Statistical issues and methods in designing and analyzing survival studies

Cancer Rep (Hoboken). 2020 Aug;3(4):e1176. doi: 10.1002/cnr2.1176. Epub 2019 May 9.

Abstract

Background: Cancer studies that are designed for early detection and screening, or used for identifying prognostic factors, or assessing treatment efficacy and health outcome are frequently assessed with survival or time-to-event outcomes. These studies typically require specific methods of data analysis. Appropriate statistical methods in the context of study design and objectives are required for obtaining reliable results and valid inference. Unfortunately, variable methods for the same study objectives and dubious reporting have been noticed in the survival analysis of oncology research. Applied researchers often face difficulties in selecting appropriate statistical methods due to the complex nature of cancer studies.

Recent findings: In this report, we describe briefly major statistical issues along with related challenges in planning, designing, and analyzing of survival studies. For applied researchers, we provided flow charts for selecting appropriate statistical methods. Various available statistical procedures in common statistical packages for applying survival analysis were classified according to different objectives of the study. In addition, an illustration of the statistical analysis of some common types of time-to-event outcomes was shown with STATA codes.

Conclusions: We anticipate that this review article assists oncology researchers in understanding important statistical concepts involved in survival analysis and appropriately select the statistical approaches for survival analysis studies. Overall, the review may help in improving designing, conducting, analyzing, and reporting of data in survival studies.

Keywords: statistical methods; survival analysis; time-to-event analysis.

Publication types

  • Review

MeSH terms

  • Data Interpretation, Statistical*
  • Humans
  • Medical Oncology*
  • Research Design*
  • Sample Size
  • Survival Analysis*