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editorial
. 2022 Mar 25;3(4):586–589. doi: 10.34067/KID.0001122022

Table 1.

Proposed avenues to improve the success of prediction models

Steps Avenues
Determine the objectives
  • Identify the clinical need and potential future use by engaging relevant stakeholders, including patients, clinicians, researchers, and administrators

  • Carefully plan the subsequent steps and collaboration network to ensure feasibility and availability of appropriate expertise

Selection of source data for model derivation
  • Develop high-quality curated datasets for the specific purpose of creating generalizable prediction models

  • Consider the exploration of new predictors such as biologic biomarkers and functional status

Model development
  • Avoid the use of stepwise variable selection methods that produce overfitted and nongeneralizable models

  • Only use variables with a clear definition that can be collected prospectively in a reproducible manner

  • Align model development with the intended purpose and future integration strategy to clinical and/or research contexts

Performance analysis
  • Appropriate internal validation and calibration to identify subsets in which the model may underperform

External validation
  • Plan for external validation strategy in advance during the design phase

  • External validation may be repeated over time to account for a change in clinical practice

  • Plan for interventional studies to investigate the effect of implementation in a real-life setting