TY - JOUR
T1 - Pathway-structured predictive model for cancer survival prediction
T2 - A two-stage approach
AU - Zhang, Xinyan
AU - Li, Yan
AU - Akinyemiju, Tomi
AU - Ojesina, Akinyemi I.
AU - Buckhaults, Phillip
AU - Liu, Nianjun
AU - Xu, Bo
AU - Yi, Nengjun
N1 - Publisher Copyright:
© 2017 by the Genetics Society of America.
PY - 2017/1
Y1 - 2017/1
N2 - Heterogeneity in terms of tumor characteristics, prognosis, and survival among cancer patients has been a persistent problem for many decades. Currently, prognosis and outcome predictions are made based on clinical factors and/or by incorporating molecular profiling data. However, inaccurate prognosis and prediction may result by using only clinical or molecular information directly. One of the main shortcomings of past studies is the failure to incorporate prior biological information into the predictive model, given strong evidence of the pathway-based genetic nature of cancer, i.e., the potential for oncogenes to be grouped into pathways based on biological functions such as cell survival, proliferation, and metastatic dissemination. To address this problem, we propose a two-stage approach to incorporate pathway information into the prognostic modeling using large-scale gene expression data. In the first stage, we fit all predictors within each pathway using the penalized Cox model and Bayesian hierarchical Cox model. In the second stage, we combine the cross-validated prognostic scores of all pathways obtained in the first stage as new predictors to build an integrated prognostic model for prediction. We apply the proposed method to analyze two independent breast and ovarian cancer datasets from The Cancer Genome Atlas (TCGA), predicting overall survival using large-scale gene expression profiling data. The results from both datasets show that the proposed approach not only improves survival prediction compared with the alternative analyses that ignore the pathway information, but also identifies significant biological pathways.
AB - Heterogeneity in terms of tumor characteristics, prognosis, and survival among cancer patients has been a persistent problem for many decades. Currently, prognosis and outcome predictions are made based on clinical factors and/or by incorporating molecular profiling data. However, inaccurate prognosis and prediction may result by using only clinical or molecular information directly. One of the main shortcomings of past studies is the failure to incorporate prior biological information into the predictive model, given strong evidence of the pathway-based genetic nature of cancer, i.e., the potential for oncogenes to be grouped into pathways based on biological functions such as cell survival, proliferation, and metastatic dissemination. To address this problem, we propose a two-stage approach to incorporate pathway information into the prognostic modeling using large-scale gene expression data. In the first stage, we fit all predictors within each pathway using the penalized Cox model and Bayesian hierarchical Cox model. In the second stage, we combine the cross-validated prognostic scores of all pathways obtained in the first stage as new predictors to build an integrated prognostic model for prediction. We apply the proposed method to analyze two independent breast and ovarian cancer datasets from The Cancer Genome Atlas (TCGA), predicting overall survival using large-scale gene expression profiling data. The results from both datasets show that the proposed approach not only improves survival prediction compared with the alternative analyses that ignore the pathway information, but also identifies significant biological pathways.
KW - Cancer prognosis
KW - Hierarchical cox model
KW - Pathway
KW - Penalized cox regression
KW - The Cancer Genome Atlas (TCGA)
UR - http://www.scopus.com/inward/record.url?scp=85008477467&partnerID=8YFLogxK
U2 - 10.1534/genetics.116.189191
DO - 10.1534/genetics.116.189191
M3 - Article
C2 - 28049703
AN - SCOPUS:85008477467
SN - 0016-6731
VL - 205
SP - 89
EP - 100
JO - Genetics
JF - Genetics
IS - 1
ER -