Journal highlights

The following are highlights from the current issues of RSNA’s peer-reviewed journals.

Radiology Logo

Photon-Counting CT Improves Liver Lesion Detection

CT is routinely used to evaluate liver metastases, a critical task that impacts patient outcomes. But conventional energy-integrating detector (EID) CT has limitations, especially in detecting small liver lesions (<1.5 cm). More precise imaging methods are needed to help assess resectability and monitor therapeutic response.

Photon-counting CT (PCCT) represents a breakthrough in CT imaging technology. PCCT improves spatial resolution, reduces image noise and requires lower radiation doses and less iodinated contrast material than EID CT. However, clinical validation often lags behind technological advancements.

A recent Radiology study compared PCCT with EID CT using a virtual imaging framework. Researchers led by Benjamin Wildman-Tobriner, MD, Duke University Hospital in Durham, NC, analyzed 50 phantoms with 183 simulated liver lesions scanned at routine and low-dose levels.

The results showed that PCCT yielded better sensitivity in detecting small liver lesions. Radiologists also reported greater confidence and better image quality.

“As PCCT becomes more widely available, radiologists will be able to take full advantage of its potential for dose reductions across a variety of imaging indications,” the authors write.

Read the full article, “Photon-Counting CT Effects on Sensitivity for Liver Lesion Detection: A Reader Study Using Virtual Imaging,” and the related editorial, “Photon-Counting CT: Virtual Study, Real Benefit.”

Follow the Radiology editor on X @RadiologyEditor.

Wildman-Tobriner fig 1 Radiology

Rendering of an extended cardiac torso, or XCAT, phantom with inserted liver lesions. As part of the virtual imaging framework, the phantoms were scanned on virtual CT scanners to produce realistic images.

https://doi.org/10.1148/radiol.241568 ©RSNA 2024

Radiograpics

Opportunities and Challenges for Neurologic Imaging at 0.55-T MRI

For patients with neurologic conditions, MRI is commonly performed using 1.5T and 3T systems. Lower-field-strength MRI systems, common in the early 1980s, were phased out due to lower image quality, longer imaging times and reduced efficiency. However, recent software and hardware advances, along with a push for greater accessibility to MRI, have sparked renewed interest in MRI systems with field strengths ranging from 0.064 T to 1.0 T.

In a new RadioGraphics article, Lauren J. Kelsey, BS, and colleagues from the University of Michigan Medical School, Ann Arbor, explore the potential of a modern, whole-body, mid[1]field-strength 0.55T MRI system for neurologic imaging. Although image resolution may be lower compared with conventional 1.5T and 3T systems, the authors highlight significant advantages that include cost savings, enhanced patient comfort and opportunities for use in nontraditional settings such as emergency departments.

“Modern midfield systems have the potential to improve access to MRI as they require fewer resources to acquire and maintain,” the authors conclude.

Read the full article, “Routine and Advanced Neurologic Imaging at 0.55-T MRI: Opportunities and Challenges,” and invited commentary, “Routine and Advanced Neurologic Imaging at 0.55-T MRI: Opportunities and Challenges.”

This article is also available for CME on EdCentral. Follow the RadioGraphics editor on X @RadG_Editor.

Comparisons of axial 3D T2 sampling  perfection with application-optimized  contrasts by using flip angle evolution (SPACE) MR images obtained  at 0.55 T versus 3.0 T in the same  patient with a vestibular schwannoma  (arrows). Mishra Fig 4 RadioGraphics

Comparisons of axial 3D T2 sampling perfection with application-optimized contrasts by using flip angle evolution (SPACE) MR images obtained at 0.55 T versus 3.0 T in the same patient with a vestibular schwannoma (arrows). The cochlea is visualized in an angled multiplanar reconstruction view. The acquisition times for these images were 5 minutes, 35 seconds with compressed sensing acceleration for 0.55-T imaging and 5 minutes, 21 seconds for 3.0-T imaging.

https://doi.org/10.1148/rg.240076 ©RSNA 2025

Deep Learning Improves Segmentation on Fetal MRI Scans

Congenital diaphragmatic hernia (CDH) is a rare disease where a defect in the diaphragm allows abdominal organs to move into the thorax. It often hinders lung development and causes breathing problems at birth.

Advanced imaging techniques like fetal MRI are used to measure lung volumes and predict outcomes, with low lung volume indicating a poor prognosis and possible need for treatments like tracheal occlusion.

Recent studies are exploring the use of deep learning algorithms to improve segmentation of fetal MRI scans for more accurate assessments, but further evaluation is needed for their application in fetuses with CDH.

In a Radiology Advances article, Leon M. Bischoff, MD, University Hospital Bonn, in Germany, and colleagues sought to determine if DL segmentation of total fetal body volume (TFBV) and total fetal lung volume (TFLV) in 208 fetuses with CDH demonstrated comparable performance to manual segmentation.

“DL for body and lung segmentation in fetuses with congenital diaphragmatic hernia allows reliable and rapid calculations of the observed/expected ratio and equally predicts prognostic outcome,” the authors conclude.

Read the full article, “Fetal MRI deep learning segmentation of body and lung in congenital diaphragmatic hernia.”

Logo for RSNA's open access journal, Radiology Advances

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Maximize the reach and impact of your work by publishing in Radiology Advances, our premier open access, peer reviewed journal. Published in partnership with Oxford University Press, Radiology Advances showcases cutting-edge medical imaging research, from emerging technologies to the clinical innovations shaping the future of radiology and patient care.

Led by Susanna I. Lee, MD, PhD, and an international board of experts spanning over 20 subspecialties, the journal offers a rigorous double-anonymized peer review process to uphold the highest standards of research. Join a global platform that accelerates discovery and advances the field.

Learn more about submission to Radiology Advances and other renowned RSNA journals at RSNA.org/Journals.