The Support Vector Regression (SVR) model has been broadly used for response prediction. However, few researchers have used SVR for survival analysis. In this study, a new SVR model is proposed and SVR with different kernels and the traditional Cox model are trained. The models are compared based on different performance measures. We also select the best subset of features using three feature selection methods: combination of SVR and statistical tests, univariate feature selection based on concordance index, and recursive feature elimination. The evaluations are performed using available medical datasets and also a Breast Cancer (BC) dataset consisting of 573 patients who visited the Oncology Clinic of Hamadan province in Iran. Results show...
BackgroundAccurately predicting the survival rate of breast cancer patients is a major issue for can...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Background and Objectives : recent years, considerable attention has been paid to statistical mode...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Developing a prediction model from risk factors can provide an efficient method to recognize breast ...
The application of machine learning models for prediction and prognosis of disease development has b...
With widespread availability of omics profiling techniques, the analysis and interpretation of high-...
Breast cancer is the second largest cause of cancer deaths among women. At the same time, it is also...
The collection of large volumes of medical data has offered an opportunity to develop prediction mod...
Cancer is the world's second largest cause of death. In 2018, 9.6 million people died from cancer. I...
Abstract Background Breast cancer is one of the most common diseases in women worldwide. Many studie...
BACKGROUND: Breast cancer is one of the most common diseases in women worldwide. Many studies have b...
This study evaluates several feature ranking techniques together with some classifiers based on mach...
BACKGROUND: Breast cancer is one of the most common cancers with a high mortality rate among women....
Abstract: Breast cancer is one of the deadliest diseases, claiming approximately 627,000 lives world...
BackgroundAccurately predicting the survival rate of breast cancer patients is a major issue for can...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Background and Objectives : recent years, considerable attention has been paid to statistical mode...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Developing a prediction model from risk factors can provide an efficient method to recognize breast ...
The application of machine learning models for prediction and prognosis of disease development has b...
With widespread availability of omics profiling techniques, the analysis and interpretation of high-...
Breast cancer is the second largest cause of cancer deaths among women. At the same time, it is also...
The collection of large volumes of medical data has offered an opportunity to develop prediction mod...
Cancer is the world's second largest cause of death. In 2018, 9.6 million people died from cancer. I...
Abstract Background Breast cancer is one of the most common diseases in women worldwide. Many studie...
BACKGROUND: Breast cancer is one of the most common diseases in women worldwide. Many studies have b...
This study evaluates several feature ranking techniques together with some classifiers based on mach...
BACKGROUND: Breast cancer is one of the most common cancers with a high mortality rate among women....
Abstract: Breast cancer is one of the deadliest diseases, claiming approximately 627,000 lives world...
BackgroundAccurately predicting the survival rate of breast cancer patients is a major issue for can...
Due to the difficulties of outlier and skewed data, the prediction of breast cancer survivability ha...
Background and Objectives : recent years, considerable attention has been paid to statistical mode...