Title
Comparative studies for developing protein based cancer prediction model to maximise the ROC-AUC with various variable selection methods
Abstract
AbstractThe era of protein data analysis is coming with more accurate quantification experiments such as the multiple reaction monitoring MRM. Protein is easier to obtain than the other genetic variants or gene expression data, which makes it more suitable for early diagnosis of cancer. Each patient has unique patterns of protein data, which makes it imperative for the researcher to select the effective markers to construct a consistent model to predict the patients. This research focuses on finding the most effective variable selection method to be applied in the early diagnosis of the pancreatic cancer. In the process, we compare classical selection methods stepwise selection based on AIC, BIC, machine learning based selection method support vector machine recursive feature selection; SVM-REF, and stepwise selection method using the area under the receiver operating characteristic curve Step-AUC. Based on the simulation and real data analysis, we suggest a Step-AUC method to maximise the prediction performance of the early diagnosis by protein data.
Year
DOI
Venue
2016
10.1504/IJDMB.2016.079803
Periodicals
Keywords
Field
DocType
AIC, Akaike information criteria, BIC, Bayesian information criteria, SVM-REF, stepwise selection, step-AUC, MRM, multiple reaction monitoring, pancreatic cancer
Data mining,Bayesian information criterion,Stepwise regression,Akaike information criterion,Receiver operating characteristic,Feature selection,Computer science,Support vector machine,Artificial intelligence,Bioinformatics,Cancer,Machine learning
Journal
Volume
Issue
ISSN
16
1
1748-5673
Citations 
PageRank 
References 
0
0.34
1
Authors
13
Name
Order
Citations
PageRank
Yongkang Kim123.83
Minseok Kwon233928.71
Yonghwan Choi300.34
Sung-Gon Yi413912.28
Junghyun Namkung5132.69
Sangjo Han601.01
Wooil Kwon700.34
Sun Whe Kim800.68
Jinyoung Jang9295.66
Hyunsoo Kim1001.01
Youngsoo Kim116717.34
Seung Yeoun Lee1216820.48
Taesung Park1349064.41