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   how metaheuristic algorithms can help in feature selection for alzheimer’s diagnosis  
   
نویسنده salami farzaneh ,bozorgi-amiri ali ,tavakkoli-moghaddam reza
منبع international journal of research in industrial engineering - 2023 - دوره : 12 - شماره : 2 - صفحه:197 -204
چکیده    Feature selection is the process of picking the most effective feature among a considerable number of features in the dataset. however, choosing the best subset that gives a higher performance in classification is challenging. this study constructed and validated multiple metaheuristic algorithms to optimize machine learning (ml) models in diagnosing alzheimer’s. this study aims to classify cognitively normal (cn), mild cognitive impairment (mci), and alzheimer’s by selecting the best features. the features include freesurfer features extracted from magnetic resonance imaging (mri) images and clinical data. we have used well-known ml algorithms for classifying, and after that, we used multiple metaheuristic methods for feature selection and optimizing the objective function of the classification. we considered the objective function a macro-average f1 score because of the imbalanced data. our procedure not only reduces the irreverent features but also increases the classification performance. results showed that metaheuristic algorithms could improve the performance of ml methods in diagnosing alzheimer’s by 20%. we found that classification performance can be significantly enhanced by using appropriate metaheuristic algorithms. metaheuristic algorithms can help find the best features for medical classification problems, especially alzheimer’s.
کلیدواژه metaheuristic algorithm ,alzheimer’s disease ,mri ,machine learning ,feature selection ,data mining
آدرس university of tehran, alborz campus, department of industrial engineering, iran, university of tehran, college of engineering, department of industrial engineering, iran, university of tehran, college of engineering, department of industrial engineering, iran
پست الکترونیکی tavakoli@ut.ac.ir
 
     
   
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