Biomarkers of Heart Health Don’t Improve Our Predictions of Heart Disease

Understanding why strong associations don’t always equal strong predictions.

F. Perry Wilson, MD MSCE
7 min readMay 14, 2024

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It’s the counterintuitive stuff in epidemiology that always really interests me. One intuition many of us have is that if a risk factor is significantly associated with an outcome, knowledge of that risk factor would help to predict that outcome. Makes sense. Feels right.

But it’s not right. Not always.

A fake example to illustrate my point. Let’s say we have 10,000 individuals who we follow for 10 years — and 2000 of them die — it’s been a rough decade. At baseline, I had measured a novel biomarker — the Perry Factor — in everyone. To keep it simple, the Perry Factor has only two values, 0 or 1.

I then do a standard associational analysis — and find this. Individuals who are positive for the Perry Factor have a 40-fold higher odds of death than those who are negative for it. I am beginning to reconsider ascribing my good name to this biomarker. This is a highly statistically significant result — a p-value less than 0.001.

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F. Perry Wilson, MD MSCE

Medicine, science, statistics. Associate Professor of Medicine and Public Health at Yale. New book “How Medicine Works and When it Doesn’t” available now.