A Review on the Method of Diagnosing Alzheimer’s Disease using Data Mining

All over the world a large number of people are suffering from brain related diseases. Studying and finding the solutions for those diseases is the requirement of the day. Dementia is one such disease of the brain. This causes loss of cognitive functions such as reasoning, memory and other mental abilities which may be due to trauma or normal ageing. Alzheimer’s disease is one of the types of the dementia which accounts to 60-80% of mental disorders [1].Diagnosis of this disease at an early stage will help the patients to lead a quality life for the remaining tenure of their life. The goal of the paper is to have a review on different neuro psychological tests, the various algorithms used for the purpose of diagnosis, and the tool that may be used for the analysis. Keywords— Alzheimer’s disease, Machine Learning, Weka

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