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Briefings in Bioinformatics
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August 2, 2023
Multi-task prediction-based graph contrastive learning for inferring the relationship among lncRNAs, miRNAs and diseases
Nan Sheng, Yan Wang, Lan Huang, et al.
Briefings in Bioinformatics
|
February 2, 2022
Multi-channel graph attention autoencoders for disease-related lncRNAs prediction
Nan Sheng, Lan Huang, Yan Wang, et al.
Human Genomics
|
May 9, 2026
Exploring the prognostic role of senescence-related genes in gastric cancer through multi-omics integration and machine learning
Yangkun Cao, Dongjie Li, Li Bao, et al.
Computers in Biology and Medicine
|
November 4, 2024
X-LDA: An interpretable and knowledge-informed heterogeneous graph learning framework for LncRNA-disease association prediction
Yangkun Cao, Jun Xiao, Nan Sheng, et al.
International Journal of Molecular Sciences
|
January 11, 2025
Elucidation of Factors Affecting the Age-Dependent Cancer Occurrence Rates
Jun Xiao, Yangkun Cao, Xuan Li, et al.
Genes
|
March 28, 2025
Optimizing Model Performance and Interpretability: Application to Biological Data Classification
Zhenyu Huang, Xuechen Mu, Yangkun Cao, et al.
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of 2
Search research articles
Search
Showing results (11-20 of 16) with videos related to
Sort By:
Page
of 2
You have reached the last page of results.
This site can display upto 16 results.
Briefings in Bioinformatics
|
August 2, 2023
Multi-task prediction-based graph contrastive learning for inferring the relationship among lncRNAs, miRNAs and diseases
Nan Sheng, Yan Wang, Lan Huang, et al.
Briefings in Bioinformatics
|
February 2, 2022
Multi-channel graph attention autoencoders for disease-related lncRNAs prediction
Nan Sheng, Lan Huang, Yan Wang, et al.
Human Genomics
|
May 9, 2026
Exploring the prognostic role of senescence-related genes in gastric cancer through multi-omics integration and machine learning
Yangkun Cao, Dongjie Li, Li Bao, et al.
Computers in Biology and Medicine
|
November 4, 2024
X-LDA: An interpretable and knowledge-informed heterogeneous graph learning framework for LncRNA-disease association prediction
Yangkun Cao, Jun Xiao, Nan Sheng, et al.
International Journal of Molecular Sciences
|
January 11, 2025
Elucidation of Factors Affecting the Age-Dependent Cancer Occurrence Rates
Jun Xiao, Yangkun Cao, Xuan Li, et al.
Genes
|
March 28, 2025
Optimizing Model Performance and Interpretability: Application to Biological Data Classification
Zhenyu Huang, Xuechen Mu, Yangkun Cao, et al.
Page
of 2