Table 1. Conversion of Different Data Types to High and Low States.
Data Type | Attribute | Transformation | High State in Sample | Low State in Sample |
Gene expression | Gene expression probe set | RMA [35] Normalization | Value StepMiner [34] threshold | Value < StepMiner threshold |
DNA methylation | CpG site | Scaling by a factor of 10 | Value StepMiner threshold | Value < StepMiner threshold |
Mutation | Type of mutation per gene | - | Particular type of mutation present in gene | Particular type of mutation absent in gene |
Mutation | Mutation per gene | - | Mutation present in gene | Mutation absent in gene |
Copy Number | Copy Number amplification per gene | - | Somatic gene amplification present | Somatic gene amplification absent |
Copy Number | Copy Number deletion per gene | - | Somatic gene deletion present | Somatic gene deletion absent |
Copy Number | Broad Copy Number amplification per segment | - | Broad region amplified | Broad region not amplified |
Copy Number | Broad Copy Number deletion per segment | - | Broad Region deleted | Broad Region not deleted |
StepMiner [34], which fits patterns of one-step transitions by evaluating every possible placement of the transition (or step) and choosing the one that gives the best fit, was used to derive thresholds that divide the data into low and high states.