Sample size determination for prediction models via learning‐type curves

Author:

Dayimu Alimu1ORCID,Simidjievski Nikola23,Demiris Nikolaos4,Abraham Jean2

Affiliation:

1. Cambridge Clinical Trials Unit Cancer Theme University of Cambridge Cambridge UK

2. Cambridge Precision Breast Cancer Institute University of Cambridge Cambridge UK

3. Department of Computer Science and Technology University of Cambridge Cambridge UK

4. Department of Statistics Athens University of Economics and Business Athens Greece

Abstract

This article is concerned with sample size determination methodology for prediction models. We propose to combine the individual calculations via learning‐type curves. We suggest two distinct ways of doing so, a deterministic skeleton of a learning curve and a Gaussian process centered upon its deterministic counterpart. We employ several learning algorithms for modeling the primary endpoint and distinct measures for trial efficacy. We find that the performance may vary with the sample size, but borrowing information across sample size universally improves the performance of such calculations. The Gaussian process‐based learning curve appears more robust and statistically efficient, while computational efficiency is comparable. We suggest that anchoring against historical evidence when extrapolating sample sizes should be adopted when such data are available. The methods are illustrated on binary and survival endpoints.

Publisher

Wiley

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