Ultrasound Image Enhancement using CycleGAN and Perceptual Loss
- URL: http://arxiv.org/abs/2312.11748v1
- Date: Mon, 18 Dec 2023 23:21:00 GMT
- Title: Ultrasound Image Enhancement using CycleGAN and Perceptual Loss
- Authors: Shreeram Athreya, Ashwath Radhachandran, Vedrana Ivezi\'c, Vivek Sant,
Corey W. Arnold, William Speier
- Abstract summary: This work introduces an advanced framework designed to enhance ultrasound images, especially those captured by portable hand-held devices.
We utilize an enhanced generative adversarial network (CycleGAN) model for ultrasound image enhancement across five organ systems.
- Score: 4.428854369140015
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Purpose: The objective of this work is to introduce an advanced framework
designed to enhance ultrasound images, especially those captured by portable
hand-held devices, which often produce lower quality images due to hardware
constraints. Additionally, this framework is uniquely capable of effectively
handling non-registered input ultrasound image pairs, addressing a common
challenge in medical imaging. Materials and Methods: In this retrospective
study, we utilized an enhanced generative adversarial network (CycleGAN) model
for ultrasound image enhancement across five organ systems. Perceptual loss,
derived from deep features of pretrained neural networks, is applied to ensure
the human-perceptual quality of the enhanced images. These images are compared
with paired images acquired from high resolution devices to demonstrate the
model's ability to generate realistic high-quality images across organ systems.
Results: Preliminary validation of the framework reveals promising performance
metrics. The model generates images that result in a Structural Similarity
Index (SSI) score of 0.722, Locally Normalized Cross-Correlation (LNCC) score
of 0.902 and 28.802 for the Peak Signal-to-Noise Ratio (PSNR) metric.
Conclusion: This work presents a significant advancement in medical imaging
through the development of a CycleGAN model enhanced with Perceptual Loss (PL),
effectively bridging the quality gap between ultrasound images from varied
devices. By training on paired images, the model not only improves image
quality but also ensures the preservation of vital anatomic structural content.
This approach may improve equity in access to healthcare by enhancing portable
device capabilities, although further validation and optimizations are
necessary for broader clinical application.
Related papers
- A Domain Translation Framework with an Adversarial Denoising Diffusion
Model to Generate Synthetic Datasets of Echocardiography Images [0.5999777817331317]
We introduce a framework to create echocardiography images suitable to be used for clinical research purposes.
For several domain translation operations, the results verified that such generative model was able to synthesize high quality image samples.
arXiv Detail & Related papers (2024-03-07T15:58:03Z) - Improving Nonalcoholic Fatty Liver Disease Classification Performance
With Latent Diffusion Models [0.0]
We show that by combining synthetic images, generated using diffusion models, with real images, we can enhance nonalcoholic fatty liver disease classification performance.
Our results show superior performance for the diffusion-generated images, with a maximum IS score of $1.90$ compared to $1.67$ for GANs, and a minimum FID score of $69.45$ compared to $100.05$ for GANs.
arXiv Detail & Related papers (2023-07-13T01:14:08Z) - On Sensitivity and Robustness of Normalization Schemes to Input
Distribution Shifts in Automatic MR Image Diagnosis [58.634791552376235]
Deep Learning (DL) models have achieved state-of-the-art performance in diagnosing multiple diseases using reconstructed images as input.
DL models are sensitive to varying artifacts as it leads to changes in the input data distribution between the training and testing phases.
We propose to use other normalization techniques, such as Group Normalization and Layer Normalization, to inject robustness into model performance against varying image artifacts.
arXiv Detail & Related papers (2023-06-23T03:09:03Z) - DopUS-Net: Quality-Aware Robotic Ultrasound Imaging based on Doppler
Signal [48.97719097435527]
DopUS-Net combines the Doppler images with B-mode images to increase the segmentation accuracy and robustness of small blood vessels.
An artery re-identification module qualitatively evaluate the real-time segmentation results and automatically optimize the probe pose for enhanced Doppler images.
arXiv Detail & Related papers (2023-05-15T18:19:29Z) - Bridging Synthetic and Real Images: a Transferable and Multiple
Consistency aided Fundus Image Enhancement Framework [61.74188977009786]
We propose an end-to-end optimized teacher-student framework to simultaneously conduct image enhancement and domain adaptation.
We also propose a novel multi-stage multi-attention guided enhancement network (MAGE-Net) as the backbones of our teacher and student network.
arXiv Detail & Related papers (2023-02-23T06:16:15Z) - OTRE: Where Optimal Transport Guided Unpaired Image-to-Image Translation
Meets Regularization by Enhancing [4.951748109810726]
Optimal retinal image quality is mandated for accurate medical diagnoses and automated analyses.
We propose an unpaired image-to-image translation scheme for mapping low-quality retinal CFPs to high-quality counterparts.
We validated the integrated framework, OTRE, on three publicly available retinal image datasets.
arXiv Detail & Related papers (2023-02-06T18:39:40Z) - Flow-based Visual Quality Enhancer for Super-resolution Magnetic
Resonance Spectroscopic Imaging [13.408365072149795]
We propose a flow-based enhancer network to improve the visual quality of super-resolution MRSI.
Our enhancer network incorporates anatomical information from additional image modalities (MRI) and uses a learnable base distribution.
Our method also allows visual quality adjustment and uncertainty estimation.
arXiv Detail & Related papers (2022-07-20T20:19:44Z) - Harmonizing Pathological and Normal Pixels for Pseudo-healthy Synthesis [68.5287824124996]
We present a new type of discriminator, the segmentor, to accurately locate the lesions and improve the visual quality of pseudo-healthy images.
We apply the generated images into medical image enhancement and utilize the enhanced results to cope with the low contrast problem.
Comprehensive experiments on the T2 modality of BraTS demonstrate that the proposed method substantially outperforms the state-of-the-art methods.
arXiv Detail & Related papers (2022-03-29T08:41:17Z) - Deep Learning for Ultrasound Beamforming [120.12255978513912]
Beamforming, the process of mapping received ultrasound echoes to the spatial image domain, lies at the heart of the ultrasound image formation chain.
Modern ultrasound imaging leans heavily on innovations in powerful digital receive channel processing.
Deep learning methods can play a compelling role in the digital beamforming pipeline.
arXiv Detail & Related papers (2021-09-23T15:15:21Z) - Image Augmentations for GAN Training [57.65145659417266]
We provide insights and guidelines on how to augment images for both vanilla GANs and GANs with regularizations.
Surprisingly, we find that vanilla GANs attain generation quality on par with recent state-of-the-art results.
arXiv Detail & Related papers (2020-06-04T00:16:02Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.