We use cookies to understand how you use our site and to improve your experience. This includes personalizing content and advertising. To learn more, click here. By continuing to use our site, you accept our use of cookies. Cookie Policy.

Features Partner Sites Information LinkXpress hp
Sign In
Advertise with Us
GLOBETECH PUBLISHING LLC

Download Mobile App




AI Model Reconstructs Sparse-View 3D CT Scan With Much Lower X-Ray Dose

By MedImaging International staff writers
Posted on 20 Dec 2024
Print article
Image: The results of the eight-view 3D CT reconstruction from a public dataset (Photo courtesy of Medical Physics, doi.org/10.1002/mp.12345)
Image: The results of the eight-view 3D CT reconstruction from a public dataset (Photo courtesy of Medical Physics, doi.org/10.1002/mp.12345)

While 3D CT scans provide detailed images of internal structures, the 1,000 to 2,000 X-rays captured from different angles during scanning can increase cancer risk, especially for vulnerable patients. Sparse-view CT scans, which use fewer X-ray projections (as few as 100), significantly reduce radiation exposure but present challenges for accurate image reconstruction. Recently, supervised learning techniques, a form of machine learning that trains algorithms with labeled data, have enhanced the speed and resolution of under-sampled MRI and sparse-view CT image reconstructions. However, labeling large training datasets is both time-consuming and costly. Now, researchers have developed a new framework that works efficiently with 3D images, making the method more applicable to CT and MRI.

This new framework, called DiffusionBlend, was developed by researchers at the University of Michigan Engineering (Ann Arbor, MI, USA). It employs a diffusion model, a self-supervised learning technique that learns a data distribution prior, to enable sparse-view 3D CT reconstruction through posterior sampling. DiffusionBlend learns spatial correlations among nearby 2D image slices, referred to as a 3D-patch diffusion prior, and then blends the scores of these multi-slice patches to create the full 3D CT image volume. When tested on a public dataset of sparse-view 3D CT scans, DiffusionBlend outperformed several baseline methods, including four diffusion approaches at eight, six, and four views, achieving comparable or better computational image quality.

To further enhance its practicality, acceleration methods were applied, reducing DiffusionBlend's CT reconstruction time to one hour, compared to the 24 hours required by previous methods. While deep learning methods can sometimes introduce visual artifacts—AI-generated images of non-existent features—this can be problematic for patient diagnosis. To mitigate this issue, the researchers employed data consistency optimization, specifically using the conjugate gradient method, and evaluated how well the generated images matched the actual measurements using metrics like signal-to-noise ratio.

“We’re still in the early days of this, but there’s a lot of potential here. I think the principles of this method can extend to four dimensions, three spatial dimensions plus time, for applications like imaging the beating heart or stomach contractions,” said Jeff Fessler, the William L. Root Distinguished University Professor of Electrical Engineering and Computer Science at U-M and co-corresponding author of the study.

Related Links:
University of Michigan Engineering

New
Gold Member
X-Ray QA Meter
T3 AD Pro
New
Mobile Barrier
Tilted Mobile Leaded Barrier
New
Ultrasound Scanner
TBP-5533
Fixed X-Ray System (RAD)
Allengers 325 - 525

Print article

Channels

MRI

view channel
Image: MRI microscopy of mouse and human pancreas with respective histology demonstrating ability of DTI maps to identify pre-malignant lesions (Photo courtesy of Bilreiro C, et al. Investigative Radiology, 2024)

Pioneering MRI Technique Detects Pre-Malignant Pancreatic Lesions for The First Time

Pancreatic cancer is the leading cause of cancer-related fatalities. When the disease is localized, the five-year survival rate is 44%, but once it has spread, the rate drops to around 3%.... Read more

Ultrasound

view channel
Image: A transparent ultrasound transducer-based photoacoustic-ultrasound fusion probe, along with images of a rat’s rectum and a pig’s esophagus (Photo courtesy of POSTECH)

Transparent Ultrasound Transducer for Photoacoustic and Ultrasound Endoscopy to Improve Diagnostic Accuracy

Endoscopic ultrasound is a commonly used tool in gastroenterology for cancer diagnosis; however, it provides limited contrast in soft tissues and only offers structural information, which reduces its diagnostic... Read more

Imaging IT

view channel
Image: The new Medical Imaging Suite makes healthcare imaging data more accessible, interoperable and useful (Photo courtesy of Google Cloud)

New Google Cloud Medical Imaging Suite Makes Imaging Healthcare Data More Accessible

Medical imaging is a critical tool used to diagnose patients, and there are billions of medical images scanned globally each year. Imaging data accounts for about 90% of all healthcare data1 and, until... Read more
Copyright © 2000-2024 Globetech Media. All rights reserved.