<p>A: First-layer features. B: Second-layer features. C: Expert engineered features. These two-dimensional embeddings using t-SNE suggest several subpopulations of gout (red) and leukemia (blue) in both learned feature spaces. We suspect that these subpopulations largely represent differences in treatment approach, but they may also be illuminating pathophysiologic differences. The engineered feature space separates the two known phenotypes adequately for a discrimination task, but offers only weak suggestions of subpopulations: without the colors corresponding to known phenotypes, it would be difficult to identify more than a single large cluster in this space. The t-SNE algorithm preserves near neighbor distances at the expense of far nei...
Abstract Background There is growing interest in util...
<p>a) examples of individual chromosome segments, showing their observed CNA frequencies stratified ...
Cancer is a complex and deadly disease that is caused by genetic lesions in somatic cells. Further r...
Inferring precise phenotypic patterns from population-scale clinical data is a core computational ta...
The GTEx Consortium reported that hierarchical clustering of RNA profiles from 25 unique tissue type...
Whole genome expression profiles are widely used to discover molecular subtypes of diseases. A remai...
International audienceUNCORRECTED PROOFJournal : SREP 41598Article No : 68858Pages : 6MS Co...
The identification of tumor subpopulations that adversely affect patient outcomes is essential for a...
Describing and capturing significant differences between two classes of data is an important data mi...
The identification of tumor subpopulations that adversely affect patient outcomes is essential for a...
Background: High-dimensional biomedical data are frequently clustered to identify subgroup structure...
Mass cytometry allows high-resolution dissection of the cellular composition of the immune system. H...
Principle component analysis (PCA) was run on the normalized filtered feature-barcoded matrix to red...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
<p>Colors label clusters from the k-means algorithm. The clusters are labeled according to the comor...
Abstract Background There is growing interest in util...
<p>a) examples of individual chromosome segments, showing their observed CNA frequencies stratified ...
Cancer is a complex and deadly disease that is caused by genetic lesions in somatic cells. Further r...
Inferring precise phenotypic patterns from population-scale clinical data is a core computational ta...
The GTEx Consortium reported that hierarchical clustering of RNA profiles from 25 unique tissue type...
Whole genome expression profiles are widely used to discover molecular subtypes of diseases. A remai...
International audienceUNCORRECTED PROOFJournal : SREP 41598Article No : 68858Pages : 6MS Co...
The identification of tumor subpopulations that adversely affect patient outcomes is essential for a...
Describing and capturing significant differences between two classes of data is an important data mi...
The identification of tumor subpopulations that adversely affect patient outcomes is essential for a...
Background: High-dimensional biomedical data are frequently clustered to identify subgroup structure...
Mass cytometry allows high-resolution dissection of the cellular composition of the immune system. H...
Principle component analysis (PCA) was run on the normalized filtered feature-barcoded matrix to red...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
<p>Colors label clusters from the k-means algorithm. The clusters are labeled according to the comor...
Abstract Background There is growing interest in util...
<p>a) examples of individual chromosome segments, showing their observed CNA frequencies stratified ...
Cancer is a complex and deadly disease that is caused by genetic lesions in somatic cells. Further r...