetic stimulation (TMS) based on individualized brain networks to establish parameters that can reliably control brain states. This will be tested in healthy aging and mild cognitive impairment (MCI) cohorts. The investigators will study network activation and neural oscillatory mechanisms underlying the network that regulates working memory and then target this network using closed-loop TMS to the Prefrontal Cortex. Investigators will measure the impact of TMS on working memory performance and task-based neural activity. The project will use brain stimulation and network modeling techniques to enhance working memory in healthy older adults and MCI and will demonstrate the value of closed-loop, network-guided TMS for future clinical applications.
Dementia due to Alzheimer's disease (AD) is a leading public health concern in the US with enormous care costs and no effective pharmacotherapy despite multiple clinical trials. Multiple studies have shown mild cognitive impairment (MCI) to be a precursor risk for AD and to be more amenable to intervention. While preclinical studies have shown that directly modulating activity in the prefrontal cortex (PFC) using non-invasive brain stimulation techniques, such as transcranial magnetic stimulation (TMS), can modulate cognitive function in healthy older adults, there is little evidence of reliable efficacy in MCI.
The investigators posit three reasons for this lack of efficacy. First, there is no established means of estimating a reliable biomarker and unique dose-response relationship between TMS intensity and brain activity. Second, standard TMS protocols fail to capture the dynamic nature of cognitive states and the reaction of endogenous brain states to exogenous neuromodulation. Third, no studies using TMS in AD-related populations have accounted for the influence of cerebrovascular disease in the response to TMS. The investigators propose to address these shortcomings by using closed-loop TMS, based on individualized brain networks to establish parameters that can reliably control brain states during normal memory functioning in healthy aging and MCI.
To achieve this goal, the investigators will study network activation and neural oscillatory mechanisms underlying the network that regulates working memory (WM), a cognition function with a reliable prefrontal cortex (PFC) network characterization. The investigators will then target this network using closed-loop TMS to the PFC and measure the impact on WM performance and task-based neural activity. This approach uses concurrent TMS-fMRI to identify dose-response relationships in the working memory network. Next, the investigators apply novel closed-loop TMS to perturb this network using temporally-precise TMS-EEG. Lastly, the investigators will integrate information collected via fMRI and EEG into a single computational framework to model spatiotemporal dynamics of the global brain network and predict the success of the TMS-related response in our MCI cohort. The project will use cutting-edge brain stimulation and network modeling techniques to enhance WM in healthy older adults and MCI and will provide a demonstration of the value of closed-loop, network-guided TMS for future clinical applications.
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| Label | Type | Description | Intervention Names |
|---|---|---|---|
| TMS-Randomized | Experimental | Three different closed-loop conditions will be tested, each triggered by the presence of a sustained period of alpha-band power. In the first condition, arrhythmic TMS trains with a stochastic (randomized) inter-pulse interval, will be used to disrupt cortical alpha oscillations and thus be expected to enhance memory performance. |
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| TMS-Ordered | Experimental | Three different closed-loop conditions will be tested, each triggered by the presence of a sustained period of alpha-band power. In the second condition, rhythmic (ordered) alpha-frequency TMS trains, with the expectation that this alpha stimulation will further entrain a synchronization during the task and thereby worsen memory performance. |
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| TMS-Sham | Sham Comparator | Three different closed-loop conditions will be tested, each triggered by the presence of a sustained period of alpha-band power. In a third condition, sham stimulation will be delivered at the same randomized inter-pulse interval, but with no TMS delivered to the brain. |
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| Name | Type | Description | Arm Group Labels | Other Names |
|---|---|---|---|---|
| Transcranial Magnetic Stimulation | Device | Transcranial magnetic stimulation (TMS) is a noninvasive procedure that uses magnetic fields to stimulate nerve cells in the brain to improve a variety of cognitive conditions, and to probe the dynamics of normal brain function. |
| Measure | Description | Time Frame |
|---|---|---|
| Working Memory Task | The difference in memory accuracy between TMS conditions (random vs. ordered vs. sham stimulation) on a working memory task. Each trial of the task consists of stimulus presentation of an array of letters, a delay period in which subjects alphabetize the letters, and probe period where subjects indicate whether the number corresponds to the alphabetized position of the letter probe presented. Memory is subsequently assessed as a function of TMS condition. | Collected during TMS-EEG (Day 4) |
| Functional network connectivity | Functional network connectivity/activity is estimated by comparing the hemodynamic time courses of two or more regions of the brain. The correlation between the time courses of each pair of regions is termed functional network connectivity. The Working Memory Network (WMN) is identified by comparing fMRI-based functional network connectivity for high vs low working memory load (e.g., remembering 4 versus 3 items). | Collected during the initial neuroimaging session (Day 2) |
| Vascular density (VAD) | This measure of neurovascular brain health, vascular density (VAD), as estimated by an automated method of segmenting veins with a magnetic resonance imaging (MRI) sequence known as susceptibility weighted imaging. This measure can be used to estimate the dilation of cerebral veins, and therefore VAD. | Collected during the second neuroimaging session (Day 3) |
| EEG-based connectivity | EEG data will be source reconstructed to a fine-grained grid and timecourses of the solution points are averaged per region and per subject. The imaginary part of the coherence (iCoh) of averaged EEG source signals will be assessed within the alpha and theta frequency bands to build EEG-based connectivity matrices ("connectomes") for alpha- and theta-based connectivity, for each subject. | Collected during TMS-EEG (Day 4) |
| Measure | Description | Time Frame |
|---|---|---|
| Montreal Cognitive Assessment (MoCA) | The MoCA was designed as a rapid screening instrument for mild cognitive dysfunction. This widespread tool is used to assesses different cognitive domains: attention and concentration, executive functions, memory, language, visuoconstructional skills, conceptual thinking, calculations, and orientation. The principle outcome measure is a summary score combining performance on each subtest. Scores range from 0 to 30. A higher score indicates intact cognitive functions. |
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Inclusion Criteria:
Exclusion Criteria:
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| Name | Role | Phone | Extension | |
|---|---|---|---|---|
| Simon W Davis, PhD | Contact | 9196841243 | simon.davis@duke.edu | |
| Emily Finch, BA | Contact | 9196682842 | emily.finch@duke.edu |
| Name | Affiliation | Role |
|---|---|---|
| Simon W Davis, PhD | Duke University | Principal Investigator |
| Andy Liu, MD | Duke University | Principal Investigator |
| Facility | Status | City | State | ZIP | Country | Contacts |
|---|---|---|---|---|---|---|
| Duke University Hospital | Recruiting | Durham | North Carolina | 27710 | United States |
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| ID | Term |
|---|---|
| D060825 | Cognitive Dysfunction |
| ID | Term |
|---|---|
| D003072 | Cognition Disorders |
| D019965 | Neurocognitive Disorders |
| D001523 | Mental Disorders |
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| ID | Term |
|---|---|
| D050781 | Transcranial Magnetic Stimulation |
| ID | Term |
|---|---|
| D055909 | Magnetic Field Therapy |
| D013812 | Therapeutics |
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The study has three Aims and thus three models.
For Aim 1, the primary outcome measure is fMRI BOLD. Researchers will estimate the dose-response relationship between TMS intensity and BOLD response in two cortical sites for response to TMS.
For Aim 2 the primary outcome measure is impact of closed-loop TMS treatment on working memory task performance.
For Aim 3, the primary outcome measure is the strength of mediation of brain health (e.g., vascular density) predictors of cognition.
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This is a within-subjects design, such that both active and sham stimulation (i.e., masking) trials will occur in all subjects.
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| Collected during the initial screening visit (Day 1) |
| National Institutes of Health (NIH) Toolbox Cognitive Battery | The primary outcome measure of the NIH Toolbox is a Crystallized or Fluid Intelligence score. Fluid intelligence involves comprehension, reasoning and problem solving, while crystallized intelligence involves recalling stored knowledge and past experiences. These scores are normalized and scaled to reflect a 1-100 range. Higher scores indicate better performance. | Collected during the initial screening visit (Day 1) |
| Hopkins Verbal Learning Test (HVLT-2) | The Hopkins Verbal Learning Test (HVLT-R) consists of memorization of a list of words to test the ability to recall immediately after memorization (immediate recall) and after a 20-minute delay (delayed recall). These scores are normalized to reflect a 1-100 percentile range. Higher scores indicate better performance. | Collected during the initial screening visit (Day 1) |
| Brief Visuospatial Memory Test (BVMT-R) | The BVMT-R is a commonly used assessment tool to measure visuospatial learning and memory. A visual display of six simple figures arranged in a 2 × 3 matrix is shown to participants for three consecutive 10-second trials. Scoring of the immediate and delayed recall as well as copy trials are based on the accuracy of the drawings and the location of the figures. These scores are normalized to reflect a 1-100 percentile range. Higher scores indicate better performance. | Collected during the initial screening visit (Day 1) |
| Number Span Forwards/ Backwards | Span tests measure the ability of a subject to remember a series of numbers in forward or reverse order. These scores are normalized to reflect a 1-100 percentile range. Higher scores indicate better performance. | Collected during the initial screening visit (Day 1) |
| Category & Phonemic Verbal Fluency | Fluency tests measure the participant's ability to generate new exemplars for each categorical (e.g., farm animals) or phonemic (e.g., words starting with "b") prompts. The number of exemplars generated is recorded as the primary outcome for this test. These scores are normalized to reflect a 1-100 percentile range. Higher scores indicate better performance. | Collected during the initial screening visit (Day 1) |
| Trail Making Test | The purpose of the "Trails" test is to gauge the ability of the participant to trace paths between a series of letters and numbers on a sheet of paper, and can provide insights into a person's cognitive function based on how fast they can search, scan, and process visual information. These scores are normalized to reflect a 1-100 percentile range. Higher scores indicate better performance. | Collected during the initial screening visit (Day 1) |