BatchQC 2.1.2
This data set is from protein expression data captured for 39 proteins. It has two batches and two conditions corresponding to case and control.
library(BatchQC)
data(protein_data)
data(protein_sample_info)
se_object <- BatchQC::summarized_experiment(protein_data, protein_sample_info)
This data set is from signature data captured when activating different growth pathway genes in human mammary epithelial cells (GEO accession: GSE73628). This data consists of three batches and ten different conditions corresponding to control and nine different pathways
data(signature_data)
data(batch_indicator)
se_object <- BatchQC::summarized_experiment(signature_data, batch_indicator)
This data set is from bladder cancer data. This dataset has 57 bladder samples with 5 batches and 3 covariate levels (cancer, biopsy, control). Batch 1 contains only cancer, 2 has cancer and controls, 3 has only controls, 4 contains only biopsy, and 5 contains cancer and biopsy. This data set is from the bladderbatch package which must be installed to use this data example set (Leek JT (2023). bladderbatch: Bladder gene expression data illustrating batch effects. R package version 1.38.0).
se_object <- BatchQC::bladder_data_upload()
## R version 4.4.0 RC (2024-04-16 r86468)
## Platform: x86_64-pc-linux-gnu
## Running under: Ubuntu 22.04.4 LTS
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## attached base packages:
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## other attached packages:
## [1] BatchQC_2.1.2 BiocStyle_2.33.0
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