Bayesian-frequentist hybrid inference framework for single cell RNA-seq analyses. Institutional Repository Document uri icon

abstract

  • BACKGROUND: Single cell RNA sequencing technology (scRNA-seq) has been proven useful in understanding cell-specific disease mechanisms. However, identifying genes of interest remains a key challenge. Pseudo-bulk methods that pool scRNA-seq counts in the same biological replicates have been commonly used to identify differentially expressed genes. However, such methods may lack power due to the limited sample size of scRNA-seq datasets, which can be prohibitively expensive. RESULTS: Motivated by this, we proposed to use the Bayesian-frequentist hybrid (BFH) framework to increase the power. CONCLUSION: In our idiopathic pulmonary fibrosis (IPF) case study, we demonstrated that with a proper informative prior, the BFH approach identified more genes of interest. Furthermore, these genes were reasonable based on the current knowledge of IPF. Thus, the BFH offers a unique and flexible framework for future scRNA-seq analyses.

author list (cited authors)

  • Han, G., Yan, D., Sun, Z., Fang, J., Chang, X., Wilson, L., & Liu, Y.

complete list of authors

  • Han, Gang||Yan, Dongyan||Sun, Zhe||Fang, Jiyuan||Chang, Xinyue||Wilson, Lucas||Liu, Yushi

Book Title

  • Research Square