Integrative Exploratory Analysis of Two or More Genomic Datasets

@article{Meng2016IntegrativeEA,
  title={Integrative Exploratory Analysis of Two or More Genomic Datasets},
  author={Chen Meng and A. Culhane},
  journal={Methods in molecular biology},
  year={2016},
  volume={1418},
  pages={
          19-38
        }
}
Exploratory analysis is an essential step in the analysis of high throughput data. Multivariate approaches such as correspondence analysis (CA), principal component analysis, and multidimensional scaling are widely used in the exploratory analysis of single dataset. Modern biological studies often assay multiple types of biological molecules (e.g., mRNA, protein, phosphoproteins) on a same set of biological samples, thereby creating multiple different types of omics data or multiassay data… 

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