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What type of signal do MRI Magnetic Resonance Imaging Sensors detect in order to create an image of the brain? 

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01 Jan 1998
46 Citations
Echo-planar imaging therefore provides functional and anatomical information beyond pixel brightness of classical magnetic resonance imaging.
These techniques may be used to improve image quality and, in some cases, increase the sensitivity and the specificity of magnetic resonance imaging of the brain and spine.
The results of simulations and imaging experiments are presented which demonstrate that this strategy improves both the signal-to-noise ratio and resolution of magnetic resonance images.
This special issue hoped to highlight “MRI in Neuroscience.” Representative research reports covering the latest advancements in magnetic resonance acquisition or image processing, applications in neuroscience research, and clinical neurological applications are presented in this issue.
The proposed method gives reliable results for making quantitative analysis and diagnosis of tissues from Magnetic Resonance brain image slices.
This facilitates their potential applications in magnetic resonance imaging for medical diagnosis.

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