Asian Journal of Electrical Sciences (AJES)
Identification of Alzheimer Disease: A Literature SurveyAuthor : M. Natarajan and S. Sathiamoorthy
Volume 7 No.2 July-December 2018 pp 46-50
Medical imaging plays a noteworthy part in the field of medicine. Alzheimer’s disease, a neurological disorder wherein the demise of brain cells roots loss of memory, reasoning decline and the disease begins mild and becomes progressively worse, and low brain activity and blood flow causes the disease. In this paper, a detailed literature survey on various image processing techniques has been used for identifying Alzheimer’s disease from brain image dataset. This survey helps the researchers in this domain to focus their research interest to the next level.
Alzheimer Disease, Dementia, Mild Cognitive Impairment, Support Vector Machine
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