15 research outputs found
Self-Supervised MRI Reconstruction with Unrolled Diffusion Models
Magnetic Resonance Imaging (MRI) produces excellent soft tissue contrast,
albeit it is an inherently slow imaging modality. Promising deep learning
methods have recently been proposed to reconstruct accelerated MRI scans.
However, existing methods still suffer from various limitations regarding image
fidelity, contextual sensitivity, and reliance on fully-sampled acquisitions
for model training. To comprehensively address these limitations, we propose a
novel self-supervised deep reconstruction model, named Self-Supervised
Diffusion Reconstruction (SSDiffRecon). SSDiffRecon expresses a conditional
diffusion process as an unrolled architecture that interleaves cross-attention
transformers for reverse diffusion steps with data-consistency blocks for
physics-driven processing. Unlike recent diffusion methods for MRI
reconstruction, a self-supervision strategy is adopted to train SSDiffRecon
using only undersampled k-space data. Comprehensive experiments on public brain
MR datasets demonstrates the superiority of SSDiffRecon against
state-of-the-art supervised, and self-supervised baselines in terms of
reconstruction speed and quality. Implementation will be available at
https://github.com/yilmazkorkmaz1/SSDiffRecon
Content-Based Medical Image Retrieval with Opponent Class Adaptive Margin Loss
Broadspread use of medical imaging devices with digital storage has paved the
way for curation of substantial data repositories. Fast access to image samples
with similar appearance to suspected cases can help establish a consulting
system for healthcare professionals, and improve diagnostic procedures while
minimizing processing delays. However, manual querying of large data
repositories is labor intensive. Content-based image retrieval (CBIR) offers an
automated solution based on dense embedding vectors that represent image
features to allow quantitative similarity assessments. Triplet learning has
emerged as a powerful approach to recover embeddings in CBIR, albeit
traditional loss functions ignore the dynamic relationship between opponent
image classes. Here, we introduce a triplet-learning method for automated
querying of medical image repositories based on a novel Opponent Class Adaptive
Margin (OCAM) loss. OCAM uses a variable margin value that is updated
continually during the course of training to maintain optimally discriminative
representations. CBIR performance of OCAM is compared against state-of-the-art
loss functions for representational learning on three public databases
(gastrointestinal disease, skin lesion, lung disease). Comprehensive
experiments in each application domain demonstrate the superior performance of
OCAM against baselines.Comment: 10 pages, 6 figure
COVID-19 Detection from Respiratory Sounds with Hierarchical Spectrogram Transformers
Monitoring of prevalent airborne diseases such as COVID-19 characteristically
involves respiratory assessments. While auscultation is a mainstream method for
preliminary screening of disease symptoms, its utility is hampered by the need
for dedicated hospital visits. Remote monitoring based on recordings of
respiratory sounds on portable devices is a promising alternative, which can
assist in early assessment of COVID-19 that primarily affects the lower
respiratory tract. In this study, we introduce a novel deep learning approach
to distinguish patients with COVID-19 from healthy controls given audio
recordings of cough or breathing sounds. The proposed approach leverages a
novel hierarchical spectrogram transformer (HST) on spectrogram representations
of respiratory sounds. HST embodies self-attention mechanisms over local
windows in spectrograms, and window size is progressively grown over model
stages to capture local to global context. HST is compared against
state-of-the-art conventional and deep-learning baselines. Demonstrations on
crowd-sourced multi-national datasets indicate that HST outperforms competing
methods, achieving over 83% area under the receiver operating characteristic
curve (AUC) in detecting COVID-19 cases
Statistically segregated k-space sampling for accelerating multiple-acquisition MRI
A central limitation of multiple-acquisition magnetic resonance imaging (MRI) is the degradation in scan efficiency as the number of distinct datasets grows. Sparse recovery techniques can alleviate this limitation via randomly undersampled acquisitions. A frequent sampling strategy is to prescribe for each acquisition a different random pattern drawn from a common sampling density. However, naive random patterns often contain gaps or clusters across the acquisition dimension that in turn can degrade reconstruction quality or reduce scan efficiency. To address this problem, a statistically-segregated sampling method is proposed for multiple-acquisition MRI. This method generates multiple patterns sequentially, while adaptively modifying the sampling density to minimize k-space overlap across patterns. As a result, it improves incoherence across acquisitions while still maintaining similar sampling density across the radial dimension of k-space. Comprehensive simulations and in vivo results are presented for phase-cycled balanced steady-state free precession and multi-echo T2-weighted imaging. Segregated sampling achieves significantly improved quality in both Fourier and compressedsensing reconstructions of multiple-acquisition datasets
Compressed multi-contrast magnetic resonance image reconstruction using augmented lagrangian method
In this paper, a Multi-Channel/Multi-Contrast image reconstruction algorithm is proposed. The method, which is based on the Augmented Lagrangian Method uses joint convex objective functions to utilize the mutual information in the data from multiple channels to improve reconstruction quality. For this purpose, color total variation and group sparsity are used. To evaluate the performance of the method, the algorithm is compared in terms of convergence speed and image quality using Magnetic Resonance Imaging data to FCSA-MT [1], an alternative approach on reconstructing multi-contrast MRI data