Data Science x Public Health

This Is Why Competing Risks Don’t Work (And Nobody Talks About It)

4 min · 6 de may de 2026
Portada del episodio This Is Why Competing Risks Don’t Work (And Nobody Talks About It)

Descripción

Competing risks methods are often presented as a more realistic way to analyze time-to-event data in epidemiology and public health. They promise to handle situations where other events prevent the outcome of interest from ever occurring. But what if the method becomes more sophisticated while the interpretation becomes less clear?  In this episode, we break down why competing risks analyses are often overtrusted, how the choice of estimand quietly changes what the result means, and why better methods do not remove the need for sharper scientific thinking. 👉 Enjoyed the episode? Follow the show to get new episodes automatically. If you found the content helpful, consider leaving a rating or review—it helps support the podcast. For business and sponsorship inquiries, email us at: 📧 contact@bjanalytics.com [contact@bjanalytics.com] Youtube: https://www.youtube.com/@BJANALYTICS [https://www.youtube.com/@BJANALYTICS] Instagram: https://www.instagram.com/bjanalyticsconsulting/ [https://www.instagram.com/bjanalyticsconsulting/] Twitter/X: https://x.com/BJANALYTICS [https://x.com/BJANALYTICS] Threads: https://www.threads.com/@bjanalyticsconsulting [https://www.threads.com/@bjanalyticsconsulting]

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