Don't be misled: Three misconceptions about external validation of clinical prediction models

J Clin Epidemiol. 2024 May 8:111387. doi: 10.1016/j.jclinepi.2024.111387. Online ahead of print.

Abstract

Clinical prediction models provide risks of health outcomes that can inform patients and support medical decisions. However, most models never make it to actual implementation in practice. A commonly heard reason for this lack of implementation is that prediction models are often not externally validated. While we generally encourage external validation, we argue that an external validation is often neither sufficient nor required as an essential step before implementation. As such, any available external validation should not be perceived as a license for model implementation. We clarify this argument by discussing three common misconceptions about external validation. We argue that there is not one type of recommended validation design, not always a necessity for external validation, and sometimes a need for multiple external validations. The insights from this paper can help readers to consider, design, interpret, and appreciate external validation studies.

Keywords: clinical algorithm; external validation; prediction model.