iSeqQC: a tool for expression-based quality control in RNA sequencing

BMC Bioinformatics. 2020 Feb 13;21(1):56. doi: 10.1186/s12859-020-3399-8.

Abstract

Background: Quality Control in any high-throughput sequencing technology is a critical step, which if overlooked can compromise an experiment and the resulting conclusions. A number of methods exist to identify biases during sequencing or alignment, yet not many tools exist to interpret biases due to outliers.

Results: Hence, we developed iSeqQC, an expression-based QC tool that detects outliers either produced due to variable laboratory conditions or due to dissimilarity within a phenotypic group. iSeqQC implements various statistical approaches including unsupervised clustering, agglomerative hierarchical clustering and correlation coefficients to provide insight into outliers. It can be utilized through command-line (Github: https://github.com/gkumar09/iSeqQC) or web-interface (http://cancerwebpa.jefferson.edu/iSeqQC). A local shiny installation can also be obtained from github (https://github.com/gkumar09/iSeqQC).

Conclusion: iSeqQC is a fast, light-weight, expression-based QC tool that detects outliers by implementing various statistical approaches.

Keywords: Count based QC; Expression-based QC; RNA seq QC tool; RNA sequencing quality control.

MeSH terms

  • Cluster Analysis
  • Gene Expression Profiling / standards*
  • High-Throughput Nucleotide Sequencing / standards*
  • Humans
  • Quality Control
  • Sequence Analysis, RNA / standards*
  • Software*