荟萃分析的异质性:一个不可避免的挑战,值得探索。

IF 4.2 4区 医学 Q1 ANESTHESIOLOGY
Geun Joo Choi, Hyun Kang
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引用次数: 0

摘要

异质性是荟萃分析的一个关键但不可避免的方面,它反映了超出偶然预期的研究结果的差异。这些差异源于研究人群、干预措施、方法和测量工具的差异,并可能影响关键的元分析输出,包括汇总效应大小、置信区间和总体结论。系统综述和荟萃分析结合了来自不同研究的证据;因此,对异质性的清晰理解对于可靠和有意义的结果解释是必要的。这篇综述考察了这种异质性的概念、来源、测量技术和含义。统计工具(如科克伦的Q, I²和τ²)量化异质性,而τ和预测区间,因为它们使用相同的单位,有助于直观地理解异质性。固定效应和随机效应模型之间的选择也会显著影响meta分析中对异质性的处理和解释。有效的管理策略包括亚组分析、敏感性分析和元回归,这些方法可以确定变异的来源并加强研究结果的稳健性。尽管异质性使单一效应大小的综合变得复杂,但它为研究之间的模式和差异提供了有价值的见解。认识和理解异质性对于准确地综合证据至关重要,这可以表明干预是否具有一致的效果、益处或危害。研究人员和临床医生不应将异质性视为本质上的好坏,而应将其视为系统评价和荟萃分析的关键组成部分,从而对综合发现进行更深入的理解和更细致的应用。解决异质性最终提高了可靠性、适用性和meta分析结论的整体影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heterogeneity in meta-analyses: an unavoidable challenge worth exploring.

Heterogeneity is a critical but unavoidable aspect of meta-analyses that reflects differences in study outcomes beyond what is expected by chance. These variations arise from differences in the study populations, interventions, methodologies, and measurement tools and can influence key meta-analytical outputs, including pooled effect sizes, confidence intervals, and overall conclusions. Systematic reviews and meta-analyses combine evidence from diverse studies; thus, a clear understanding of heterogeneity is necessary for reliable and meaningful interpretations of the results. This review examines the concepts, sources, measurement techniques, and implications of this heterogeneity. Statistical tools (e.g. Cochran's Q, I², and τ²) quantify heterogeneity, whereas τ and prediction intervals, as they use the same units, aid in the intuitive understanding of heterogeneity. The choice between fixed- and random-effects models can also significantly affect the handling and interpretation of heterogeneity in meta-analyses. Effective management strategies include subgroup analyses, sensitivity analyses, and meta-regressions, which identify sources of variability and strengthen the robustness of the findings. Although heterogeneity complicates the synthesis of a single effect size, it offers valuable insights into patterns and differences among studies. Recognizing and understanding heterogeneity is vital for accurately synthesizing the evidence, which can indicate whether an intervention has consistent effects, benefits, or harms. Rather than viewing heterogeneity as inherently good or bad, researchers and clinicians should consider it a key component of systematic reviews and meta-analyses, allowing for a deeper understanding and more nuanced application of pooled findings. Addressing heterogeneity ultimately enhances the reliability, applicability, and overall impact of the conclusions of meta-analyses.

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来源期刊
CiteScore
6.20
自引率
6.90%
发文量
84
审稿时长
16 weeks
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