Survival analysis is a crucial statistical method in biomedical research, focusing on time-to-event data. It allows researchers to study the timing of events like disease onset or treatment outcomes, even when some subjects haven't experienced the event by the study's end. Key concepts include censoring, survival and hazard functions, and the Kaplan-Meier method. The Cox proportional hazards model is widely used to analyze the effects of multiple factors on survival. These tools help researchers compare treatments, identify risk factors, and develop prognostic models in various medical fields.