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Main Authors: Huchthausen, Claire, Shi, Menglin, de Sousa, Gabriel L. A., Colen, Jonathan, Shelley, Emery, Larner, James, Janowski, Einsley, Wijesooriya, Krishni
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.16758
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author Huchthausen, Claire
Shi, Menglin
de Sousa, Gabriel L. A.
Colen, Jonathan
Shelley, Emery
Larner, James
Janowski, Einsley
Wijesooriya, Krishni
author_facet Huchthausen, Claire
Shi, Menglin
de Sousa, Gabriel L. A.
Colen, Jonathan
Shelley, Emery
Larner, James
Janowski, Einsley
Wijesooriya, Krishni
contents BACKGROUND: Radiomics provides quantitative features of pulmonary nodules (PNs) which could aid lung cancer diagnosis, but medical image acquisition variability is an obstacle to clinical application. Acquisition effects may differ between radiomic features from benign vs. malignant PNs. PURPOSE: We evaluated how to account for differences between benign and malignant PNs when correcting radiomic features' acquisition dependency. METHODS: We used 567 chest CT scans grouped as benign, malignant, or lung cancer screening (mixed benign, malignant). ComBat harmonization was applied to extracted features for variation in 4 acquisition parameters. We compared: harmonizing without distinction, harmonizing with a covariate to preserve distinctions between subgroups, and harmonizing subgroups separately. Significant ($p\le0.05$) Kruskal-Wallis tests showed whether harmonization removed acquisition dependency. A LASSO-SVM pipeline was trained on successfully harmonized features to predict malignancy. To evaluate predictive information in these features, the trained harmonization estimators and predictive model were applied to unseen test sets. Harmonization and predictive performance were assessed for 10 trials of 5-fold cross-validation. RESULTS: An average 2.1% of features (95% CI:1.9-2.4%) were acquisition-independent when harmonized without distinction, 27.3% (95% CI:25.7-28.9%) when harmonized with a covariate, and 90.9% (95% CI:90.4-91.5%) when harmonized separately. Data harmonized separately or with a covariate trained models with higher ROC-AUC for screening scans than data harmonized without distinction between benign and malignant PNs (Delong test, adjusted $p\le0.05$). CONCLUSIONS: Radiomic features of benign and malignant PNs need different corrective transformations to recover acquisition-independent distributions. This can be done by harmonizing separately or with a covariate.
format Preprint
id arxiv_https___arxiv_org_abs_2412_16758
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Evaluation of radiomic feature harmonization techniques for benign and malignant pulmonary nodules
Huchthausen, Claire
Shi, Menglin
de Sousa, Gabriel L. A.
Colen, Jonathan
Shelley, Emery
Larner, James
Janowski, Einsley
Wijesooriya, Krishni
Medical Physics
Computer Vision and Pattern Recognition
BACKGROUND: Radiomics provides quantitative features of pulmonary nodules (PNs) which could aid lung cancer diagnosis, but medical image acquisition variability is an obstacle to clinical application. Acquisition effects may differ between radiomic features from benign vs. malignant PNs. PURPOSE: We evaluated how to account for differences between benign and malignant PNs when correcting radiomic features' acquisition dependency. METHODS: We used 567 chest CT scans grouped as benign, malignant, or lung cancer screening (mixed benign, malignant). ComBat harmonization was applied to extracted features for variation in 4 acquisition parameters. We compared: harmonizing without distinction, harmonizing with a covariate to preserve distinctions between subgroups, and harmonizing subgroups separately. Significant ($p\le0.05$) Kruskal-Wallis tests showed whether harmonization removed acquisition dependency. A LASSO-SVM pipeline was trained on successfully harmonized features to predict malignancy. To evaluate predictive information in these features, the trained harmonization estimators and predictive model were applied to unseen test sets. Harmonization and predictive performance were assessed for 10 trials of 5-fold cross-validation. RESULTS: An average 2.1% of features (95% CI:1.9-2.4%) were acquisition-independent when harmonized without distinction, 27.3% (95% CI:25.7-28.9%) when harmonized with a covariate, and 90.9% (95% CI:90.4-91.5%) when harmonized separately. Data harmonized separately or with a covariate trained models with higher ROC-AUC for screening scans than data harmonized without distinction between benign and malignant PNs (Delong test, adjusted $p\le0.05$). CONCLUSIONS: Radiomic features of benign and malignant PNs need different corrective transformations to recover acquisition-independent distributions. This can be done by harmonizing separately or with a covariate.
title Evaluation of radiomic feature harmonization techniques for benign and malignant pulmonary nodules
topic Medical Physics
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.16758