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
Sign In
Advertise with Us
GLOBETECH PUBLISHING LLC

Download Mobile App




AI Technique Dramatically Improves Medical Imaging Quality

By MedImaging International staff writers
Posted on 02 Apr 2018
Print article
Image: MRI images reconstructed from the same data with conventional approaches (L) and AUTOMAP (R) (Photo courtesy of MGH).
Image: MRI images reconstructed from the same data with conventional approaches (L) and AUTOMAP (R) (Photo courtesy of MGH).
A new technique based on artificial intelligence (AI) and machine learning could enable clinicians to acquire high-quality images from limited data.

Developed at Massachusetts General Hospital (MGH; Boston, USA), the new image manipulation technique, called automated transform by manifold approximation (AUTOMAP), offers a unified framework for image reconstruction by recasting it as a data-driven supervised learning task, which allows mapping between the sensor and the image domain to emerge from an appropriate body of training data. To develop AUTOMAP, the researchers took advantage of the many advances made in neural network models used for AI.

Improvement in graphical processing units (GPUs) that drive the operations also contributed to the powering of image reconstruction algorithms such as AUTOMAP, as they require an immense amount of computation, especially during the training phase. Another factor was the availability of large datasets--known as big data--that are needed to train large neural network models. The overall result is a superior immunity to noise and a reduction in reconstruction artefacts, compared with conventional handcrafted reconstruction methods.

AUTOMAP also offers a number of potential benefits for clinical care, even beyond producing high-quality images in less time with magnetic resonance imaging (MRI) or with lower doses with X-ray, computerized tomography (CT) and positron emission tomography (PET). Because of its processing speed, the technique could help in making real-time decisions about imaging protocols while the patient is still inside the scanner. According to the researchers, the AUTOMAP technique would not have been possible five years ago, or maybe even one year ago. The study was published on March 21, 2018, in Nature.

“The conventional approach to image reconstruction uses a chain of handcrafted signal processing modules that require expert manual parameter tuning’ and often are unable to handle imperfections of the raw data, such as noise,” said lead author Bo Zhu, PhD, of the MGH Martinos Center for Biomedical Imaging. “With AUTOMAP, we've taught imaging systems to 'see' the way humans learn to see after birth, not through directly programming the brain but by promoting neural connections to adapt organically through repeated training on real-world examples.”

“Since AUTOMAP is implemented as a feedforward neural network, the speed of image reconstruction is almost instantaneous, just tens of milliseconds,” said senior author Matt Rosen, PhD, of the center for machine learning at the MGH Martinos. “Our AI approach is showing remarkable improvements in accuracy and noise reduction and thus can advance a wide range of applications. We're incredibly excited to have the opportunity to roll this out into the clinical space where AUTOMAP can work together with inexpensive GPU-accelerated computers to improve clinical imaging and outcomes.”

Deep learning is part of a broader family of AI methods based on learning data representations, as opposed to task specific algorithms. It involves artificial neural network (ANN) algorithms that use a cascade of many layers of nonlinear processing units for feature extraction and transformation, with each successive layer using the output from the previous layer as input to form a hierarchical representation.

Related Links:
Massachusetts General Hospital

Gold Member
Solid State Kv/Dose Multi-Sensor
AGMS-DM+
New
Ultrasound Table
Powered Ultrasound Table-Flat Top
New
Digital Radiography Generator
meX+20BT lite
New
Color Doppler Ultrasound System
KC20

Print article
Radcal

Channels

MRI

view channel
Image: PET/MRI can accurately classify prostate cancer patients (Photo courtesy of 123RF)

PET/MRI Improves Diagnostic Accuracy for Prostate Cancer Patients

The Prostate Imaging Reporting and Data System (PI-RADS) is a five-point scale to assess potential prostate cancer in MR images. PI-RADS category 3 which offers an unclear suggestion of clinically significant... Read more

Nuclear Medicine

view channel
Image: The new SPECT/CT technique demonstrated impressive biomarker identification (Journal of Nuclear Medicine: doi.org/10.2967/jnumed.123.267189)

New SPECT/CT Technique Could Change Imaging Practices and Increase Patient Access

The development of lead-212 (212Pb)-PSMA–based targeted alpha therapy (TAT) is garnering significant interest in treating patients with metastatic castration-resistant prostate cancer. The imaging of 212Pb,... 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.