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A Physics-Informed Deep Neural Network for Harmonization of CT Images
Objective : Computed Tomography (CT) quantification is affected by the variability in image acquisition and rendition. This paper aimed to reduce this variability by harmonizing the images utilizing physics-based deep neural networks (DNNs). Methods : An adversarial generative network was trained on...
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Published in: | IEEE transactions on biomedical engineering 2024-12, Vol.71 (12), p.3494-3504 |
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Main Authors: | , , , , |
Format: | Article |
Language: | English |
Subjects: | |
Citations: | Items that this one cites |
Online Access: | Request full text |
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Summary: | Objective : Computed Tomography (CT) quantification is affected by the variability in image acquisition and rendition. This paper aimed to reduce this variability by harmonizing the images utilizing physics-based deep neural networks (DNNs). Methods : An adversarial generative network was trained on virtual CT images acquired under various imaging conditions using a virtual imaging platform with 40 computational patient models. These models featured anthropomorphic lungs with different levels of pulmonary diseases, including nodules and emphysema. Imaging was conducted using a validated CT simulator at two dose levels and varying reconstruction kernels. The trained model was tested on an independent virtual test dataset and two clinical datasets. Results : On the virtual test set, the harmonizer improved the structural similarity index from 79.3 \pm 16.4% to 95.8 \pm 1.7%, normalized mean squared error from 16.7 \pm 9.7% to 9.2 \pm 1.7%, and peak signal-to-noise ratio from 27.7 \pm 3.7 dB to 32.2 \pm 1.6 dB. Moreover, the harmonized images yielded more precise quantification of emphysema-based imaging biomarkers for lung attenuation, LAA −950 from 5.6 \pm 8.7% to 0.23 \pm 0.16%, Perc 15 from 43.4 \pm 45.4 HU to 20.0 \pm 7.5 HU, and Lung Mass from 0.3 \pm 0.3 g to 0.1 \pm 0.2 g. In clinical data, the harmonizer reduced biomarker variability by an average of 70%. For lung nodules, harmonized images improved the detectability index by 6.5-fold and DNN-based precision by 6%. Conclusion : The proposed harmonizer significantly enhances image quality and quantification accuracy in CT imaging. Significance: The study demonstrate |
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ISSN: | 0018-9294 1558-2531 1558-2531 |
DOI: | 10.1109/TBME.2024.3428399 |