A supervised Bayesian method for time (re)annotation of transcriptomics data
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ABSTRACT: We propose a Bayesian method based on Gaussian process regression modeling to solve the problem. We use it to perform time annotation in old \textit{Clostridium botulinum} microarray experiments by utilising recently collected RNA-Seq time series. Additionally, we apply the method to time annotate RNA-Seq experiments and test its robustness toward noise on synthetically generated data.
ORGANISM(S): Clostridium botulinum Clostridium botulinum A str. ATCC 3502
PROVIDER: GSE261398 | GEO | 2025/03/26
REPOSITORIES: GEO
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