7th International Conference on Artificial Intelligence and Applications 2020
DOI: 10.5121/csit.2020.100308
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Two Staged Prediction of Gastric Cancer Patient’s Survival Via Machine Learning Techniques

Abstract: Cancer is one of the most common causes of death in the world, while gastric cancer has the highest incidence in Asia. Predicting gastric cancer patients' survivability can inform patients care decisions and help doctors prescribe personalized medicine. Classification techniques have been widely used to predict survivability of cancer patients. However, very few attention has been paid to patients who cannot survive. In this research, we consider survival prediction to be a twostaged problem. The first is to p… Show more

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Cited by 2 publications
(3 citation statements)
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“…In addition, a large sample of data is required to obtain meaningful results for multivariate techniques. 8,20 In the past, researchers have used a variety of survival analysis methods to describe the relationship between response variables and a set of independent variables in various fields of medical science. In this context, conventional survival methods such as Cox proportional hazard modeling are still the most common approach for analyzing the relative importance of the predictive variables in the development of the disease.…”
Section: Clinical Medicine Insights: Oncologymentioning
confidence: 99%
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“…In addition, a large sample of data is required to obtain meaningful results for multivariate techniques. 8,20 In the past, researchers have used a variety of survival analysis methods to describe the relationship between response variables and a set of independent variables in various fields of medical science. In this context, conventional survival methods such as Cox proportional hazard modeling are still the most common approach for analyzing the relative importance of the predictive variables in the development of the disease.…”
Section: Clinical Medicine Insights: Oncologymentioning
confidence: 99%
“…Many clinical predictors influence gastric cancer. In the reviewed studies, after doing feature ranking, the variables such as age, 6,35,48,49 gender, 36,47,50 body mass index, 6,47,50 Karnofsky performance scale, 8,48,51 TNM stage, 36,[47][48][49][50] tumor grade, 7,8,35,[47][48][49][50] tumor size, 6,7,47,[49][50][51] tumor location, 6,7,35,36,48,49 lymphovascular invasion, 7,8,47,49,50 active and timely treatment, 7,8,36 type of treatment, 35,49 disease stage and severity, 6,8,…”
Section: 037mentioning
confidence: 99%
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