RT Journal Article SR Electronic T1 Reproducible, flexible and high-throughput data extraction from primary literature: The metaDigitise R package JF bioRxiv FD Cold Spring Harbor Laboratory SP 247775 DO 10.1101/247775 A1 Pick, Joel L. A1 Nakagawa, Shinichi A1 Noble, Daniel W.A. YR 2018 UL http://biorxiv.org/content/early/2018/10/05/247775.abstract AB Research synthesis, such as comparative and meta-analyses, requires the extraction of effect sizes from primary literature, which are commonly calculated from descriptive statistics. However, the exact values of such statistics are commonly hidden in figures.Extracting descriptive statistics from figures can be a slow process that is not easily reproducible. Additionally, current software lacks an ability to incorporate important meta-data (e.g., sample sizes, treatment / variable names) about experiments and is not integrated with other software to streamline analysis pipelines.Here we present the R package metaDigitise which extracts descriptive statistics such as means, standard deviations and correlations from four plot types: 1) mean/error plots (e.g. bar graphs with standard errors), 2) box plots, 3) scatter plots and 4) histograms. metaDigitise is user-friendly and easy to learn as it interactively guides the user through the data extraction process. Notably, it enables large-scale extraction by automatically loading image files, letting the user stop processing, edit and add to the resulting data-frame at any point.Digitised data can be easily re-plotted and checked, facilitating reproducible data extraction from plots with little inter-observer bias. We hope that by making the process of figure extraction more flexible and easy to conduct it will improve the transparency and quality of meta-analyses in the future.