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Trajectory Modelling Techniques Useful to Epidemiological Research: A Comparative Narrative Review of Approaches

机译:流行病学研究有用的轨迹建模技术:对方法的比较叙事综述

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摘要

Trajectory modelling techniques have been developed to determine subgroups within a given population and are increasingly used to better understand intra- and inter-individual variability in health outcome patterns over time. The objectives of this narrative review are to explore various trajectory modelling approaches useful to epidemiological research and give an overview of their applications and differences. Guidance for reporting on the results of trajectory modelling is also covered. Trajectory modelling techniques reviewed include latent class modelling approaches, ie, growth mixture modelling (GMM), group-based trajectory modelling (GBTM), latent class analysis (LCA), and latent transition analysis (LTA). A parallel is drawn to other individual-centered statistical approaches such as cluster analysis (CA) and sequence analysis (SA). Depending on the research question and type of data, a number of approaches can be used for trajectory modelling of health outcomes measured in longitudinal studies. However, the various terms to designate latent class modelling approaches (GMM, GBTM, LTA, LCA) are used inconsistently and often interchangeably in the available scientific literature. Improved consistency in the terminology and reporting guidelines have the potential to increase researchers’ efficiency when it comes to choosing the most appropriate technique that best suits their research questions.
机译:已经开发出轨迹建模技术以确定给定群体内的子组,并且越来越多地用于更好地了解健康结果模式的内部和间间可变性。这个叙事审查的目标是探讨有助于流行病学研究的各种轨迹建模方法,并概述其应用和差异。还涵盖了报告轨迹建模结果的指导。拍摄的轨迹建模技术包括潜在类建模方法,即生长混合建模(GMM),基于组的轨迹建模(GBTM),潜在课程分析(LCA)和潜在转换分析(LTA)。并行地被绘制到其他以各个中心的统计方法,例如聚类分析(CA)和序列分析(SA)。根据研究问题和数据类型,许多方法可用于在纵向研究中测量的健康结果的轨迹建模。然而,指定潜在类建模方法(GMM,GBTM,LTA,LCA)的各种术语被不一致,通常在可用的科学文献中互换。在术语和报告指南中提高了一致性,在选择最适合其研究问题的最合适的技术方面有可能提高研究人员的效率。

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