Longitudinal studies: focus on trajectory analysis in kidney diseases.

IF 2.7 4区 医学 Q2 UROLOGY & NEPHROLOGY
Carmine Zoccali, Giovanni Tripepi
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引用次数: 0

Abstract

Longitudinal cohort studies are pivotal in medical research for understanding disease progression over time. These studies track a group of individuals across multiple time points, enabling the identification of risk factors and the evaluation of interventions. Traditional methods like linear mixed models, generalized estimating equations, and survival analysis often fall short in capturing the complex, non-linear patterns of disease progression. Trajectory analysis, a statistical technique that identifies distinct paths within longitudinal data, offers a more nuanced approach. This review delves into the methodological foundations of trajectory analysis, including data preparation, model selection, parameter estimation, model evaluation, and interpretation. It highlights the advantages of trajectory analysis, such as its ability to capture heterogeneity, handle various data types, and enhance predictive power. The application of trajectory analysis in nephrology, particularly in chronic kidney disease and diabetic nephropathy, demonstrates its utility in identifying distinct subgroups with different disease trajectories. Studies have shown that trajectory analysis can uncover patterns of renal function decline and proteinuria progression, providing insights that inform personalized treatment strategies. Despite its strengths, trajectory analysis requires advanced statistical knowledge, computational resources, and large sample sizes, which can be barriers for some researchers. Nevertheless, its ability to reveal complex disease patterns and improve predictive accuracy makes it a valuable tool in longitudinal studies. This review underscores the potential of trajectory analysis to enhance our understanding of disease progression and improve patient outcomes in nephrology and beyond.

纵向研究:关注肾脏疾病的轨迹分析。
纵向队列研究是医学研究中了解疾病随时间进展的关键。这些研究跨越多个时间点跟踪一组个体,从而能够识别风险因素并评估干预措施。传统的方法,如线性混合模型、广义估计方程和生存分析,在捕捉疾病进展的复杂、非线性模式方面往往不足。轨迹分析是一种统计技术,可以识别纵向数据中的不同路径,它提供了一种更微妙的方法。这篇综述深入探讨了轨迹分析的方法论基础,包括数据准备、模型选择、参数估计、模型评估和解释。它强调了轨迹分析的优点,例如它能够捕获异质性,处理各种数据类型,并增强预测能力。轨迹分析在肾脏病学中的应用,特别是在慢性肾脏疾病和糖尿病肾病方面的应用,证明了其在识别具有不同疾病轨迹的不同亚群方面的实用性。研究表明,轨迹分析可以揭示肾功能下降和蛋白尿进展的模式,为个性化治疗策略提供见解。尽管轨迹分析具有优势,但它需要先进的统计知识、计算资源和大样本量,这对一些研究人员来说可能是障碍。尽管如此,其揭示复杂疾病模式和提高预测准确性的能力使其成为纵向研究中有价值的工具。本综述强调了轨迹分析的潜力,以增强我们对疾病进展的理解,并改善肾病学及其他领域的患者预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Nephrology
Journal of Nephrology 医学-泌尿学与肾脏学
CiteScore
5.60
自引率
5.90%
发文量
289
审稿时长
3-8 weeks
期刊介绍: Journal of Nephrology is a bimonthly journal that considers publication of peer reviewed original manuscripts dealing with both clinical and laboratory investigations of relevance to the broad fields of Nephrology, Dialysis and Transplantation. It is the Official Journal of the Italian Society of Nephrology (SIN).
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