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Principal Investigator  
Principal Investigator's Name: Arshdeep Kaur
Institution: Central University of Punjab
Department: Computer Science and Technology
Country:
Proposed Analysis: Identifying Combinatorics Significance for Classification of Alzheimer Disease. Our study will Focus on Alzheimer's disease. We intend to develop a model using Machine Learning and CNN to diagnose Alzheimer’s illness. We want to check the dependency among the variables and the role of each variable on Alzheimer Disease. Medical imaging systems for AD have been considerably enhanced by machine learning and deep learning approaches, which offer diagnostic performance that is nearly human-level. However, the existence of highly correlated features in the brain structure poses the biggest challenge to multi-class categorization. Our goal is to find those features which are of high importance. After getting the important features we will make a model and check its effect
Additional Investigators  
Investigator's Name: Satwinder Singh
Proposed Analysis: Identifying Combinatorics Significance for Classification of Alzheimer Disease. Our study will Focus on Alzheimer's disease. We intend to develop a model using Machine Learning and CNN to diagnose Alzheimer’s illness. We want to check the dependency among the variables and the role of each variable on Alzheimer Disease. Medical imaging systems for AD have been considerably enhanced by machine learning and deep learning approaches, which offer diagnostic performance that is nearly human-level. However, the existence of highly correlated features in the brain structure poses the biggest challenge to multi-class categorization. Our goal is to find those features which are of high importance. After getting the important features we will make a model and check its effect