Statistical Methods & Thinking

Episode 13 | Survival Analysis: Making Sense of Time-to-Event Data

41 min · 3. Feb. 2026
Episode Episode 13 | Survival Analysis: Making Sense of Time-to-Event Data Cover

Beschreibung

In this episode, we introduce the core ideas behind analyzing time-to-event data—situations where the outcome isn’t just “what happened,” but when it happened. A key challenge is that some participants haven’t experienced the event yet by the end of follow-up (or they drop out), so the data are only partially observed. We build the intuition for describing how risk changes over time, then walk through three practical tools: how to estimate a survival curve from one group, how to compare two groups fairly over the whole follow-up, and how to study the role of multiple predictors while keeping the time dimension front and center.

Kommentare

0

Sei die erste Person, die kommentiert

Melde dich jetzt an und werde Teil der Statistical Methods & Thinking-Community!

Loslegen

2 Monate für 1 €

Dann 4,99 € / Monat · Jederzeit kündbar.

  • Podcasts nur bei Podimo
  • 20 Stunden Hörbücher / Monat
  • Alle kostenlosen Podcasts

Alle Folgen

13 Folgen

Episode Episode 11 | Finding Structure in Multivariate Data Cover

Episode 11 | Finding Structure in Multivariate Data

This episode is about what to do when your data has many variables at once. We start with the basic idea of how variables “move together” (correlation and covariance), and why that matters for understanding patterns in real datasets. Then we introduce dimension reduction—ways to compress lots of information into a few summary features, so you can see the main structure without getting lost in details. We explain how these methods find the directions where the data varies most, and how a simple “rotation” can make the results easier to interpret. We wrap up with practical rules of thumb for deciding how many components to keep, and a quick preview of how these ideas connect to grouping similar observations and classifying new cases.

2. Feb. 202644 min