Title :
Evaluation of predictive learners for cancer incidence and mortality
Author :
Kachroo, Smita ; Melek, William W. ; Kurian, C. Joseph
Author_Institution :
Alpha Global IT, Univ. of Waterloo, Toronto, ON, Canada
Abstract :
Ability to project cancer incidences and mortality is very important for cancer research and healthcare planning and is also a vital part of cancer screening and management programs. In current years, machine learning algorithms have been successfully shown to generate high forecasting accuracy and have drawn interest from healthcare professionals, research community, planners and policy makers. In this paper, three supervised machine learning classification techniques are compared to project cancer incidence and mortality rates. Classification methods covered in this work are Bayesian Network, Naïve Bayes and K-Nearest Neighbor. These classification methods have been tested on the datasets provided by Statistics Canada. This paper evaluates the performance of above classification techniques that examine the accuracy of each method via the utilization of prediction accuracy measures including Mean Absolute Errors, Root Mean Squared Errors, Relative Absolute Error, Precision, ROC area, TP and FP Rate.
Keywords :
Bayes methods; belief networks; cancer; health care; learning (artificial intelligence); mean square error methods; medical information systems; sensitivity analysis; Absolute Precision; Bayesian Network classifier; FP Rate; K-Nearest Neighbor classifier; Mean Absolute Errors; Naive Bayes classifier; ROC area; Relative Absolute Error; Root Mean Squared Errors; Statistics Canada; TP Rate; cancer incidence projection; cancer management programs; cancer mortality rate projection; cancer research; cancer screening; classification method; forecasting accuracy; healthcare planning; healthcare professionals; machine learning algorithms; planners; policy makers; prediction accuracy; predictive learners; research community; supervised machine learning classification techniques; Accuracy; Atmospheric measurements; Cancer; Classification algorithms; Learning systems; Prediction algorithms; Predictive models; Bayes Net (BN); K-Nearest Neighbor (K-NN); Naïve Bayes (NB); incidence; mortality;
Conference_Titel :
E-Health and Bioengineering Conference (EHB), 2013
Conference_Location :
Iasi
Print_ISBN :
978-1-4799-2372-4
DOI :
10.1109/EHB.2013.6707388