Through our Natural History of Stroke study(Protocol No. 01-N-0007; Clinicaltrials.gov No. NCT00009243) we have studied greater than 2,700 participants in order to learn more about stroke and obtain information that may serve as the basis for future investigations. This protocol has allowed us to 1) establish a registry of patients with cerebrovascular disease (stroke); 2) characterize the natural history of acute stroke and transient ischemic attacks (TIA) an interruption of blood flow to the brain that causes stroke symptoms for a short period of time); and 3) evaluate the data to generate ideas for future studies. MRI has improved our ability to diagnose and stratify patients with acute stroke by providing highly sensitive and specific markers of the disease. Imaging based phenotypes of stroke increase objectivity, however they remain a gross oversimplification of the complex biological system set in motion by a stroke. Next generation sequencing, with unprecedented improvement in throughput and speed, provides an opportunity to probe the complex biological response to stroke in patients stratified using acute MRI. Based on the premise that the biology responsible for the imaging abnormalities will be reflected in differential gene expression and micro RNA in peripheral blood, next generation sequencing will be used to identify and characterize the biological systems relevant to the imaging phenotype. A systems biology approach will be developed to better describe stroke, and hopefully, better differentiate those patients in who we can expect a favorable response to an intervention, from those at risk of further deterioration. Through collaboration with NINR, we are developing an approach to sequencing single monocytes in the blood to better characterize the acute immune response and factors that may contributed to outcome. We have created a unique and comprehensive dataset of acute stroke MRIs (Lesion Evolution in Stroke and Ischemia On Neuroimaging LESION) analysis. This dataset of acute stroke MRI affords unprecedented opportunities for robust statistical analysis of the incidence of ischemia and reperfusion as related to time from stroke onset. We are currently in the process of extending this dataset to include patients with minor stroke and TIA. Imaging based predictors of stroke outcome and response to therapy are necessary for the utility and validation of imaging biomarkers in drug development. Useful models are those that can distinguish patients destined for good outcomes versus poor outcomes, those who received effective therapy from those who did not, and treatment responders from non-responders. We are investigating several predictive models. These prediction models may be useful for the development, selection and use of acute therapies. We found that change in lesion volume from pre-treatment DWI to post-treatment FLAIR can discriminate between patients destined for good and poor outcomes when treated with effective acute stroke therapy, i.e., intravenous tPA. Thus, lesion volume change may be a useful marker of clinical response in the stroke therapy development. Following multiple positive trials of mechanical embolectomy to treat large vessel occlusion stroke, a significant increase in the population of patients receiving this therapy at our centers has occurred. Using MRI, we have observed injury secondary to embolectomy that may be a form of reperfusion injury that could possibly be prevented. We are currently studying the imaging markers using data collected in this project through a prospective sub-study termed GUARDS. The goal of this effort is to prospectively study an imaging marker of secondary injury to develop a trial to protect the brain prior to embolectomy and for patients in whom embolectomy can not be accomplished. Over the past five years, the rate of thrombolytic therapy has also increased dramatically at our center, we believe owing in part to a higher level of surveillance made possible by the NINDS Stroke Team and MRI diagnostic approach. Approximately 1 in 2 patients treated may be categorized as minor stroke, and 1 in 4 have symptoms that may not be disabling. Retrospective analysis suggests that imaging targets for thrombolytic therapy do not differ between those with and without disabling deficits. The recent failure of a clinical trial for minor stroke has created controversy in the field, with some practitioners arguing little is to be gained, and much to be risked, by treating minor (non-disabling) stroke with tPA. We believe MRI may be the best way to select those patients who could benefit. The trend toward equipoise in the program and field argues for a trial to test a thrombolytic in minor stroke selected using MRI. Efforts are ongoing using data collected in this project to define the population and design the trial. As part of the Stroke Branch, the Neuro Vascular Brain Imaging Unit (NVBI) heavily utilizes the data collected through the Natural History of Stroke protocol. The NVBI has taken on the big data challenge of co-registering and quantitatively processing the MRI scans acquired as part of the natural history study. In doing so the NVBI has created an interface, referred to as the pipeline, that leverages the massive amount of information contained in the natural history dataset to perform scientific hypothesis testing. The pipeline is available to the entire Stroke Branch as a research resource. NVBI has been using the natural history imaging pipeline to perform quantitative blood-brain permeability imaging. Using a novel post processing method, a measure of blood brain barrier integrity can be extracted from the existing dataset. This has lead to new insights into the pathophysiology of acute and chronic cerebrovascular disease that has the potential to influence clinical care. Data collected as part of this project has been leveraged by NVBI to help develop a prospective study of blood-brain-barrier disruption and the progression of white matter disease.

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12
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2018
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Nadareishvili, Zurab; Luby, Marie; Leigh, Richard et al. (2018) An MRI Hyperintense Acute Reperfusion Marker Is Related to Elevated Peripheral Monocyte Count in Acute Ischemic Stroke. J Neuroimaging 28:57-60
Hitomi, Emi; Simpkins, Alexis N; Luby, Marie et al. (2018) Blood-ocular barrier disruption in patients with acute stroke. Neurology 90:e915-e923
Heo, Hye-Young; Zhang, Yi; Burton, Tina M et al. (2017) Improving the detection sensitivity of pH-weighted amide proton transfer MRI in acute stroke patients using extrapolated semisolid magnetization transfer reference signals. Magn Reson Med 78:871-880
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Bernstock, Joshua D; Ye, Daniel G; Griffin, Allison et al. (2017) Cerebral Ischemia Increases Small Ubiquitin-Like Modifier Conjugation within Human Penumbral Tissue: Radiological-Pathological Correlation. Front Neurol 8:738
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Alqahtani, Saeed A; Luby, Marie; Nadareishvili, Zurab et al. (2017) Perfusion Deficits and Association with Clinical Outcome in Patients with Anterior Choroidal Artery Stroke. J Stroke Cerebrovasc Dis 26:1755-1759
Hollander, M Christine; Latour, Lawrence L; Yang, Dan et al. (2017) Attenuation of Myeloid-Specific TGF? Signaling Induces Inflammatory Cerebrovascular Disease and Stroke. Circ Res 121:1360-1369
Simpkins, Alexis NĂ©tis; Dias, Christian; Norato, Gina et al. (2017) Early Change in Stroke Size Performs Best in Predicting Response to Therapy. Cerebrovasc Dis 44:141-149

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