Natural History and Real-World Data in Rare Diseases: Applications, Limitations, and Future Perspectives.

IF 2.4 4区 医学 Q3 PHARMACOLOGY & PHARMACY
Jing Liu, Jeffrey S Barrett, Efthimia T Leonardi, Lucy Lee, Satrajit Roychoudhury, Yong Chen, Panayiota Trifillis
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Abstract

Rare diseases represent a highly heterogeneous group of disorders with high phenotypic and genotypic diversity within individual conditions. Due to the small numbers of people affected, there are unique challenges in understanding rare diseases and drug development for these conditions, including patient identification and recruitment, trial design, and costs. Natural history data and real-world data (RWD) play significant roles in defining and characterizing disease progression, final patient populations, novel biomarkers, genetic relationships, and treatment effects. This review provides an introduction to rare diseases, natural history data, RWD, and real-world evidence, the respective sources and applications of these data in several rare diseases. Considerations for data quality and limitations when using natural history and RWD are also elaborated. Opportunities are highlighted for cross-sector collaboration, standardized and high-quality data collection using new technologies, and more comprehensive evidence generation using quantitative approaches such as disease progression modeling, artificial intelligence, and machine learning. Advanced statistical approaches to integrate natural history data and RWD to further disease understanding and guide more efficient clinical study design and data analysis in drug development in rare diseases are also discussed.

Abstract Image

罕见疾病的自然史和真实世界数据:应用、局限性和未来展望》。
罕见病是一类高度异质性的疾病,在单个病症中具有高度的表型和基因型多样性。由于患病人数少,在了解罕见病和针对这些疾病的药物开发方面存在独特的挑战,包括患者识别和招募、试验设计和成本。自然史数据和真实世界数据(RWD)在定义和描述疾病进展、最终患者人群、新型生物标记物、遗传关系和治疗效果方面发挥着重要作用。本综述介绍了罕见病、自然史数据、RWD 和真实世界证据,以及这些数据在几种罕见病中的各自来源和应用。此外,还阐述了使用自然病史和 RWD 时对数据质量和局限性的考虑。强调了跨部门合作、使用新技术进行标准化和高质量数据收集以及使用疾病进展建模、人工智能和机器学习等定量方法生成更全面证据的机会。此外,还讨论了整合自然病史数据和 RWD 的先进统计方法,以进一步了解疾病,指导罕见病药物开发中更高效的临床研究设计和数据分析。
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
CiteScore
5.10
自引率
3.40%
发文量
176
审稿时长
2 months
期刊介绍: The Journal of Clinical Pharmacology (JCP) is a Human Pharmacology journal designed to provide physicians, pharmacists, research scientists, regulatory scientists, drug developers and academic colleagues a forum to present research in all aspects of Clinical Pharmacology. This includes original research in pharmacokinetics, pharmacogenetics/pharmacogenomics, pharmacometrics, physiologic based pharmacokinetic modeling, drug interactions, therapeutic drug monitoring, regulatory sciences (including unique methods of data analysis), special population studies, drug development, pharmacovigilance, womens’ health, pediatric pharmacology, and pharmacodynamics. Additionally, JCP publishes review articles, commentaries and educational manuscripts. The Journal also serves as an instrument to disseminate Public Policy statements from the American College of Clinical Pharmacology.
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