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Activity Number: 55 - Statistical methods for data from single cell technologies
Type: Contributed
Date/Time: Sunday, August 8, 2021 : 3:30 PM to 5:20 PM
Sponsor: Section on Statistics in Genomics and Genetics
Abstract #319081
Title: Comparative Analysis of Statistical Methods for Single-Cell RNA Sequencing Data
Author(s): Rose Adjei* and John R. Stevens
Companies: UTAH STATE UNIVERSITY and UTAH STATE UNIVERSITY
Keywords: Single-Cell RNA Sequencing; Imputation; Differential Expression Testing; Bulk RNA Sequencing; Dropout zeros; Missing data
Abstract:

Single-cell RNA (scRNA) sequencing is a high throughput analysis that enables researchers to understand the gene expression within a single cell, in what quantities they are expressed, and how they differ across thousands of cells within a heterogeneous sample (eg.early embryo development). Single-cell RNA datasets are mostly characterized by a high percentage of missing values due to technical limitations and stochastic gene expression. This could pose a major problem as the missing data can introduce bias and affect downstream analyses. Over the years, a number of methods have been developed to address the issue of missingness in single-cell RNA datasets and test the differential expression between group of cells. In this presentation, I will briefly outline the main differences between the traditional RNA sequencing and single-cell RNA, do a literature review of some scRNA sequencing imputation methods (addressing their advantages and limitations), and conduct an analysis using publicly available scRNA seq data to compare the various imputation methods. Lastly, I will conduct a differential expression test on the sample data using different methods and compare my findings.


Authors who are presenting talks have a * after their name.

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