RT Journal Article SR Electronic T1 Modeling error in experimental assays using the bootstrap principle: Understanding discrepancies between assays using different dispensing technologies JF bioRxiv FD Cold Spring Harbor Laboratory SP 033985 DO 10.1101/033985 A1 Sonya M. Hanson A1 Sean Ekins A1 John D. Chodera YR 2015 UL http://biorxiv.org/content/early/2015/12/09/033985.abstract AB All experimental assay data contains error, but the magnitude, type, and primary origin of this error is often not obvious. Here, we describe a simple set of assay modeling techniques based on the bootstrap principle that allow sources of error and bias to be simulated and propagated into assay results. We demonstrate how deceptively simple operations—such as the creation of a dilution series with a robotic liquid handler—can significantly amplify imprecision and even contribute substantially to bias. To illustrate these techniques, we review an example of how the choice of dispensing technology can impact assay measurements, and show how large contributions to discrepancies between assays can be easily understood and potentially corrected for. These simple modeling techniques—illustrated with an accompanying IPython notebook—can allow modelers to understand the expected error and bias in experimental datasets, and even help experimentalists design assays to more effectively reach accuracy and imprecision goals.