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Impact of predictor measurement heterogeneity across settings on the performance of prediction models: A measurement error perspective
- Source :
- Statistics in Medicine, Statistics in Medicine, 38(18), 3444-3459. John Wiley & Sons Ltd., Statistics in Medicine, 38(18), 3444-3459
- Publication Year :
- 2019
- Publisher :
- WILEY, 2019.
-
Abstract
- It is widely acknowledged that the predictive performance of clinical prediction models should be studied in patients that were not part of the data in which the model was derived. Out-of-sample performance can be hampered when predictors are measured differently at derivation and external validation. This may occur, for instance, when predictors are measured using different measurement protocols or when tests are produced by different manufacturers. Although such heterogeneity in predictor measurement between derivation and validation data is common, the impact on the out-of-sample performance is not well studied. Using analytical and simulation approaches, we examined out-of-sample performance of prediction models under various scenarios of heterogeneous predictor measurement. These scenarios were defined and clarified using an established taxonomy of measurement error models. The results of our simulations indicate that predictor measurement heterogeneity can induce miscalibration of prediction and affects discrimination and overall predictive accuracy, to extents that the prediction model may no longer be considered clinically useful. The measurement error taxonomy was found to be helpful in identifying and predicting effects of heterogeneous predictor measurements between settings of prediction model derivation and validation. Our work indicates that homogeneity of measurement strategies across settings is of paramount importance in prediction research. ispartof: STATISTICS IN MEDICINE vol:38 issue:18 pages:3444-3459 ispartof: location:England status: published
- Subjects :
- EXTERNAL VALIDATION
Epidemiology
Computer science
RISK MODELS
Validation Studies as Topic
Research & Experimental Medicine
computer.software_genre
01 natural sciences
010104 statistics & probability
0302 clinical medicine
030212 general & internal medicine
Research Articles
Public, Environmental & Occupational Health
CALIBRATION
prediction model
Brier score
Medicine, Research & Experimental
Physical Sciences
Monte Carlo Method
Life Sciences & Biomedicine
Research Article
Statistics and Probability
Statistics & Probability
Biostatistics
Machine learning
03 medical and health sciences
external validation
Predictive Value of Tests
measurement heterogeneity
Humans
In patient
Computer Simulation
0101 mathematics
Observational error
Models, Statistical
Science & Technology
business.industry
Homogeneity (statistics)
External validation
calibration
FRAMEWORK
Logistic Models
LOGISTIC-REGRESSION MODELS
SAMPLE-SIZE
Errors-in-variables models
Artificial intelligence
Mathematical & Computational Biology
business
computer
Predictive modelling
Medical Informatics
Mathematics
measurement error
discrimination
Subjects
Details
- Language :
- English
- ISSN :
- 02776715
- Database :
- OpenAIRE
- Journal :
- Statistics in Medicine, Statistics in Medicine, 38(18), 3444-3459. John Wiley & Sons Ltd., Statistics in Medicine, 38(18), 3444-3459
- Accession number :
- edsair.doi.dedup.....0d6b2c2b2c4d2d8e6f016504875d8eba