Skip to main navigation Skip to search Skip to main content

OSAT: A tool for sample-to-batch allocations in genomics experiments

  • Li Yan
  • , Changxing Ma
  • , Dan Wang
  • , Qiang Hu
  • , Maochun Qin
  • , Jeffrey M. Conroy
  • , Lara E. Sucheston
  • , Christine B. Ambrosone
  • , Candace S. Johnson
  • , Jianmin Wang
  • , Song Liu
  • Roswell Park Cancer Institute

Research output: Contribution to journalArticlepeer-review

44 Scopus citations

Abstract

Background: Batch effect is one type of variability that is not of primary interest but ubiquitous in sizable genomic experiments. To minimize the impact of batch effects, an ideal experiment design should ensure the even distribution of biological groups and confounding factors across batches. However, due to the practical complications, the availability of the final collection of samples in genomics study might be unbalanced and incomplete, which, without appropriate attention in sample-to-batch allocation, could lead to drastic batch effects. Therefore, it is necessary to develop effective and handy tool to assign collected samples across batches in an appropriate way in order to minimize the impact of batch effects.Results: We describe OSAT (Optimal Sample Assignment Tool), a bioconductor package designed for automated sample-to-batch allocations in genomics experiments.Conclusions: OSAT is developed to facilitate the allocation of collected samples to different batches in genomics study. Through optimizing the even distribution of samples in groups of biological interest into different batches, it can reduce the confounding or correlation between batches and the biological variables of interest. It can also optimize the homogeneous distribution of confounding factors across batches. It can handle challenging instances where incomplete and unbalanced sample collections are involved as well as ideally balanced designs.

Original languageEnglish
Article number689
JournalBMC Genomics
Volume13
Issue number1
DOIs
StatePublished - Dec 10 2012

Cite this