Typical clustering analysis for large-scale genomics data combines two unsupervised learning techniques: dimensionality reduction and clustering (DR-CL) methods. It has been demonstrated that transforming gene expression to pathway-level information can improve the robustness and interpretability of disease grouping results. This approach, referred to as biological knowledge-driven clustering (BK-CL) approach, is often neglected, due to a lack of tools enabling systematic comparisons with more established DR-based methods. Moreover, classic clustering metrics based on group separability tend to favor the DR-CL paradigm, which may increase the risk of identifying less actionable disease subtypes that have ambiguous biological and clinical ex...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
BACKGROUND: A wealth of clustering algorithms has been applied to gene co-expression experiments. Th...
Background A wealth of clustering algorithms has been applied to gene co-expression experiments. The...
Typical clustering analysis for large-scale genomics data combines two unsupervised learning techniq...
Cancer is a genetic disease comprising multiple subtypes that have distinct molecular characteristic...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal...
© 2007 Bushel et al; licensee BioMed Central Ltd. The electronic version of this article is the comp...
Existing large gene expression data repositories hold enormous potential to elucidate disease mechan...
Various high-throughput technologies have fueled advances in biomedical research in the last decade....
International audiencePrecision medicine is a paradigm shift in healthcare relying heavily on genomi...
Identification of biomarkers that contribute to complex human disorders is a principal and challengi...
<div><p>In cancer biology, it is very important to understand the phenotypic changes of the patients...
Clustering is a long-standing problem in computer science and is applied in virtually any scientific...
The discovery of disease subtypes is an essential step for developing precision medicine, and diseas...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
BACKGROUND: A wealth of clustering algorithms has been applied to gene co-expression experiments. Th...
Background A wealth of clustering algorithms has been applied to gene co-expression experiments. The...
Typical clustering analysis for large-scale genomics data combines two unsupervised learning techniq...
Cancer is a genetic disease comprising multiple subtypes that have distinct molecular characteristic...
Background The use of clustering methods for the discovery of cancer subtypes has drawn a great deal...
© 2007 Bushel et al; licensee BioMed Central Ltd. The electronic version of this article is the comp...
Existing large gene expression data repositories hold enormous potential to elucidate disease mechan...
Various high-throughput technologies have fueled advances in biomedical research in the last decade....
International audiencePrecision medicine is a paradigm shift in healthcare relying heavily on genomi...
Identification of biomarkers that contribute to complex human disorders is a principal and challengi...
<div><p>In cancer biology, it is very important to understand the phenotypic changes of the patients...
Clustering is a long-standing problem in computer science and is applied in virtually any scientific...
The discovery of disease subtypes is an essential step for developing precision medicine, and diseas...
which permits unrestricted use, distribution, and reproduction in any medium, provided the original ...
BACKGROUND: A wealth of clustering algorithms has been applied to gene co-expression experiments. Th...
Background A wealth of clustering algorithms has been applied to gene co-expression experiments. The...