Gerontologic Biostatistics 2.0: Developments over 10+ years in the age of data science

Chixiang Chen, Michelle Shardell, Jaime Lynn Speiser, Karen Bandeen-Roche, Heather Allore, Thomas G Travison, Michael Griswold, Terrence E. Murphy
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Abstract

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.
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老年生物统计学 2.0:数据科学时代的 10 多年发展历程
背景:老年生物统计学(Gerontologicbiostatistics,GBS)这一分支学科于 2010 年提出,旨在解决分析老年人研究数据时遇到的具体挑战。然而,自最初的 GBS 出版以来,不断发展的技术环境推动了数据科学和统计学的进步,大大扩展了老年学研究的范围。我们有必要说明这些进步是如何提高多模态数据和复杂表型的分析能力的,而这些正是老年学研究的特点。方法:本文介绍了 GBS 2.0,这是一套经过更新和扩展的分析方法,反映了老年生物统计学在当代和未来研究中的实践。结果:GBS2.0 的主题和相关软件资源包括:非实验设计的前沿方法;分析技术,包括机器学习的调整、深度表型测量的量化、高维组学分析;来自多项研究的信息整合,以及促进可重复性、可复制性和开放科学的策略。讨论:本文介绍的方法学主题旨在更新和扩展全球生物统计系统。通过促进生物统计学和数据科学在老年学中的综合应用,我们希望培养下一代老年学研究人员。
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