| Literature DB >> 34950945 |
Daniella E Chusyd1, Steven N Austad2,3, Andrew W Brown4, Xiwei Chen1, Stephanie L Dickinson1, Keisuke Ejima1, David Fluharty1,5, Lilian Golzarri-Arroyo1, Richard Holden6, Jasmine Jamshidi-Naeini1, Doug Landsittel1, Stella Lartey1, Edward Mannix7, Colby J Vorland4, David B Allison1.
Abstract
This review identifies frequent design and analysis errors in aging and senescence research and discusses best practices in study design, statistical methods, analyses, and interpretation. Recommendations are offered for how to avoid these problems. The following issues are addressed: 1) errors in randomization, 2) errors related to testing within-group instead of between-group differences, 3) failing to account for clustering, 4) failing to consider interference effects, 5) standardizing metrics of effect size, 6) maximum lifespan testing, 7) testing for effects beyond the mean, 8) tests for power and sample size, 9) compression of morbidity versus survival curve-squaring, and 10) other hot topics, including modeling high-dimensional data and complex relationships and assessing model assumptions and biases. We hope that bringing increased awareness of these topics to the scientific community will emphasize the importance of employing sound statistical practices in all aspects of aging and senescence research.Entities:
Keywords: geroscience; methodologies; reproducibility
Year: 2021 PMID: 34950945 DOI: 10.1093/gerona/glab382
Source DB: PubMed Journal: J Gerontol A Biol Sci Med Sci ISSN: 1079-5006 Impact factor: 6.053