Department of Biostatistics, Mailman School of Public Health, Columbia University, New York, NY.
SWOG Statistics and Data Management Center, Fred Hutchinson Cancer Center, Seattle, WA.
JCO Clin Cancer Inform. 2023 Apr;7:e2200165. doi: 10.1200/CCI.22.00165.
Clinical trial adverse event (AE) data are increasingly complex and high-dimensional, especially for trials evaluating novel targeted agents and immunotherapies. Standard approaches to summarize and analyze AEs remain generally tabular, failing to describe the nature of AEs. Novel dynamic and data visualization methods are needed to enable a more comprehensive assessment of the overall toxicity profile of treatments.
We developed methods for visualizing the numerous categorizations and types of AEs along with a dynamic approach to better reflect its highly dimensional nature without sacrificing the reporting of rare events. Circular plots displaying the proportion of maximal-grade AEs by system organ classes (SOCs) and butterfly plots displaying the proportion of AEs by severity for each AE term were developed to enable comparisons of AE patterns by treatment arm. These approaches were applied to a randomized phase III trial (S1400I; ClinicalTrials.gov identifier: NCT02785952) comparing nivolumab with nivolumab plus ipilimumab in patients with stage IV squamous non-small-cell lung cancer.
Our visualizations revealed that patients randomly assigned to nivolumab and ipilimumab had higher rates of grade 3 or higher AEs compared with nivolumab alone for several SOCs, including musculoskeletal (5.6% 0.8%), skin (5.6% 0.8%), vascular (5.6% 1.6%), and cardiac (4% 1.6%) toxicities. They also suggested a pattern of higher prevalence of moderate GI and endocrine toxicities and showed that although the rates of cardiac and neurologic toxicities were similar, the types of events were discordant.
The graphical approaches we proposed enable a more comprehensive and intuitive evaluation of toxicity types by treatment groups, which is not apparent in tabular and descriptive reporting methods.
临床试验不良事件(AE)数据越来越复杂和高维,特别是对于评估新型靶向药物和免疫疗法的试验。总结和分析 AE 的标准方法通常仍然是表格形式,无法描述 AE 的性质。需要新颖的动态和数据可视化方法来更全面地评估治疗的整体毒性概况。
我们开发了可视化大量分类和 AE 类型的方法,以及一种动态方法,以更好地反映其高维性质,同时不牺牲对罕见事件的报告。开发了圆形图来显示按系统器官分类(SOC)的最大等级 AE 的比例,以及蝴蝶图来显示每个 AE 术语的严重程度的 AE 比例,以实现按治疗臂比较 AE 模式。这些方法应用于一项随机 III 期试验(S1400I;ClinicalTrials.gov 标识符:NCT02785952),比较纳武单抗与纳武单抗联合伊匹单抗在 IV 期鳞状非小细胞肺癌患者中的疗效。
我们的可视化结果表明,与纳武单抗单药治疗相比,随机分配接受纳武单抗和伊匹单抗治疗的患者在几个 SOC 中出现 3 级或更高级别的 AE 的发生率更高,包括肌肉骨骼(5.6% 0.8%)、皮肤(5.6% 0.8%)、血管(5.6% 1.6%)和心脏(4% 1.6%)毒性。它们还表明存在较高的中度胃肠道和内分泌毒性的流行模式,并表明尽管心脏和神经系统毒性的发生率相似,但事件类型却不同。
我们提出的图形方法能够更全面、直观地评估治疗组的毒性类型,这在表格和描述性报告方法中并不明显。