A computer-aided diagnosis (CAD) system that employs a super learner to diagnose the presence or absence of a disease has been developed. Each clinical dataset is preprocessed and split into training set (60%) and testing set (40%). A wrapper approach that uses three bioinspired algorithms, namely, cat swarm optimization (CSO), krill herd (KH) ,and bacterial foraging optimization (BFO) with the classification accuracy of support vector machine (SVM) as the fitness function has been used for feature selection. The selected features of each bioinspired algorithm are stored in three separate databases. The features selected by each bioinspired algorithm are used to train three back propagation neural networks (BPNN) independently using the con...
AbstractFeature Selection in Data Mining refers to an art of minimizing the number of inputs under e...
This paper offers a hybrid approach that uses the artificial bee colony (ABC) algorithm for feature ...
In this work the use of machine learning in medicine, with a particular focus on liver disease, is i...
In the health sector, the computer-aided diagnosis (CAD) system is a rapidly growing technology beca...
AbstractClinical feature selection problem is the task of selecting and identifying a subset of info...
Abstract. Biomedical datasets pose a unique challenge to machine learning and data mining algorithms...
In the field of machine learning, classification is the essential task that predicts the target clas...
Data analysis in medicine is becoming more and more frequent to clarify diagnoses, refine research m...
Abstract This paper describes the BiomedTK software framework, created to perform massive exploratio...
Availability of high dimensional biological datasets such as from gene expression, proteomic, and me...
The classification is a one of the most indispensable domains in the data mining and machine learnin...
The volume of data in the medical domain has been on the rise with improved and accessible technolog...
Artificial intelligence is a spectacular part of computer engineering that has earned a compelling d...
Current diagnostic systems in order to identify cardiovascular diseases (CVDs) such as Echocardiogra...
In this study we report the advances in supervised learning methods that have been devised to analyz...
AbstractFeature Selection in Data Mining refers to an art of minimizing the number of inputs under e...
This paper offers a hybrid approach that uses the artificial bee colony (ABC) algorithm for feature ...
In this work the use of machine learning in medicine, with a particular focus on liver disease, is i...
In the health sector, the computer-aided diagnosis (CAD) system is a rapidly growing technology beca...
AbstractClinical feature selection problem is the task of selecting and identifying a subset of info...
Abstract. Biomedical datasets pose a unique challenge to machine learning and data mining algorithms...
In the field of machine learning, classification is the essential task that predicts the target clas...
Data analysis in medicine is becoming more and more frequent to clarify diagnoses, refine research m...
Abstract This paper describes the BiomedTK software framework, created to perform massive exploratio...
Availability of high dimensional biological datasets such as from gene expression, proteomic, and me...
The classification is a one of the most indispensable domains in the data mining and machine learnin...
The volume of data in the medical domain has been on the rise with improved and accessible technolog...
Artificial intelligence is a spectacular part of computer engineering that has earned a compelling d...
Current diagnostic systems in order to identify cardiovascular diseases (CVDs) such as Echocardiogra...
In this study we report the advances in supervised learning methods that have been devised to analyz...
AbstractFeature Selection in Data Mining refers to an art of minimizing the number of inputs under e...
This paper offers a hybrid approach that uses the artificial bee colony (ABC) algorithm for feature ...
In this work the use of machine learning in medicine, with a particular focus on liver disease, is i...