Cancer genomic data contain views from different sources that provide complementary information about genetic activity. This provides a new way for cancer research. Feature selection and multi-view clustering are hot topics in bioinformatics, and they can make full use of complementary information to improve the effect. In this paper, a novel integrated model called Multi-view Non-negative Matrix Factorization (MvNMF) is proposed for the selection of common differential genes (co-differential genes) and multi-view clustering. In order to encode the geometric information in the multi-view genomic data, graph regularized MvNMF (GMvNMF) is further proposed by applying the graph regularization constraint in the objective function. GMvNMF can no...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
Abstract Background Comprehensive analyzing multi-omics biological data in different conditions is i...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
Detecting genomes with similar expression patterns using clustering techniques plays an important ro...
The explosion of multiomics data poses new challenges to existing data mining methods. Joint analysi...
Discovering the common modules that are co-expressed across various stages can lead to an improved u...
Integrative analyses of high-throughput 'omic data, such as DNA methylation, DNA copy number alterat...
The multi-modal or multi-view integration of data has generated a wide range of applicability in pat...
Motivation: The integration of multi-omic data by using machine learning methods has been focused to...
Pancreatic cancer (PC) is a highly fatal disease, yet its causes remain unclear. Comprehensive analy...
Cancer subtype information is significant to understand tumour heterogeneity. Present methods to fin...
Abstract The development of microarray devices has led to the accumulation of DNA microarray datase...
© 2021 The Author(s). Multi-view clustering has attracted increasing attention in recent years since...
Single-cell RNA-sequencing is a rapidly evolving technology that enables us to understand biological...
Non-negative matrix factorization by maximizing correntropy for cancer clustering Jim Jing-Yan Wang1...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
Abstract Background Comprehensive analyzing multi-omics biological data in different conditions is i...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
Detecting genomes with similar expression patterns using clustering techniques plays an important ro...
The explosion of multiomics data poses new challenges to existing data mining methods. Joint analysi...
Discovering the common modules that are co-expressed across various stages can lead to an improved u...
Integrative analyses of high-throughput 'omic data, such as DNA methylation, DNA copy number alterat...
The multi-modal or multi-view integration of data has generated a wide range of applicability in pat...
Motivation: The integration of multi-omic data by using machine learning methods has been focused to...
Pancreatic cancer (PC) is a highly fatal disease, yet its causes remain unclear. Comprehensive analy...
Cancer subtype information is significant to understand tumour heterogeneity. Present methods to fin...
Abstract The development of microarray devices has led to the accumulation of DNA microarray datase...
© 2021 The Author(s). Multi-view clustering has attracted increasing attention in recent years since...
Single-cell RNA-sequencing is a rapidly evolving technology that enables us to understand biological...
Non-negative matrix factorization by maximizing correntropy for cancer clustering Jim Jing-Yan Wang1...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...
Abstract Background Comprehensive analyzing multi-omics biological data in different conditions is i...
Cancer is a heterogeneity genetic disease with huge phenotypic alterations among dissimilar cancers ...