TY - JOUR
T1 - A controllability reinforcement learning method for pancreatic cancer biomarker identification
AU - Wang, Yan
AU - Hong, Jie
AU - Lu, Yuting
AU - Sheng, Nan
AU - Fu, Yuan
AU - Yang, Lili
AU - Meng, Lingyu
AU - Huang, Lan
AU - Wang, Hao
N1 - Publisher Copyright:
Authors
PY - 2024
Y1 - 2024
N2 - Pancreatic cancer is one of the most malignant cancers with rapid progression and poor prognosis. The use of transcriptional data can be effective in finding new biomarkers for pancreatic cancer. Many network-based methods used to identify cancer biomarkers are proposed, among which the combination of network controllability appears. However, most of the existing methods do not study RNA, rely on priori and mutations information, or can only achieve classification tasks. In this study, we propose a method combined Relational Graph Convolutional Network and Deep Q-Network called RDDriver to identify pancreatic cancer biomarkers based on multi-layer heterogeneous transcriptional regulation network. Firstly, we construct a regulation network containing long non-coding RNA, microRNA, and messenger RNA. Secondly, Relational Graph Convolutional Network is used to learn the node representation. Finally, we use the idea of Deep Q-Network to build a model, which score and prioritize each RNA with the Popov-Belevitch-Hautus criterion. We train RDDriver on three small simulated networks, and calculate the average score after applying the model parameters to the regulation networks separately. To demonstrate the effectiveness of the method, we perform experiments for comparison between RDDriver and other eight methods based on the approximate benchmark of three types cancer drivers RNAs.
AB - Pancreatic cancer is one of the most malignant cancers with rapid progression and poor prognosis. The use of transcriptional data can be effective in finding new biomarkers for pancreatic cancer. Many network-based methods used to identify cancer biomarkers are proposed, among which the combination of network controllability appears. However, most of the existing methods do not study RNA, rely on priori and mutations information, or can only achieve classification tasks. In this study, we propose a method combined Relational Graph Convolutional Network and Deep Q-Network called RDDriver to identify pancreatic cancer biomarkers based on multi-layer heterogeneous transcriptional regulation network. Firstly, we construct a regulation network containing long non-coding RNA, microRNA, and messenger RNA. Secondly, Relational Graph Convolutional Network is used to learn the node representation. Finally, we use the idea of Deep Q-Network to build a model, which score and prioritize each RNA with the Popov-Belevitch-Hautus criterion. We train RDDriver on three small simulated networks, and calculate the average score after applying the model parameters to the regulation networks separately. To demonstrate the effectiveness of the method, we perform experiments for comparison between RDDriver and other eight methods based on the approximate benchmark of three types cancer drivers RNAs.
KW - Benchmark testing
KW - Cancer
KW - Controllability
KW - Nanobioscience
KW - Pancreatic cancer
KW - pancreatic cancer biomarkers
KW - Popov-Belevitch-Hautus criterion
KW - Regulation
KW - Relational Graph Convolutional Network
KW - RNA
KW - transcriptional regulation network
UR - http://www.scopus.com/inward/record.url?scp=85201299905&partnerID=8YFLogxK
U2 - 10.1109/tnb.2024.3441689
DO - 10.1109/tnb.2024.3441689
M3 - Article
AN - SCOPUS:85201299905
SN - 1536-1241
JO - IEEE Transactions on Nanobioscience
JF - IEEE Transactions on Nanobioscience
ER -