Prognosis vs. Prediction in Precision Medicine

Prognostic Biomarker: provides information about the patients’ overall outcome, regardless of therapy.

  • Statistical test: is Marker X associated with an efficacy endpoint?

Predictive Biomarker: provides information about the effect of a therapeutic intervention; can be a target for therapy

  • Statistical test: is Marker X associated with the differential effect between treatments on an efficacy endpoint (treatment comparison)

Graphic illustration of prognostic and predictive biomarkers.

Statistical methods to evaluate a biomarker’s prognosis and prediction.

Clinical trial designs based on prognostic and predictive biomarkers

Prognostic Enrichment: to identify patients with a greater likelihood of having the event (or a large change in a continuous measure) of interest in a trial

  • Advantages: to increase the power of a study to detect any given level of risk reduction.

Predictive Enrichment: to identify patients more likely to respond to a particular intervention

  • Advantages: to better detect increased study efficiency or feasibility, or enhanced benefit-risk relationship

Define fit-for-purpose threshold on a biomarker with a continuous scale

  • To determine the optimization goal:

    • the maximized differentiation in an outcome between marker selected and the un-selection populations by the cutoff

    • the maximized or a targeted differentiation between treatments in a marker selected the population

    • the maximized interaction effect between treatment and a categorized biomarker

    • a target efficacy outcome, e.g. response rate, median survival

    • an optimal sensitivity and specificity combination, e.g. Youden index by ROC

    • prevalence consideration

    • concordance with a reference biomarker