Sample Size Estimation in Clinical Trials

Divyangkumar Patel
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Abstract

Sample size estimation remains as a cornerstone in the meticulous planning and execution of clinical trials, pivotal for ensuring studies possess the requisite statistical power to discern meaningful treatment effects. Insufficient sample sizes compromise the robustness of findings, whereas excessively large samples inflate costs and compromise data integrity. This article meticulously explains the multifaceted factors that outline sample size determination, encompassing various factors such as research design, types of hypotheses, error thresholds, effect size considerations, validity and precision. It investigates into the scope of methodologies available for sample size computation, spanning from intricate statistical formulas to pragmatic tabular approaches. Moreover, it underscores the significance of post-hoc power analysis in retrospectively evaluating completed studies, shedding light on their statistical robustness. This literature review furnishes a nuanced understanding of the sample size estimation landscape in clinical trials, delineating their strengths, limitations, and real-world applications. Anticipating participant attrition assumes paramount importance for proactively adjusting sample sizes, ensuring studies remain methodologically sound. Equipped with a profound grasp of these principles, researchers are empowered to conduct scientifically rigorous and impactful clinical trials, furnishing compelling evidence to inform judicious decision-making in healthcare interventions.
临床试验中的样本量估算
样本量估算仍然是临床试验精心策划和执行的基石,是确保研究具有必要的统计能力以发现有意义的治疗效果的关键。样本量不足会影响研究结果的稳健性,而样本量过大则会增加成本并影响数据的完整性。本文详细解释了确定样本量的多方面因素,包括研究设计、假设类型、误差临界值、效应大小考虑、有效性和精确性等各种因素。文章探讨了样本量计算的方法范围,从复杂的统计公式到实用的表格方法,不一而足。此外,它还强调了在回顾性评估已完成的研究时进行事后功率分析的重要性,并揭示了这些研究的统计稳健性。这篇文献综述提供了对临床试验样本量估计方法的细微理解,描述了它们的优势、局限性和在现实世界中的应用。预测参与者的流失对于主动调整样本量、确保研究在方法上的合理性至关重要。掌握了这些原则,研究人员就有能力开展科学严谨、影响深远的临床试验,为医疗保健干预措施的明智决策提供有力证据。
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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