| Literature DB >> 35387683 |
Kim Luijken1, Jia Song2, Rolf H H Groenwold2,3.
Abstract
BACKGROUND: When a predictor variable is measured in similar ways at the derivation and validation setting of a prognostic prediction model, yet both differ from the intended use of the model in practice (i.e., "predictor measurement heterogeneity"), performance of the model at implementation needs to be inferred. This study proposed an analysis to quantify the impact of anticipated predictor measurement heterogeneity.Entities:
Keywords: Calibration; External validation; Measurement heterogeneity; Prognostic model
Year: 2022 PMID: 35387683 PMCID: PMC8988417 DOI: 10.1186/s41512-022-00121-1
Source DB: PubMed Journal: Diagn Progn Res ISSN: 2397-7523
Fig. 1An overview of the derivation, validation, and implementation setting of a prognostic model, highlighting considerations regarding predictor measurement heterogeneity. Note that “impact analysis” research is a phase between validation and implementation that is not addressed in this diagram. A prediction target is defined by specifying the target population, setting, outcome, (candidate) predictors, time of prediction, and prediction horizon as specifically as possible
Simulation parameters
| Parameter | Value |
|---|---|
| Baseline hazard of an event | 0.1 |
| Conditional hazard ratio for association predictor | 2 |
| Time point of administrative censoring | 15 |
| Baseline hazard of censoring | 0.01 |
| Conditional hazard ratio for association between random variable for censoring and censoring times | 3 |
| Mean of predictor | 0 |
| Variance of predictor | 1 |
| Predictor | |
| ψ | − 0.3 to 0.3 |
| | 0.5 to 2 |
| | 0 to √2 |
*At implementation, a different measurement of predictor X was available, denoted measurement W. The connection between X and W was defined using the following measurement heterogeneity model: where , and where ψ denotes an additive shift in W with respect to X, θ denotes a multiplicative linear association between W and X, and σ denotes random deviations from X
Fig. 2Measures of predictive performance under predictor measurement heterogeneity between validation and implementation setting. Results shown for random predictor measurement only (A), additive systematic predictor measurement only (B), and multiplicative systematic predictor measurement heterogeneity only (C). The vertical dashed line indicates predictor measurement homogeneity between validation and implementation setting. The x-axes show measurement heterogeneity parameters describing the predictor measurement at implementation relative to the predictor measurement at validation, where σ denotes random deviations from the measurement at validation, ψ denotes an additive shift with respect to the measurement at validation, and θ denotes a systematic multiplicative association with the measurement at validation. Note that additional simulation scenarios were run to smooth the plots
Quantitative prediction error analysis to quantify the impact of anticipated predictor measurement heterogeneity at implementation of a prognostic model in clinical practice (details in section “Quantifying the impact of anticipated predictor measurement heterogeneity between validation and implementation setting” of the main text)
1. State the prediction target. 2. Report whether predictor measurement procedures in the validation setting correspond to those at implementation. 3. Identify one predictor that is expected to be measured using a different procedure in the implementation setting than in the validation setting. 4. Define a model for the relation between the measurement in the validation study and its equivalent in the implementation setting. 5. Perform a literature search to establish a range for the size of the possible parameters of predictor measurement heterogeneity. 6. Simulate the scenarios of anticipated measurement heterogeneity to assess the possible impact on predictive performance. 7. Report the impact of anticipated predictor measurement heterogeneity on predictive performance at implementation in clinical practice. |
Fig. 3Impact of anticipated heterogeneity in measurement of the predictor body mass index on measures of predictive performance at implementation of a model to predict the 6-year risk of developing diabetes type 2. The dotted line indicates predictive performance under predictor measurement homogeneity. Dark grey indicates the impact within the range of specified predictor measurement heterogeneity and light grey indicates the range of 95% CIs from 500 bootstrap resamples. Random predictor measurement heterogeneity is presented on the x-axis, and performance measures are marginalized over scenarios of additive and multiplicative systematic predictor measurement heterogeneity