Close Menu
  • Magazine
    • Current Issue
    • Issue Archive
    • Subscribe
  • Topics
    • AI/Machine Learning
    • CT
    • Fluoroscopy/C-Arm
    • General Radiology
    • Interventional Radiology
    • MRI
    • Nuclear Medicine/Molecular Imaging
    • PACS/RIS/Informatics
    • Radiation Oncology
    • Radiology Management
    • Reimbursement & Coding
    • Research News
    • Ultrasound
    • Women’s Imaging
  • E-Newsletter
  • Education
    • ARMRIT Annual Meeting
    • MRI Books
    • Webinars
  • Careers
  • Events
  • Resources
    • Product Directories
    • Resource Listing
    • Reprints
    • Writers’ Guidelines

Join Our Email List

Facebook X (Twitter) LinkedIn
Trending
  • Lending a Hand
  • Whole-Body Makeover
  • Next Phase
  • Beyond Anatomy
  • Editor’s Note: Steps Forward
  • Radiation Safety: Safety Check
  • AI Insights: Balancing the Load
  • Imaging Informatics: Connecting Silos
Saturday, June 20
  • About
  • Contact
  • Advertise
  • Gift Shop
Facebook X (Twitter) LinkedIn
Radiology Today MagazineRadiology Today Magazine
Subscribe
  • Magazine
    • Current Issue
    • Issue Archive
    • Subscribe
  • Topics
    • AI/Machine Learning
    • CT
    • Fluoroscopy/C-Arm
    • General Radiology
    • Interventional Radiology
    • MRI
    • Nuclear Medicine/Molecular Imaging
    • PACS/RIS/Informatics
    • Radiation Oncology
    • Radiology Management
    • Reimbursement & Coding
    • Research News
    • Ultrasound
    • Women’s Imaging
  • E-Newsletter
  • Education
    • ARMRIT Annual Meeting
    • MRI Books
    • Webinars
  • Careers
  • Events
  • Resources
    • Product Directories
    • Resource Listing
    • Reprints
    • Writers’ Guidelines
Radiology Today MagazineRadiology Today Magazine
Home»E-News Exclusive»Deep Learning Classifies Brain Tumors With Single MRI

Deep Learning Classifies Brain Tumors With Single MRI

Facebook Twitter LinkedIn Email Threads Bluesky Copy Link

A team of researchers at Washington University School of Medicine has developed a deep learning model that is capable of classifying a brain tumor as one of six common types, using a single 3D MRI scan, according to a study published in Radiology: Artificial Intelligence.

“This is the first study to address the most common intracranial tumors and to directly determine the tumor class or the absence of tumor from a 3D MRI volume,” says Satrajit Chakrabarty, MS, a doctoral student under the direction of Aristeidis Sotiras, PhD, and Daniel Marcus, PhD, in the Mallinckrodt Institute of Radiology’s Computational Imaging Lab at Washington University School of Medicine in St. Louis.

The six most common intracranial tumor types are high-grade glioma, low-grade glioma, brain metastases, meningioma, pituitary adenoma, and acoustic neuroma. Each was documented through histopathology, which requires surgically removing tissue from the site of a suspected cancer and examining it under a microscope. According to Chakrabarty, machine and deep learning approaches using MRI data could potentially automate the detection and classification of brain tumors.

“Noninvasive MRI may be used as a complement, or in some cases, as an alternative to histopathologic examination,” Chakrabarty says.

To build their machine learning model, called a convolutional neural network, Chakrabarty and researchers from the Mallinckrodt Institute developed a large, multi-institutional dataset of intracranial 3D MRI scans from four publicly available sources. In addition to the institution’s own internal data, the team obtained preoperative, postcontrast T1-weighted MRI scans from the Brain Tumor Image Segmentation, The Cancer Genome Atlas Glioblastoma Multiforme, and The Cancer Genome Atlas Low Grade Glioma.

The researchers divided a total of 2,105 scans into three subsets of data: 1,396 for training, 361 for internal testing, and 348 for external testing. The first set of MRI scans was used to train the convolutional neural network to discriminate between healthy scans and scans with tumors as well as to classify tumors by type. The researchers evaluated the performance of the model using data from both the internal and external MRI scans.

Using the internal testing data, the model achieved an accuracy of 93.35% (337 of 361) across seven imaging classes (a healthy class and six tumor classes). Sensitivities ranged from 91% to 100%, and positive predictive value—the probability that patients with a positive screening test truly have the disease—ranged from 85% to 100%. Negative predictive values—the probability that patients with a negative screening test truly don’t have the disease—ranged from 98% to 100% across all classes. Network attention overlapped with the tumor areas for all tumor types. For the external test dataset, which included only two tumor types (high-grade glioma and low-grade glioma), the model had an accuracy of 91.95%.

“These results suggest that deep learning is a promising approach for automated classification and evaluation of brain tumors,” Chakrabarty says. “The model achieved high accuracy on a heterogeneous dataset and showed excellent generalization capabilities on unseen testing data.”

Chakrabarty says the 3D deep learning model comes closer to the goal of an end-to-end, automated workflow by improving upon existing 2D approaches, which require radiologists to manually delineate, or characterize, the tumor area on an MRI scan before machine processing. The convolutional neural network eliminates the tedious and labor-intensive step of tumor segmentation prior to classification.

Sotiras, a codeveloper of the model, says it can be extended to other brain tumor types or neurological disorders, potentially providing a pathway to augment much of the neuroradiology workflow.

“This network is the first step toward developing an AI-augmented radiology workflow that can support image interpretation by providing quantitative information and statistics,” Chakrabarty adds.

— Source: RSNA

Share. Facebook Twitter Pinterest LinkedIn Tumblr Email

Related Posts

Targeted Radiopharmaceutical Induces Remission in Pancreatic Cancer Model

May 15, 2026

Ultrasound Facilitates Light-Based Treatments

April 15, 2026

Practice Guidance for Chronic Pelvic Pain Treatment

March 15, 2026
  • Facebook
  • X
  • LinkedIn

E-Newsletters

A trusted resource for industry professionals, Radiology Today reports the latest news and information that matters to radiologists, radiology administrators, and technologists.

1721 Valley Forge Road #486, Valley Forge, PA 19481
Phone: 800-278-4400 or 610-948-9500
Subscriptions: 833-790-6897

Facebook X (Twitter) LinkedIn

Subscribe

  • Home
  • Subscribe
  • About
  • Contact
  • Advertise
  • Privacy Policy
  • Terms & Conditions
© 2026 Radiology Today Magazine. All rights reserved.

Type above and press Enter to search. Press Esc to cancel.