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An evaluation of sample size requirements for developing risk prediction models with binary outcomes.
Pavlou, Menelaos; Ambler, Gareth; Qu, Chen; Seaman, Shaun R; White, Ian R; Omar, Rumana Z.
Affiliation
  • Pavlou M; Department of Statistical Science, UCL, London, UK. m.pavlou@ucl.ac.uk.
  • Ambler G; Department of Statistical Science, UCL, London, UK.
  • Qu C; Department of Statistical Science, UCL, London, UK.
  • Seaman SR; MRC Biostatistics Unit, University of Cambridge, Cambridge, UK.
  • White IR; MRC Clinical Trials Unit at UCL, London, UK.
  • Omar RZ; Department of Statistical Science, UCL, London, UK.
BMC Med Res Methodol ; 24(1): 146, 2024 Jul 10.
Article in En | MEDLINE | ID: mdl-38987715
ABSTRACT

BACKGROUND:

Risk prediction models are routinely used to assist in clinical decision making. A small sample size for model development can compromise model performance when the model is applied to new patients. For binary outcomes, the calibration slope (CS) and the mean absolute prediction error (MAPE) are two key measures on which sample size calculations for the development of risk models have been based. CS quantifies the degree of model overfitting while MAPE assesses the accuracy of individual predictions.

METHODS:

Recently, two formulae were proposed to calculate the sample size required, given anticipated features of the development data such as the outcome prevalence and c-statistic, to ensure that the expectation of the CS and MAPE (over repeated samples) in models fitted using MLE will meet prespecified target values. In this article, we use a simulation study to evaluate the performance of these formulae.

RESULTS:

We found that both formulae work reasonably well when the anticipated model strength is not too high (c-statistic < 0.8), regardless of the outcome prevalence. However, for higher model strengths the CS formula underestimates the sample size substantially. For example, for c-statistic = 0.85 and 0.9, the sample size needed to be increased by at least 50% and 100%, respectively, to meet the target expected CS. On the other hand, the MAPE formula tends to overestimate the sample size for high model strengths. These conclusions were more pronounced for higher prevalence than for lower prevalence. Similar results were drawn when the outcome was time to event with censoring. Given these findings, we propose a simulation-based approach, implemented in the new R package 'samplesizedev', to correctly estimate the sample size even for high model strengths. The software can also calculate the variability in CS and MAPE, thus allowing for assessment of model stability.

CONCLUSIONS:

The calibration and MAPE formulae suggest sample sizes that are generally appropriate for use when the model strength is not too high. However, they tend to be biased for higher model strengths, which are not uncommon in clinical risk prediction studies. On those occasions, our proposed adjustments to the sample size calculations will be relevant.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Models, Statistical Limits: Humans Language: En Journal: BMC Med Res Methodol Journal subject: MEDICINA Year: 2024 Type: Article Affiliation country: United kingdom

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Models, Statistical Limits: Humans Language: En Journal: BMC Med Res Methodol Journal subject: MEDICINA Year: 2024 Type: Article Affiliation country: United kingdom