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Statistics in Oncology Series
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- Statistics in Thoracic OncologyOpen Archive
Time-To-Event Data: An Overview and Analysis Considerations
Journal of Thoracic OncologyVol. 16Issue 7p1067–1074Published online: April 19, 2021- Jennifer Le-Rademacher
- Xiaofei Wang
Cited in Scopus: 2In oncology, overall survival and progression-free survival are common time-to-event end points used to measure treatment efficacy. Analyses of this type of data rely on a complex statistical framework and the analysis results are only valid when the data meet certain assumptions. This article provides an overview of time-to-event data, the basic mechanics of common analysis methods, and issues often encountered when analyzing such data. Our goal is to provide clinicians and other lung cancer researchers with the knowledge to choose the appropriate time-to-event analysis methods and to interpret the outcomes of such analyses appropriately.