真实世界数据何时才能兑现其在肿瘤学领域提供及时见解的承诺?

IF 3.3 Q2 ONCOLOGY
Marc L Berger, Patricia A Ganz, Kelly H Zou, Sheldon Greenfield
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引用次数: 0

摘要

随机试验为选定的临床问题提供了高质量、内部一致的数据,但对于经常被诊断为癌症并患有可能影响治疗效果解释的合并症的老龄人口来说,随机试验缺乏普遍性。现在比以往任何时候都更需要高质量、相关和及时的数据。有希望的解决方案在于收集和分析真实世界数据(RWD),这些数据有可能为患者在初始治疗期间和之后的治疗过程以及老年人、农村人口、儿童和有更多社会健康需求的患者等重要亚群的治疗结果提供及时的见解。然而,要为实践和政策提供信息,必须从可信的、全面的 RWD 来源中获取真实世界的证据;这些来源可能包括实用的临床试验、登记处、前瞻性观察研究、电子健康记录 (EHR)、行政索赔和数字技术。肿瘤学面临着独特的挑战,因为关键参数(如癌症分期、生物标记物状态、基因组检测、成像反应、副作用、生活质量)没有记录、被孤立在无法访问的文档中,或者只能以自由文本或非结构化报告的形式出现在电子病历中。人工智能等分析技术的进步可能会大大提高从电子病历中获取更精细信息的能力,并为综合诊断提供支持;但是,这些技术还需要逐项进行验证。我们建议致力于实现不同来源数据的标准化,并建立能够产生适合目的的 RWD 的基础设施,以便及时了解个别干预措施的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
When Will Real-World Data Fulfill Its Promise to Provide Timely Insights in Oncology?

Randomized trials provide high-quality, internally consistent data on selected clinical questions, but lack generalizability for the aging population who are most often diagnosed with cancer and have comorbid conditions that may affect the interpretation of treatment benefit. The need for high-quality, relevant, and timely data is greater than ever. Promising solutions lie in the collection and analysis of real-world data (RWD), which can potentially provide timely insights about the patient's course during and after initial treatment and the outcomes of important subgroups such as the elderly, rural populations, children, and patients with greater social health needs. However, to inform practice and policy, real-world evidence must be created from trustworthy and comprehensive sources of RWD; these may include pragmatic clinical trials, registries, prospective observational studies, electronic health records (EHRs), administrative claims, and digital technologies. There are unique challenges in oncology since key parameters (eg, cancer stage, biomarker status, genomic assays, imaging response, side effects, quality of life) are not recorded, siloed in inaccessible documents, or available only as free text or unstructured reports in the EHR. Advances in analytics, such as artificial intelligence, may greatly enhance the ability to obtain more granular information from EHRs and support integrated diagnostics; however, they will need to be validated purpose by purpose. We recommend a commitment to standardizing data across sources and building infrastructures that can produce fit-for-purpose RWD that will provide timely understanding of the effectiveness of individual interventions.

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来源期刊
CiteScore
6.20
自引率
4.80%
发文量
190
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