Author:
Diniz Márcio A.,Gresham Gillian,Kim Sungjin,Luu Michael,Henry N. Lynn,Tighiouart Mourad,Yothers Greg,Ganz Patricia A.,Rogatko André
Abstract
Abstract
Background
Graphical displays and data visualization are essential components of statistical analysis that can lead to improved understanding of clinical trial adverse event (AE) data. Correspondence analysis (CA) has been introduced decades ago as a multivariate technique that can communicate AE contingency tables using two-dimensional plots, while quantifying the loss of information as other dimension reduction techniques such as principal components and factor analysis.
Methods
We propose the application of stacked CA using contribution biplots as a tool to explore differences in AE data among treatments in clinical trials. We defined five levels of refinement for the analysis based on data derived from the Common Terminology Criteria for Adverse Events (CTCAE) grades, domains, terms and their combinations. In addition, we developed a Shiny app built in an R-package, visae, publicly available on Comprehensive R Archive Network (CRAN), to interactively investigate CA configurations based on the contribution to the explained variance and relative frequency of AEs. Data from two randomized controlled trials (RCT) were used to illustrate the proposed methods: NSABP R-04, a neoadjuvant rectal 2 × 2 factorial trial comparing radiation therapy with either capecitabine (Cape) or 5-fluorouracil (5-FU) alone with or without oxaliplatin (Oxa), and NSABP B-35, a double-blind RCT comparing tamoxifen to anastrozole in postmenopausal women with hormone-positive ductal carcinoma in situ.
Results
In the R04 trial (n = 1308), CA biplots displayed the discrepancies between single agent treatments and their combinations with Oxa at all levels of AE classes, such that these discrepancies were responsible for the largest portion of the explained variability among treatments. In addition, an interaction effect when adding Oxa to Cape/5-FU was identified when the distance between Cape+Oxa and 5-FU + Oxa was observed to be larger than the distance between 5-FU and Cape, with Cape+Oxa and 5-FU + Oxa in different quadrants of the CA biplots. In the B35 trial (n = 3009), CA biplots showed different patterns for non-adherent Anastrozole and Tamoxifen compared with their adherent counterparts.
Conclusion
CA with contribution biplot is an effective tool that can be used to summarize AE data in a two-dimensional display while minimizing the loss of information and interpretation.
Publisher
Springer Science and Business Media LLC
Subject
Health Informatics,Epidemiology
Reference37 articles.
1. of Health, U.D., Services, H, et al. National Cancer Institute: Common Terminology Criteria for Adverse Events (CTCAE) Version 4.0. Bethesda: National Cancer Institute; 2009. [cited 2015 Sep 22]
2. Phillips R, Hazell L, Sauzet O, Cornelius V. Analysis and reporting of adverse events in randomised controlled trials: a review. BMJ Open. 2019;9(2):024537.
3. Lee S, Hershman D, Martin P, Leonard J, Cheung Y. Toxicity burden score: a novel approach to summarize multiple toxic effects. Ann Oncol. 2011;23(2):537–41. https://doi.org/10.1093/annonc/mdr146.
4. Thanarajasingam G, Atherton PJ, Novotny PJ, Loprinzi CL, Sloan JA, Grothey A. Longitudinal adverse event assessment in oncology clinical trials: the toxicity over time (toxt) analysis of alliance trials ncctg n9741 and 979254. Lancet Oncol. 2016;17(5):663–70. https://doi.org/10.1016/S1470-2045(16)00038-3.
5. Gresham G, Diniz MA, Razaee ZS, Luu M, Kim S, Hays RD, et al. Evaluating treatment tolerability in cancer clinical trials using the toxicity index. J Natl Cancer Instit. 2020;112(12):1266–74.
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