Classifying gliomas samples with gliomaClassifier
Classifying glioma samples with DNA methylation array based on:
Ceccarelli, Michele, et al. “Molecular profiling reveals biologically discrete subsets and pathways of progression in diffuse glioma.” Cell 164.3 (2016): 550-563. (https://doi.org/10.1016/j.cell.2015.12.028)
Possible classifications are:
- Mesenchymal-like
- Classic-like
- G-CIMP-high
- G-CIMP-low
- LGm6-GBM
- Codel
Data
The input data can be either a Summarized Experiment object of a matrix (samples as columns, probes as rows) from the following platforms:
In this example we will retrieve two samples from TCGA and classify them expecting the same result as the paper.
query <- GDCquery(
project = "TCGA-GBM",
data.category = "DNA Methylation",
barcode = c("TCGA-06-0122","TCGA-14-1456"),
platform = "Illumina Human Methylation 27",
data.type = "Methylation Beta Value"
)
GDCdownload(query)
dnam <- GDCprepare(query)
Function
classification <- gliomaClassifier(dnam)
Results
The classfier will return a list of 3 data frames:
- Sample final classification
- Each model final classification
- Each class probability of classification
names(classification)
classification$final.classification
classification$model.classifications
classification$model.probabilities
Comparing results with paper
TCGAquery_subtype("GBM") %>%
dplyr::filter(patient %in% c("TCGA-06-0122","TCGA-14-1456")) %>%
dplyr::select("patient","Supervised.DNA.Methylation.Cluster")
## gbm subtype information from:doi:10.1016/j.cell.2015.12.028