Techniki analizy przeżycia stosowane w onkologii — założenia, metodyka i typowe problemy interpretacyjne Methods of survival analysis applied in oncology — assumptions, methods and common pitfalls

2011 
Survival analysis is the analytical foundation of studies on cancer-related mortality or disease progression. Analytical techniques used for this purpose share one common trait — the uncertainty of the event’s occurrence in individuals, whose observation time has been censored due to study termination, withdrawal due to events other than prespecified endpoints or loss to follow-up. The main advantage of such analytical methods is the possibility to estimate individual hazard (risk of event occurrence) at any given timepoint of observation and consequently of expected survival time depending on a plethora of clinical variables and treatment modalities. Due to a huge and ever-expanding amount of oncologic data using survival analysis as a primary measure of outcome, the ability to interpret such results and to know the assumptions and workings of particular methods is slowly becoming ubiquitous. Analytical methods deployed on survival data feature univariate nonparametric ones (the log-rank test), multivariate modeling techniques (assuming proportional or additive risk), automated neural networks and classification-regression trees. The purpose of this review was to present and discuss in detail the available range of analytic and exploratory methods
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