Department of Cancer Epidemiology, Moffitt Cancer Center, Tampa, FL, USA.
Department of Machine Learning, Moffitt Cancer Center, Tampa, FL, USA.
JNCI Cancer Spectr. 2023 Oct 31;7(6). doi: 10.1093/jncics/pkad074.
Randomized clinical trials of novel treatments for solid tumors normally measure disease progression using the Response Evaluation Criteria in Solid Tumors. However, novel, scalable approaches to estimate disease progression using real-world data are needed to advance cancer outcomes research. The purpose of this narrative review is to summarize examples from the existing literature on approaches to estimate real-world disease progression and their relative strengths and limitations, using lung cancer as a case study.
A narrative literature review was conducted in PubMed to identify articles that used approaches to estimate real-world disease progression in lung cancer patients. Data abstracted included data source, approach used to estimate real-world progression, and comparison to a selected gold standard (if applicable).
A total of 40 articles were identified from 2008 to 2022. Five approaches to estimate real-world disease progression were identified including manual abstraction of medical records, natural language processing of clinical notes and/or radiology reports, treatment-based algorithms, changes in tumor volume, and delta radiomics-based approaches. The accuracy of these progression approaches were assessed using different methods, including correlations between real-world endpoints and overall survival for manual abstraction (Spearman rank ρ = 0.61-0.84) and area under the curve for natural language processing approaches (area under the curve = 0.86-0.96).
Real-world disease progression has been measured in several observational studies of lung cancer. However, comparing the accuracy of methods across studies is challenging, in part, because of the lack of a gold standard and the different methods used to evaluate accuracy. Concerted efforts are needed to define a gold standard and quality metrics for real-world data.
针对实体瘤的新型治疗方法的随机临床试验通常使用实体瘤反应评估标准来衡量疾病进展。然而,需要使用真实世界数据来估计疾病进展的新颖、可扩展方法,以推进癌症结果研究。本文的目的是综述现有文献中使用真实世界数据来估计疾病进展的方法,并举例说明这些方法的相对优势和局限性,以肺癌为例。
在 PubMed 中进行了叙述性文献综述,以确定使用肺癌患者真实世界疾病进展估计方法的文章。提取的数据包括数据来源、用于估计真实世界进展的方法以及与选定的金标准(如果适用)的比较。
从 2008 年到 2022 年,共确定了 40 篇文章。确定了五种估计真实世界疾病进展的方法,包括病历的手动摘录、临床记录和/或放射学报告的自然语言处理、基于治疗的算法、肿瘤体积变化和 delta 放射组学方法。使用不同的方法评估了这些进展方法的准确性,包括手动摘录的真实世界终点与总生存期之间的相关性(Spearman 秩 ρ = 0.61-0.84)和自然语言处理方法的曲线下面积(曲线下面积 = 0.86-0.96)。
在几项关于肺癌的观察性研究中已经测量了真实世界的疾病进展。然而,由于缺乏金标准和用于评估准确性的不同方法,比较研究之间方法的准确性具有挑战性。需要共同努力来定义真实世界数据的金标准和质量指标。