Adversarial EM for variational deep learning: Application to semi-supervised image quality enhancement in low-dose PET and low-dose CT
In positron emission tomography (PET) and X-ray computed tomography (CT), reducing radiation dose can cause significant degradation in image quality. For image quality enhancement in low-dose PET and CT, we propose a novel theoretical adversarial and variational deep neural network (DNN) framework r...
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Veröffentlicht in: | Medical image analysis 2024-10, Vol.97, p.103291, Article 103291 |
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Sprache: | eng |
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Zusammenfassung: | In positron emission tomography (PET) and X-ray computed tomography (CT), reducing radiation dose can cause significant degradation in image quality. For image quality enhancement in low-dose PET and CT, we propose a novel theoretical adversarial and variational deep neural network (DNN) framework relying on expectation maximization (EM) based learning, termed adversarial EM (AdvEM). AdvEM proposes an encoder–decoder architecture with a multiscale latent space, and generalized-Gaussian models enabling datum-specific robust statistical modeling in latent space and image space. The model robustness is further enhanced by including adversarial learning in the training protocol. Unlike typical variational-DNN learning, AdvEM proposes latent-space sampling from the posterior distribution, and uses a Metropolis–Hastings scheme. Unlike existing schemes for PET or CT image enhancement which train using pairs of low-dose images with their corresponding normal-dose versions, we propose a semi-supervised AdvEM (ssAdvEM) framework that enables learning using a small number of normal-dose images. AdvEM and ssAdvEM enable per-pixel uncertainty estimates for their outputs. Empirical analyses on real-world PET and CT data involving many baselines, out-of-distribution data, and ablation studies show the benefits of the proposed framework.
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•Expectation-maximization based variational deep learning for Low-Dose PET and CT•Adversarial learning for improved robustness with respect to out-of-distribution data•Variational learning with posterior distribution sampling using Metropolis Hastings•Multiscale latent space modeled by a Generalized Gaussian distribution•Semi-supervised learning utilizing a larger set of low-dose images than normal-dose•The framework supports uncertainty mapping corresponding to the outputs it produces |
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ISSN: | 1361-8415 1361-8423 1361-8423 |
DOI: | 10.1016/j.media.2024.103291 |