Subclass Mapping: Identifying Common Subtypes in Independent Disease Data Sets
Broad Institute · Dana-Farber Cancer Institute · +1 more institution
Abstract
Whole genome expression profiles are widely used to discover molecular subtypes of diseases. A remaining challenge is to identify the correspondence or commonality of subtypes found in multiple, independent data sets generated on various platforms. While model-based supervised learning is often used to make these connections, the models can be biased to the training data set and thus miss inherent, relevant substructure in the test data. Here we describe an unsupervised subclass mapping method (SubMap), which reveals common subtypes between independent data sets. The subtypes within a data set can be determined by unsupervised clustering or given by predetermined phenotypes before applying SubMap. We define a…
Citation impact
- FWCI
- 3.09
- Percentile
- 100%
- References
- 26
Authors
5- YHYujin HoshidaCorresponding
Broad Institute, Dana-Farber Cancer Institute, Massachusetts Institute of Technology
- JBJean-Philippe Brunet
Broad Institute, Massachusetts Institute of Technology
- PTPablo Tamayo
Massachusetts Institute of Technology, Broad Institute
- TRTodd R. Golub
Broad Institute, Dana-Farber Cancer Institute, Massachusetts Institute of Technology
- JPJill P. Mesirov
Broad Institute, Massachusetts Institute of Technology
Topics & keywords
- Subclass
- Computational biology
- Data set
- Set (abstract data type)
- Cluster analysis
- Computer science
- Biology
- Pattern recognition (psychology)
- Good health and well-being