4.7 Article

UMIErrorCorrect and UMIAnalyzer: Software for Consensus Read Generation, Error Correction, and Visualization Using Unique Molecular Identifiers

Journal

CLINICAL CHEMISTRY
Volume 68, Issue 11, Pages 1425-1435

Publisher

OXFORD UNIV PRESS INC
DOI: 10.1093/clinchem/hvac136

Keywords

-

Funding

  1. Assar Gabrielssons Research Foundation
  2. Johan Jansson Foundation for Cancer Research
  3. Sahlgrenska University Hospital
  4. Assar Gabrielssons Research, Foundation
  5. Lion's Cancer Research Fund of Western Sweden
  6. Wilhelm and Martina Lundgren Foundation
  7. University of Gothenburg
  8. Anna-Lisa och Bror Bjornsson stiftelse
  9. AstraZeneca
  10. Simsen Diagnostics
  11. Region Vastra Gotaland, Sweden
  12. Swedish Research Council [2020-01008]
  13. Swedish government [965065]
  14. Sweden's Innovation Agency [2018-00421, 2020-04141]
  15. Swedish Cancer Society [19-0306]
  16. Swedish Childhood Cancer Foundation [2020-007, MTI2019-0008]
  17. Sjoberg Foundation
  18. Region Vastra Gotaland, Sahlgrenska University Hospital, University of Gothenburg
  19. Vinnova [2020-01008, 2018-00421] Funding Source: Vinnova
  20. Formas [2018-00421] Funding Source: Formas

Ask authors/readers for more resources

The study developed a new bioinformatics pipeline, UMIErrorCorrect, for analyzing sequencing data containing UMIs, and provided a user interface called UMIAnalyzer. Analysis of data demonstrated that UMIErrorCorrect showed higher sensitivity in variant detection for targeted UMI sequencing data.
Background Targeted sequencing using unique molecular identifiers (UMIs) enables detection of rare variant alleles in challenging applications, such as cell-free DNA analysis from liquid biopsies. Standard bioinformatics pipelines for data processing and variant calling are not adapted for deep-sequencing data containing UMIs, are inflexible, and require multistep workflows or dedicated computing resources. Methods We developed a bioinformatics pipeline using Python and an R package for data analysis and visualization. To validate our pipeline, we analyzed cell-free DNA reference material with known mutant allele frequencies (0%, 0.125%, 0.25%, and 1%) and public data sets. Results We developed UMIErrorCorrect, a bioinformatics pipeline for analyzing sequencing data containing UMIs. UMIErrorCorrect only requires fastq files as inputs and performs alignment, UMI clustering, error correction, and variant calling. We also provide UMIAnalyzer, a graphical user interface, for data mining, visualization, variant interpretation, and report generation. UMIAnalyzer allows the user to adjust analysis parameters and study their effect on variant calling. We demonstrated the flexibility of UMIErrorCorrect by analyzing data from 4 different targeted sequencing protocols. We also show its ability to detect different mutant allele frequencies in standardized cell-free DNA reference material. UMIErrorCorrect outperformed existing pipelines for targeted UMI sequencing data in terms of variant detection sensitivity. Conclusions UMIErrorCorrect and UMIAnalyzer are comprehensive and customizable bioinformatics tools that can be applied to any type of library preparation protocol and enrichment chemistry using UMIs. Access to simple, generic, and open-source bioinformatics tools will facilitate the implementation of UMI-based sequencing approaches in basic research and clinical applications.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available