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




Deep Learning Algorithm Performs Automatic Segmentation of Neonatal Brains from MR Images

By MedImaging International staff writers
Posted on 29 Feb 2024

Magnetic Resonance Imaging (MRI) is a vital tool in medical diagnostics, particularly because of its high-resolution images and superior soft tissue contrast, which make it crucial for brain evaluations. This imaging technique is particularly vital for neonates, especially for assessing neonatal encephalopathy, where it helps in understanding the presence and pattern of brain injuries for better prognostication and treatment planning. The integration of artificial intelligence (AI) and machine learning (ML) has significantly enhanced the predictive accuracy of functional outcomes in infants using MRI data. A crucial step in preparing data for ML analysis of brain MRI is brain extraction or skull-stripping. However, the development of extraction algorithms for neonatal brains has been limited. To address this gap, researchers have now introduced an automated deep learning-based algorithm for neonatal brain MRI extraction.

A collaborative effort by researchers from the University of California, San Francisco (UCSF) and Duke University Medical Center (Durham, NC, USA) has led to the creation of ANUBEX. This deep learning algorithm is specifically designed for automatic segmentation of neonatal brains from MRI scans. The development of ANUBEX, an automated neonatal nnU-Net brain MRI extractor, utilized various MRI sequences such as T1-weighted, T2-weighted, and diffusion-weighted imaging (DWI) from neonatal MRI studies.

The researchers found that ANUBEX maintains consistent performance when trained on sequence-agnostic or motion-degraded MRI scans, though it showed slightly decreased effectiveness on preterm brains. ANUBEX’s deep learning-based approach has demonstrated accurate performance across both high- and low-resolution MRIs, offering rapid computational processing. This accuracy in brain tissue segmentation is crucial for subsequent image analysis and volumetric measurements. Future directions for this research include expanding the evaluation of ANUBEX’s accuracy beyond the neonatal age range to include young children and adults. Additionally, there is a need to assess the model's effectiveness on brains with diverse structural pathologies.

Related Links:
UCSF
Duke University Medical Center 

NMUS & MSK Ultrasound
InVisus Pro
Portable Color Doppler Ultrasound System
S5000
New
Radiation Shielding
Oversize Thyroid Shield
40/80-Slice CT System
uCT 528
Read the full article by registering today, it's FREE! It's Free!
Register now for FREE to MedImaging.net and get complete access to news and events that shape the world of Radiology.
  • Free digital version edition of Medical Imaging International sent by email on regular basis
  • Free print version of Medical Imaging International magazine (available only outside USA and Canada).
  • Free and unlimited access to back issues of Medical Imaging International in digital format
  • Free Medical Imaging International Newsletter sent every week containing the latest news
  • Free breaking news sent via email
  • Free access to Events Calendar
  • Free access to LinkXpress new product services
  • REGISTRATION IS FREE AND EASY!
Click here to Register








Channels

Ultrasound

view channel
Image: The model trained on echocardiography, can identify liver disease in people without symptoms (Photo courtesy of 123RF)

Artificial Intelligence Detects Undiagnosed Liver Disease from Echocardiograms

Echocardiography is a diagnostic procedure that uses ultrasound to visualize the heart and its associated structures. This imaging test is commonly used as an early screening method when doctors suspect... 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 © 2000-2025 Globetech Media. All rights reserved.