Time course measurements are used for many applications in biomedical research, ranging from growth curves to drug efficacy testing and high-throughput screening. Statistical methods used to analyze the resulting longitudinal data, such as t-tests or repeated measures ANOVA have limitations when groups are unbalanced, or individual measurements are missing. To address these issues we developed biogrowleR (https://upbri.gitlab.io/biogrowleR/), a workflow to visualize and analyze data based on Frequentist and Bayesian inference combined with hierarchical modeling. By focusing on effect sizes we enhance data interpretation. The workflow further includes a randomization algorithm important to reduce numbers of experimental animals (RRR) and costs. The workflow and R package were designed to be used by researchers with limited experience in R and biostatistics. Our open-source R package biogrowleR contains tutorials, pipelines, and helper functions for the analysis of longitudinal data and enables non computational scientists to perform more effective data analysis.
biogrowleR: Enhancing Longitudinal Data Analysis.
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作者:Ronchi Carlos, Ambrosini Giovanna, Hughes Flavia, Flaherty Renée L, Quinn Hazel M, Matvienko Daria, Agnoletto Andrea, Brisken Cathrin
| 期刊: | Journal of Mammary Gland Biology and Neoplasia | 影响因子: | 3.600 |
| 时间: | 2025 | 起止号: | 2025 Jun 3; 30(1):9 |
| doi: | 10.1007/s10911-025-09583-7 | ||
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