# Combining Missing Data Imputation and Internal Validation in Clinical Risk Prediction Models

**Authors:** Junhui Mi, Rahul D. Tendulkar, Sarah M. C. Sittenfeld, Sujata Patil, Emily C. Zabor

PMC · DOI: 10.1002/sim.70203 · 2025-08-07

## TL;DR

This paper explains how to handle missing data in clinical risk prediction models using deterministic imputation and bootstrapping for better accuracy and validation.

## Contribution

The paper introduces a tutorial on combining deterministic imputation and internal validation for clinical risk prediction models.

## Key findings

- Deterministic imputation is suitable for clinical risk prediction models when the outcome is not part of the imputation model.
- Simulation studies help determine when imputation is appropriate in real-world clinical settings.
- Bootstrapping followed by deterministic imputation improves internal validation of risk prediction models.

## Abstract

Methods to handle missing data have been extensively explored in the context of estimation and descriptive studies, with multiple imputation being the most widely used method in clinical research. However, in the context of clinical risk prediction models, where the goal is often to achieve high prediction accuracy and to make predictions for future patients, there are different considerations regarding the handling of missing covariate data. As a result, deterministic imputation is better suited to the setting of clinical risk prediction models, since the outcome is not included in the imputation model and the imputation method can be easily applied to future patients. In this paper, we provide a tutorial demonstrating how to conduct bootstrapping followed by deterministic imputation of missing covariate data to construct and internally validate the performance of a clinical risk prediction model in the presence of missing data. Simulation study results are provided to help guide when imputation may be appropriate in real‐world applications.

## Full-text entities

- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

13 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12330338/full.md

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Source: https://tomesphere.com/paper/PMC12330338