Azad, 2017 - Google Patents
Integrating heterogeneous datasets for cancer module identificationAzad, 2017
View PDF- Document ID
- 10442375404158621357
- Author
- Azad A
- Publication year
- Publication venue
- Bioinformatics: volume II: structure, function, and applications
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Snippet
The availability of multiple heterogeneous high-throughput datasets provides an enabling resource for cancer systems biology. Types of data include: Gene expression (GE), copy number aberration (CNA), miRNA expression, methylation, and protein–protein Interactions …
- 201000011510 cancer 0 title abstract description 47
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