Purpose: Classic statistical and machine learning models such as support vector machines (SVMs) can be used to predict cancer outcome, but often only perform well if all the input variables are known, which is unlikely in the medical domain. Bayesian network (BN) models have a natural ability to reason under uncertainty and might handle missing data better. In this study, the authors hypothesize that a BN model can predict two-year survival in non-small cell lung cancer (NSCLC) patients as accurately as SVM, but will predict survival more accurately when data are missing.status: publishe
International audiencePURPOSE Administering systemic anticancer treatment (SACT) to patients near de...
Background and Objectives : recent years, considerable attention has been paid to statistical mode...
Purpose. For individualized follow-up, accurate prediction of locoregional recurrence (LRR) and seco...
Purpose: Classic statistical and machine learning models such as support vector machines (SVMs) can ...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
PURPOSE The TNM classification system is used for prognosis, treatment, and research. Regular update...
Purpose: Tools for survival prediction for non-small cell lung cancer (NSCLC) patients treated with ...
Cancer is the leading cause of death in Taiwan, according to the Ministry of Health and Welfare (201...
BACKGROUND: Breast cancer is one of the most common cancers with a high mortality rate among women....
IntroductionIdentifying high-risk lung cancer individuals at an early disease stage is the most effe...
PurposeA situational awareness Bayesian network (SA-BN) approach is developed to improve physicians'...
Machine learning is an important artificial intelligence technique that is widely applied in cancer ...
Accurate modelling of time-to-event data is of particular importance for both exploratory and predic...
International audiencePURPOSE Administering systemic anticancer treatment (SACT) to patients near de...
Background and Objectives : recent years, considerable attention has been paid to statistical mode...
Purpose. For individualized follow-up, accurate prediction of locoregional recurrence (LRR) and seco...
Purpose: Classic statistical and machine learning models such as support vector machines (SVMs) can ...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
PURPOSE The TNM classification system is used for prognosis, treatment, and research. Regular update...
Purpose: Tools for survival prediction for non-small cell lung cancer (NSCLC) patients treated with ...
Cancer is the leading cause of death in Taiwan, according to the Ministry of Health and Welfare (201...
BACKGROUND: Breast cancer is one of the most common cancers with a high mortality rate among women....
IntroductionIdentifying high-risk lung cancer individuals at an early disease stage is the most effe...
PurposeA situational awareness Bayesian network (SA-BN) approach is developed to improve physicians'...
Machine learning is an important artificial intelligence technique that is widely applied in cancer ...
Accurate modelling of time-to-event data is of particular importance for both exploratory and predic...
International audiencePURPOSE Administering systemic anticancer treatment (SACT) to patients near de...
Background and Objectives : recent years, considerable attention has been paid to statistical mode...
Purpose. For individualized follow-up, accurate prediction of locoregional recurrence (LRR) and seco...