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      Neurogenesis and Proliferation of Neural Stem/Progenitor Cells Conferred by Artesunate via FOXO3a/p27Kip1 Axis in Mouse Stroke Model

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          Heart Disease and Stroke Statistics—2020 Update

          Circulation
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            The science of stroke: mechanisms in search of treatments.

            This review focuses on mechanisms and emerging concepts that drive the science of stroke in a therapeutic direction. Once considered exclusively a disorder of blood vessels, growing evidence has led to the realization that the biological processes underlying stroke are driven by the interaction of neurons, glia, vascular cells, and matrix components, which actively participate in mechanisms of tissue injury and repair. As new targets are identified, new opportunities emerge that build on an appreciation of acute cellular events acting in a broader context of ongoing destructive, protective, and reparative processes. The burden of disease is great, and its magnitude widens as a role for blood vessels and stroke in vascular and nonvascular dementias becomes more clearly established. This review then poses a number of fundamental questions, the answers to which may generate new directions for research and possibly new treatments that could reduce the impact of this enormous economic and societal burden.
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              A semiautomated method for measuring brain infarct volume.

              An accurate, reproducible method for determining the infarct volumes of gray matter structures is presented for use with presently available image analysis systems. Areas of stained sections with optical densities above that of a threshold value are automatically recognized and measured. This eliminates the potential error and bias inherent in manually delineating infarcted regions. Moreover, the volume of surviving normal gray matter is determined rather than that of the infarct. This approach minimizes the error that is introduced by edema, which distorts and enlarges the infarcted tissue and surrounding white matter.
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                Author and article information

                Contributors
                Journal
                Molecular Neurobiology
                Mol Neurobiol
                Springer Science and Business Media LLC
                0893-7648
                1559-1182
                August 2022
                May 21 2022
                August 2022
                : 59
                : 8
                : 4718-4729
                Article
                10.1007/s12035-021-02710-5
                36580196
                a490269b-503b-4705-883f-09155b8024fd
                © 2022

                https://www.springer.com/tdm

                https://www.springer.com/tdm

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