TY - JOUR
T1 - DAGBagM
T2 - learning directed acyclic graphs of mixed variables with an application to identify protein biomarkers for treatment response in ovarian cancer
AU - Chowdhury, Shrabanti
AU - Wang, Ru
AU - Yu, Qing
AU - Huntoon, Catherine J.
AU - Karnitz, Larry M.
AU - Kaufmann, Scott H.
AU - Gygi, Steven P.
AU - Birrer, Michael J.
AU - Paulovich, Amanda G.
AU - Peng, Jie
AU - Wang, Pei
N1 - Publisher Copyright:
© 2022, The Author(s).
PY - 2022/12
Y1 - 2022/12
N2 - Background: Applying directed acyclic graph (DAG) models to proteogenomic data has been shown effective for detecting causal biomarkers of complex diseases. However, there remain unsolved challenges in DAG learning to jointly model binary clinical outcome variables and continuous biomarker measurements. Results: In this paper, we propose a new tool, DAGBagM, to learn DAGs with both continuous and binary nodes. By using appropriate models, DAGBagM allows for either continuous or binary nodes to be parent or child nodes. It employs a bootstrap aggregating strategy to reduce false positives in edge inference. At the same time, the aggregation procedure provides a flexible framework to robustly incorporate prior information on edges. Conclusions: Through extensive simulation experiments, we demonstrate that DAGBagM has superior performance compared to alternative strategies for modeling mixed types of nodes. In addition, DAGBagM is computationally more efficient than two competing methods. When applying DAGBagM to proteogenomic datasets from ovarian cancer studies, we identify potential protein biomarkers for platinum refractory/resistant response in ovarian cancer. DAGBagM is made available as a github repository at https://github.com/jie108/dagbagM.
AB - Background: Applying directed acyclic graph (DAG) models to proteogenomic data has been shown effective for detecting causal biomarkers of complex diseases. However, there remain unsolved challenges in DAG learning to jointly model binary clinical outcome variables and continuous biomarker measurements. Results: In this paper, we propose a new tool, DAGBagM, to learn DAGs with both continuous and binary nodes. By using appropriate models, DAGBagM allows for either continuous or binary nodes to be parent or child nodes. It employs a bootstrap aggregating strategy to reduce false positives in edge inference. At the same time, the aggregation procedure provides a flexible framework to robustly incorporate prior information on edges. Conclusions: Through extensive simulation experiments, we demonstrate that DAGBagM has superior performance compared to alternative strategies for modeling mixed types of nodes. In addition, DAGBagM is computationally more efficient than two competing methods. When applying DAGBagM to proteogenomic datasets from ovarian cancer studies, we identify potential protein biomarkers for platinum refractory/resistant response in ovarian cancer. DAGBagM is made available as a github repository at https://github.com/jie108/dagbagM.
KW - Bootstrap aggregation
KW - Hill climbing
KW - Proteomics
KW - Sensitive and resistant/refractory
UR - http://www.scopus.com/inward/record.url?scp=85135598345&partnerID=8YFLogxK
U2 - 10.1186/s12859-022-04864-y
DO - 10.1186/s12859-022-04864-y
M3 - Article
C2 - 35931981
AN - SCOPUS:85135598345
SN - 1471-2105
VL - 23
JO - BMC Bioinformatics
JF - BMC Bioinformatics
IS - 1
M1 - 321
ER -