Chixiang Chen, Michelle Shardell, Jaime Lynn Speiser, Karen Bandeen-Roche, Heather Allore, Thomas G Travison, Michael Griswold, Terrence E. Murphy
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Gerontologic Biostatistics 2.0: Developments over 10+ years in the age of data science
Background: Introduced in 2010, the sub-discipline of gerontologic
biostatistics (GBS) was conceptualized to address the specific challenges in
analyzing data from research studies involving older adults. However, the
evolving technological landscape has catalyzed data science and statistical
advancements since the original GBS publication, greatly expanding the scope of
gerontologic research. There is a need to describe how these advancements
enhance the analysis of multi-modal data and complex phenotypes that are
hallmarks of gerontologic research. Methods: This paper introduces GBS 2.0, an
updated and expanded set of analytical methods reflective of the practice of
gerontologic biostatistics in contemporary and future research. Results: GBS
2.0 topics and relevant software resources include cutting-edge methods in
experimental design; analytical techniques that include adaptations of machine
learning, quantifying deep phenotypic measurements, high-dimensional -omics
analysis; the integration of information from multiple studies, and strategies
to foster reproducibility, replicability, and open science. Discussion: The
methodological topics presented here seek to update and expand GBS. By
facilitating the synthesis of biostatistics and data science in gerontology, we
aim to foster the next generation of gerontologic researchers.