Revolutionizing Patient-Reported Outcomes Analysis for Oncology Drug Development Using Population Models.

IF 10 1区 医学 Q1 ONCOLOGY
Jiawei Zhou, Benyam Muluneh, Quefeng Li, Jim H Hughes
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引用次数: 0

Abstract

Patient-reported outcomes (PRO) play a crucial role as clinical endpoint in oncology trials. Traditional statistical methods, such as hypothesis testing, have been commonly used by pharmaceutical industry and regulators to evaluate treatment efficacy on PRO endpoints. However, the analysis of PRO data remains challenging because of high variability and missing data issues. In this study, we will present examples in which inappropriate statistical analyses of PRO data can confound treatment efficacy analyses. To overcome these challenges, we propose the application of individual participant data and population models. Population models have been extensively used in pharmacokinetics and pharmacodynamics analyses and are well accepted by regulators. However, their potential in PRO data analyses, particularly in the field of oncology, remains largely untapped. This perspective article aims to highlight the value of population modeling approaches in PRO data analyses for oncology clinicians and researchers. Population models integrate individual participant data and can effectively handle the substantial variability in PRO measurements by incorporating covariates, between-subject variability, and accounting for measurement noise. By leveraging information from the population, this approach also provides accurate estimations for participants with missing data or sparse sampling. Moreover, these models could be applied to predict long-term PRO dynamics. If used appropriately, population modeling approaches could revolutionize the analysis of PRO data in oncology drug development, enabling a more comprehensive understanding of the impact of treatment on patients' lives. Our aim is to encourage stakeholders to consider population modeling as a standard and effective tool to enhance decision-making and ultimately improve patient care.

利用人口模型革新肿瘤药物开发的患者报告结果分析。
在肿瘤临床试验中,患者报告预后(PRO)作为临床终点起着至关重要的作用。传统的统计方法,如假设检验,已被制药行业和监管机构普遍用于评估治疗效果在PRO终点。然而,由于高变异性和数据缺失问题,PRO数据的分析仍然具有挑战性。在这里,我们将介绍一些例子,其中不适当的PRO数据统计分析可能混淆治疗疗效分析。为了克服这些挑战,我们提出了个体参与者数据和人口模型的应用。群体模型已广泛应用于药代动力学和药效学分析,并被监管机构广泛接受。然而,它们在PRO数据分析中的潜力,特别是在肿瘤学领域,很大程度上仍未得到开发。这篇前瞻性论文旨在强调肿瘤临床医生和研究人员在PRO数据分析中的人口建模方法的价值。总体模型整合了个体参与者的数据,通过纳入协变量、受试者间变异性和考虑测量噪声,可以有效地处理PRO测量中的大量变异性。通过利用来自总体的信息,该方法还为缺少数据或稀疏抽样的参与者提供准确的估计。此外,这些模型可用于预测PRO的长期动态。如果使用得当,人口建模方法可以彻底改变肿瘤药物开发中的PRO数据分析,使人们能够更全面地了解治疗对患者生活的影响。我们的目标是鼓励利益相关者考虑人口模型作为一个标准和有效的工具,以加强决策,并最终改善病人护理。
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
Clinical Cancer Research
Clinical Cancer Research 医学-肿瘤学
CiteScore
20.10
自引率
1.70%
发文量
1207
审稿时长
2.1 months
期刊介绍: Clinical Cancer Research is a journal focusing on groundbreaking research in cancer, specifically in the areas where the laboratory and the clinic intersect. Our primary interest lies in clinical trials that investigate novel treatments, accompanied by research on pharmacology, molecular alterations, and biomarkers that can predict response or resistance to these treatments. Furthermore, we prioritize laboratory and animal studies that explore new drugs and targeted agents with the potential to advance to clinical trials. We also encourage research on targetable mechanisms of cancer development, progression, and metastasis.
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