Batch effect

Such effects can lead to inaccurate conclusions when their causes are correlated with one or more outcomes of interest in an experiment.

They are common in many types of high-throughput sequencing experiments, including those using microarrays, mass spectrometers,[1] and single-cell RNA-sequencing data.

[2] They are most commonly discussed in the context of genomics and high-throughput sequencing research, but they exist in other fields of science as well.

Focusing on microarray experiments, they propose a new definition based on several previous ones: "[T]he batch effect represents the systematic technical differences when samples are processed and measured in different batches and which are unrelated to any biological variation recorded during the MAGE [microarray gene expression] experiment.

They have historically mostly focused on genomics experiments, and have only recently begun to expand into other scientific fields such as proteomics.