TY - JOUR
T1 - Prediction of cancer prognosis with the genetic basis of transcriptional variations
AU - Paik, Hyojung
AU - Lee, Eunjung
AU - Park, Inho
AU - Kim, Junho
AU - Lee, Doheon
PY - 2011/6
Y1 - 2011/6
N2 - Phenotypes of diseases, including prognosis, are likely to have complex etiologies and be derived from interactive mechanisms, including genetic and protein interactions. Many computational methods have been used to predict survival outcomes without explicitly identifying interactive effects, such as the genetic basis for transcriptional variations. We have therefore proposed a classification method based on the interaction between genotype and transcriptional expression features (CORE-F). This method considers the overall "genetic architecture," referring to genetically based transcriptional alterations that influence prognosis.In comparing the performance of CORE-F with the ensemble tree, the best-performing method predicting patient survival, we found that CORE-F outperformed the ensemble tree (mean AUC, 0.85 vs. 0.72). Moreover, the trained associations in the CORE-F successfully identified the genetic mechanisms underlying survival outcomes at the interaction-network level. Details of the learning algorithm are available in the online supplementary materials located at http://www.biosoft.kaist.ac.kr/coref.
AB - Phenotypes of diseases, including prognosis, are likely to have complex etiologies and be derived from interactive mechanisms, including genetic and protein interactions. Many computational methods have been used to predict survival outcomes without explicitly identifying interactive effects, such as the genetic basis for transcriptional variations. We have therefore proposed a classification method based on the interaction between genotype and transcriptional expression features (CORE-F). This method considers the overall "genetic architecture," referring to genetically based transcriptional alterations that influence prognosis.In comparing the performance of CORE-F with the ensemble tree, the best-performing method predicting patient survival, we found that CORE-F outperformed the ensemble tree (mean AUC, 0.85 vs. 0.72). Moreover, the trained associations in the CORE-F successfully identified the genetic mechanisms underlying survival outcomes at the interaction-network level. Details of the learning algorithm are available in the online supplementary materials located at http://www.biosoft.kaist.ac.kr/coref.
KW - Genetic architecture
KW - Genotype
KW - Survival prediction
KW - Transcriptional variation
UR - https://www.scopus.com/pages/publications/79957476802
U2 - 10.1016/j.ygeno.2011.03.005
DO - 10.1016/j.ygeno.2011.03.005
M3 - Article
C2 - 21419214
AN - SCOPUS:79957476802
SN - 0888-7543
VL - 97
SP - 350
EP - 357
JO - Genomics
JF - Genomics
IS - 6
ER -