In the current study, we have exemplified the use of Bayesian neural networks for breast cancer classification using the evidence procedure. The optimal Bayesian network has 81% overall accuracy in correctly classifying the true status of breast cancer patients, 59% sensitivity in correctly detecting the malignancy and 83% specificity in correctly detecting the non-malignancy. The area under the receiver operating characteristic curve (0.7940) shows that this is a moderate classification model
Breast cancer is the most common cause of cancer in women. Histopathological imaging data can provid...
Aim To predict the presence of breast cancer by using a pattern recognition network with optimal fe...
Machine learning approaches are used for building systems that can solve various diagnostic problems...
Being in the era of Big data, the applicability and importance of data-driven models like artifi...
This paper describes the design, implementation, and preliminary evaluation of a Bayesian network th...
Abstract: Breast Cancer (BC) is one of the most extensive diseases worldwide. Proper and earlier dia...
The problem of imbalanced class distribution or small datasets is quite frequent in certain fields e...
This work develops an Artificial Neural Network (ANN) model for performing Breast Cancer (BC) classi...
Breast cancer is one of the most important medical problems. In this paper, we report the results of...
The paper employed Bayesian network (BN) modelling approach to discover causal dependencies among di...
Carcinoma known as breast cancer is a significant common cancer among women worldwide. In line with ...
Threat of breast cancer is a frightening type and threatens the female population worldwide. Early d...
In this paper, we applied Bayesian multi-layer perceptrons (MLP) using the evidence procedure to pre...
The detection and diagnosis of Breast cancer at an early stage is a challenging task. With the incre...
Breast cancer (BC) is the most commonly found disease among women all over the world. The early diag...
Breast cancer is the most common cause of cancer in women. Histopathological imaging data can provid...
Aim To predict the presence of breast cancer by using a pattern recognition network with optimal fe...
Machine learning approaches are used for building systems that can solve various diagnostic problems...
Being in the era of Big data, the applicability and importance of data-driven models like artifi...
This paper describes the design, implementation, and preliminary evaluation of a Bayesian network th...
Abstract: Breast Cancer (BC) is one of the most extensive diseases worldwide. Proper and earlier dia...
The problem of imbalanced class distribution or small datasets is quite frequent in certain fields e...
This work develops an Artificial Neural Network (ANN) model for performing Breast Cancer (BC) classi...
Breast cancer is one of the most important medical problems. In this paper, we report the results of...
The paper employed Bayesian network (BN) modelling approach to discover causal dependencies among di...
Carcinoma known as breast cancer is a significant common cancer among women worldwide. In line with ...
Threat of breast cancer is a frightening type and threatens the female population worldwide. Early d...
In this paper, we applied Bayesian multi-layer perceptrons (MLP) using the evidence procedure to pre...
The detection and diagnosis of Breast cancer at an early stage is a challenging task. With the incre...
Breast cancer (BC) is the most commonly found disease among women all over the world. The early diag...
Breast cancer is the most common cause of cancer in women. Histopathological imaging data can provid...
Aim To predict the presence of breast cancer by using a pattern recognition network with optimal fe...
Machine learning approaches are used for building systems that can solve various diagnostic problems...