View DLBCL & FL from Harvard (public)
























- Summary
There are two kinds of classifications about diffuse large b-cell lymphoma (DLBCL) addressed in the publication.
- License
- unknown (from UCI repository)
- Dependencies
- Tags
- dlbcl Harvard lymphoma MIT
- Attribute Types
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- Original Data Format
- zip
- Name
- Version mldata
- Comment
- Names
- Data (first 10 data points)
ZIP archive DLBCLTumor.data, DLBCLTumor.names, DLBCLOutcome.names, DLBCLOutcome.data, DLBCLTumor.arff, DLBCLOutcome.arff
- Description
There are two kinds of classifications about diffuse large b-cell lymphoma (DLBCL) addressed in the publication. First one is DLBCL versus Follicular Lymphoma (FL) morphology. This set of data contains 58 DLBCL samples and 19 FL samples. The second problem is to predict the patient outcome of DLBCL. Among 58 DLBCL patient samples, 32 of them are from cured patients (labelled as 'cured') while 26 of them are from patients with fatal or refractory disease (labelled as 'fatal'). The expression profile contains 6817 genes.
- URLs
- http://datam.i2r.a-star.edu.sg/datasets/krbd/DLBCL/DLBCL-Harvard.html
- Publications
- Data Source
- http://datam.i2r.a-star.edu.sg/datasets/krbd/DLBCL/DLBCL-Harvard.html
- Measurement Details
- Usage Scenario
- revision 1
- by kidzik on 2011-09-15 10:51
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Acknowledgements
This project is supported by PASCAL (Pattern Analysis, Statistical Modelling and Computational Learning)
http://www.pascal-network.org/.