Title of article :
Comparison of Four Data Mining Algorithms for Predicting Colorectal Cancer Risk
Author/Authors :
Shanbehzadeh ، Mostafa Department of Health Information Technology - School of Paramedical - Ilam University of Medical Sciences , Nopour ، Raoof Department of Health Information Technology - School of Allied Medical Sciences - Tehran University of Medical Sciences , Kazemi-Arpanahi ، Hadi Department of Health Information Technology, Department of Student Research Committee - Abadan Faculty of Medical Sciences
From page :
100
To page :
108
Abstract :
Background and Objective: Colorectal cancer (CRC) is one of the most prevalent malignancies in the world. The early detection of CRC is not only a simple process, but it is also the key to its treatment. Given that data mining algorithms could be potentially useful in cancer prognosis, diagnosis, and treatment, the main focus of this study is to measure the performance of some data mining classifier algorithms in terms of predicting CRC and providing an early warning to the highrisk groups. Materials and Methods: This study was performed in 468 subjects (194 CRC patients and 274 nonCRC cases). We used the CRC dataset from the Imam Hospital, Sari, Iran. The Chisquare feature selection method was utilized to analyze the risk factors. Then, four popular data mining algorithms were compared based on their performance in predicting CRC, and, finally, the best algorithm was identified. Results: The best outcome was obtained by J48 (FMeasure = 0.826, ROC=0.881, precision= 0.826 and sensitivity =0.827), Bayesian Net was the secondbest performer (FMeasure = 0.718, ROC=0.784, precision= 0.719 and sensitivity=0.722). RandomForest performed the thirdbest (FMeasure= 0.705, ROC=0.758, precision= 0.719, and sensitivity=0.712). Finally, the MLP technique performed the worst (FMeasure = 0.702, ROC=0.76, precision = 0.701 and sensitivity=0.703). Conclusion: According to the results, we concluded that the J48 could provide better insights than other proposed prediction models for clinical applications.
Keywords :
Data Mining , classification models , Colorectal Cancer , prediction
Journal title :
Journal of Advances in Medical and Biomedical Research
Journal title :
Journal of Advances in Medical and Biomedical Research
Record number :
2579368
Link To Document :
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