Classification and Diagnosis of Alzheimer’s Disease using Magnetic Resonance Imaging

- Authors: K.R. Shobha1, Vaishali Gajendra Shende2, Anuradha Patil3, Jagadeesh Kumar Ega4, Kaushalendra Kumar5
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View Affiliations Hide Affiliations1 Department of Electronics and Telecommunication Engineering, Ramaiah Institute of Technology, MSR Nagar, MSRIT Post, Bangalore, Karnataka, India 560054 2 East Point College of Engineering and Technology Bangalore, East Point Campus, Virgo Nagar Post, Avalahalli, Bengaluru, Karnataka 560049, India 3 East Point College of Engineering and Technology Bangalore, East Point Campus, Virgo Nagar Post, Avalahalli, Bengaluru, Karnataka 560049, India 4 Chaitanya (Deemed to be University), Hanamkonda, Telangana State, India 5 Department of Bio-Science, Galgotias University, Greater Noida. Uttar Pradesh, India-201310
- Source: AI and IoT-based intelligent Health Care & Sanitation , pp 269-284
- Publication Date: April 2023
- Language: English


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Different types of brain illnesses can affect many parts of the brain at the same time. Alzheimer's disease is a chronic illness characterized by brain cell deterioration, which results in memory loss. Amnesia and ambiguity are two of the most prevalent Alzheimer's disease symptoms, and both are caused by issues with cognitive reasoning. This paper proposes several feature extractions as well as Machine Learning (ML) algorithms for disease detection. The goal of this study is to detect Alzheimer's disease using magnetic resonance imaging (MRI) of the brain. The Alzheimer's disease dataset was obtained from the Kaggle website. Following that, the unprocessed MRI picture is subjected to several pre-processing procedures. Feature extraction is one of the most crucial stages in extracting important attributes from processed images. In this study, wavelet and texture-based methods are used to extract characteristics. Gray Level Co-occurrence Matrix (GLCM) is utilized for the texture approach, and HAAR is used for the wavelet method. The extracted data from both procedures are then fed into ML algorithms. The Support Vector Machine (SVM) and Linear Discriminant Analysis (LDA) are used in this investigation. The values of the confusion matrix are utilized to identify the best technique. nbsp;
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