PLX283060
GSE129240: Complete deconvolution of cellular mixtures based on linearity of transcriptional signatures
- Organsim human
- Type RNASEQ
- Target gene
- Project ARCHS4
Difference in RNA content of different cell types introduces bias to gene expression deconvolution methods. If ERCC spike-ins are introduced into samples, predicted proportions of deconvolution methods can be corrected SOURCE: Maxim Artyomov (martyomov@wustl.edu) - Artyomov lab WASHINGTON UNIVERSITY IN ST LOUIS
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