Uncertainty quantification for improving radiomic-based models in radiation pneumonitis prediction
Journal:
arXiv
Published Date:
Dec 27, 2024
Abstract
Background: Radiation pneumonitis is a side effect of thoracic radiation
therapy. Recently, machine learning models with radiomic features have improved
radiation pneumonitis prediction by capturing spatial information. To further
support clinical decision-making, this study explores the role of post hoc
uncertainty quantification methods in enhancing model uncertainty estimate.
Methods: We retrospectively analyzed a cohort of 101 esophageal cancer
patients. This study evaluated four machine learning models: logistic
regression, support vector machines, extreme gradient boosting, and random
forest, using 15 dosimetric, 79 dosiomic, and 237 radiomic features to predict
radiation pneumonitis. We applied uncertainty quantification methods, including
Platt scaling, isotonic regression, Venn-ABERS predictor, and conformal
prediction, to quantify uncertainty. Model performance was assessed through an
area under the receiver operating characteristic curve (AUROC), area under the
precision-recall curve (AUPRC), and adaptive calibration error using
leave-one-out cross-validation. Results: Highest AUROC is achieved by the
logistic regression model with the conformal prediction method (AUROC
0.75+-0.01, AUPRC 0.74+-0.01) at a certainty cut point of 0.8. Highest AUPRC of
0.82+-0.02 (with AUROC of 0.67+-0.04) achieved by The extreme gradient boosting
model with conformal prediction at the 0.9 certainty threshold. Radiomic and
dosiomic features improve both discriminative and calibration performance.
Conclusions: Integrating uncertainty quantification into machine learning
models with radiomic and dosiomic features may improve both predictive accuracy
and calibration, supporting more reliable clinical decision-making. The
findings emphasize the value of uncertainty quantification methods in enhancing
applicability of predictive models for radiation pneumonitis in healthcare
settings.