This study applies unsupervised machine learning techniques for classification and clustering to a collection of descriptive variables from 10,442 lung cancer patient records in the Surveillance, Epidemiology, and End Results (SEER) program database. The goal is to automatically classify lung cancer patients into groups based on clinically measurable disease-specific variables in order to estimate survival. Variables selected as inputs for machine learning include Number of Primaries, Age, Grade, Tumor Size, Stage, and TNM, which are numeric or can readily be converted to numeric type. Minimal up-front processing of the data enables exploring the out-of-the-box capabilities of established unsupervised learning techniques, with little human ...
Lung Cancer is the major cause of human deaths in worldwide. Therefore, to identify the lung cancer ...
Abstract — lung Cancer is believed to be among the primary factors for death across the world. Withi...
Abstract Background To investigate the effect of machine learning methods on predicting the Overall ...
Background Breast cancer is the most common cancer affecting females worldwide. Breast cancer surviv...
Accurate prediction of survival rates of cancer patients is often key to stratify patients for progn...
Abstract Background Statistical learning (SL) techniques can address non-linear relationships and sm...
In recent studies, small cell lung cancer (SCLC) treatment guidelines based on Veterans’ Administrat...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
Many people around the world have lung cancer. Lung cancer has a poor prognosis and a high mortality...
Lung cancer is the leading cause of cancer death. More than 238,340 new cases of lung cancer patient...
Objective: The objective of this research work is focused on the ethical cluster creation of lung ca...
The analysis of clinical databases can allow to identify factors which increase clinical risk of spe...
Introduction Unresectable stage III nonsmall cell lung cancer (NSCLC) continues to have dismal 5-ye...
The early symptoms of lung cancer, a serious threat to human health, are comparable to those of the ...
Cancer is the leading cause of death in Taiwan, according to the Ministry of Health and Welfare (201...
Lung Cancer is the major cause of human deaths in worldwide. Therefore, to identify the lung cancer ...
Abstract — lung Cancer is believed to be among the primary factors for death across the world. Withi...
Abstract Background To investigate the effect of machine learning methods on predicting the Overall ...
Background Breast cancer is the most common cancer affecting females worldwide. Breast cancer surviv...
Accurate prediction of survival rates of cancer patients is often key to stratify patients for progn...
Abstract Background Statistical learning (SL) techniques can address non-linear relationships and sm...
In recent studies, small cell lung cancer (SCLC) treatment guidelines based on Veterans’ Administrat...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
Many people around the world have lung cancer. Lung cancer has a poor prognosis and a high mortality...
Lung cancer is the leading cause of cancer death. More than 238,340 new cases of lung cancer patient...
Objective: The objective of this research work is focused on the ethical cluster creation of lung ca...
The analysis of clinical databases can allow to identify factors which increase clinical risk of spe...
Introduction Unresectable stage III nonsmall cell lung cancer (NSCLC) continues to have dismal 5-ye...
The early symptoms of lung cancer, a serious threat to human health, are comparable to those of the ...
Cancer is the leading cause of death in Taiwan, according to the Ministry of Health and Welfare (201...
Lung Cancer is the major cause of human deaths in worldwide. Therefore, to identify the lung cancer ...
Abstract — lung Cancer is believed to be among the primary factors for death across the world. Withi...
Abstract Background To investigate the effect of machine learning methods on predicting the Overall ...