In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and making treatment selection recommendations for lung cancer. We have carried out two sets of experiments on the English Lung Cancer Dataset. For 1-year-survival prediction, the Naïve Bayes (NB) algorithm achieved an area under the curve value of 81%, outperforming the Bayesian Networks learned by the M(3) and K2 structure learning algorithms. For treatment recommendation, the Bayesian Network, whose structure was learned by the MC(3) algorithm, has marginally outperformed NB, based on producing concordant results with the recorded treatments in the dataset. We observed that in cases where the classifier recommendations were discordant with the r...
International audiencePURPOSE Administering systemic anticancer treatment (SACT) to patients near de...
Purpose: Tools for survival prediction for non-small cell lung cancer (NSCLC) patients treated with ...
We apply a generalized Bayesian age–period–cohort (APC) model to a data-set on lung cancer mortality...
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: Classic statistical and machine learning models such as support vector machines (SVMs) can ...
IntroductionIdentifying high-risk lung cancer individuals at an early disease stage is the most effe...
Abstract Background Statistical learning (SL) techniques can address non-linear relationships and sm...
Non-small cell lung cancer accounts for the most cancer fatalities worldwide with a 5-year survival ...
Cancer is the leading cause of death in Taiwan, according to the Ministry of Health and Welfare (201...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
Bayesian reasoning, survival analysis and multi-state models are used to assess survival times for S...
Machine learning is an important artificial intelligence technique that is widely applied in cancer ...
PurposeA situational awareness Bayesian network (SA-BN) approach is developed to improve physicians'...
Cancer survival represents one of the main indicators of interest in cancer epidemiology. However, t...
International audiencePURPOSE Administering systemic anticancer treatment (SACT) to patients near de...
Purpose: Tools for survival prediction for non-small cell lung cancer (NSCLC) patients treated with ...
We apply a generalized Bayesian age–period–cohort (APC) model to a data-set on lung cancer mortality...
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: Classic statistical and machine learning models such as support vector machines (SVMs) can ...
IntroductionIdentifying high-risk lung cancer individuals at an early disease stage is the most effe...
Abstract Background Statistical learning (SL) techniques can address non-linear relationships and sm...
Non-small cell lung cancer accounts for the most cancer fatalities worldwide with a 5-year survival ...
Cancer is the leading cause of death in Taiwan, according to the Ministry of Health and Welfare (201...
This dissertation is composed of three chapters that deal with fairly distinct concepts. In the firs...
Bayesian reasoning, survival analysis and multi-state models are used to assess survival times for S...
Machine learning is an important artificial intelligence technique that is widely applied in cancer ...
PurposeA situational awareness Bayesian network (SA-BN) approach is developed to improve physicians'...
Cancer survival represents one of the main indicators of interest in cancer epidemiology. However, t...
International audiencePURPOSE Administering systemic anticancer treatment (SACT) to patients near de...
Purpose: Tools for survival prediction for non-small cell lung cancer (NSCLC) patients treated with ...
We apply a generalized Bayesian age–period–cohort (APC) model to a data-set on lung cancer mortality...