Forsidebilde av showet Radiology Advances Podcast | RSNA

Radiology Advances Podcast | RSNA

Podkast av The Radiological Society of North America

engelsk

Teknologi og vitenskap

Tidsbegrenset tilbud

2 Måneder for 19 kr

Deretter 99 kr / MånedAvslutt når som helst.

  • 20 timer lydbøker i måneden
  • Eksklusive podkaster
  • Gratis podkaster
Kom i gang

Les mer Radiology Advances Podcast | RSNA

A podcast showcasing articles from the Radiology Advances journal. Podcast Team Lead Podcast Editor- Diego Lopez-Gonzalez, MD, MPH, Trainee Editors- Nelson Gil, MD, PhD and Luca Salhöfer, MD

Alle episoder

22 Episoder

episode Episode 22: Can LLM-generated summaries help patients understand lung cancer screening reports? cover

Episode 22: Can LLM-generated summaries help patients understand lung cancer screening reports?

This episode discusses a study from the University of California, San Francisco in the United States that tested whether GPT-4o-generated patient-friendly summaries improve comprehension of lung cancer screening CT reports. In a within-subjects survey of 1,815 adults across Lung-RADS 1, 2S, and 4B vignettes, the summaries significantly improved objective comprehension and reduced anxiety for all three report types. Largest gains were in participants with low self-rated English and health literacy. These findings support using LLM summariesas a potential health-equity tool, while highlighting the unmet patient need for personalized next-steps guidance. Self-reported comprehension of large language model-generated summaries of lung cancer screening reports: a vignette survey. Serna et al. Radiology Advances, 2026, 3, umag008. [https://doi.org/10.1093/radadv/umag008]

20. mai 2026 - 11 min
episode Episode 20: Minimum Data for Maximum Accuracy cover

Episode 20: Minimum Data for Maximum Accuracy

This episode explores a study from the Emory Sports Performance and Research Center and the University of Lausanne that determined how few annotated MRI exams are needed to train a reliable deep learning model for thigh muscle segmentation. Using the nnU-Net framework with incrementally larger training sets, the researchers found that just 20 high-quality annotated subjects produced clinically acceptable segmentation across 14 thigh muscles, with biomarker agreement virtually indistinguishable from expert manual segmentation. All tools and trained models have been made openly available. Optimizing MRI annotation workflows for high-accuracy deep learning thigh muscle segmentation in athletes. Slutsky-Ganesh et al. Radiology Advances, 2026, 3, umag005 [https://doi.org/10.1093/radadv/umag005]

22. april 2026 - 11 min
Enkelt å finne frem nye favoritter og lett å navigere seg gjennom innholdet i appen
Enkelt å finne frem nye favoritter og lett å navigere seg gjennom innholdet i appen
Liker at det er både Podcaster (godt utvalg) og lydbøker i samme app, pluss at man kan holde Podcaster og lydbøker atskilt i biblioteket.
Bra app. Oversiktlig og ryddig. MYE bra innhold⭐️⭐️⭐️

Velg abonnementet ditt

Mest populær

Tidsbegrenset tilbud

Premium

20 timer lydbøker

  • Eksklusive podkaster

  • Ingen annonser i Podimo shows

  • Avslutt når som helst

2 Måneder for 19 kr
Deretter 99 kr / Måned

Kom i gang

Premium Plus

100 timer lydbøker

  • Eksklusive podkaster

  • Ingen annonser i Podimo shows

  • Avslutt når som helst

Prøv gratis i 14 dager
Deretter 169 kr / måned

Prøv gratis

Bare på Podimo

Populære lydbøker

Ofte stilte spørsmål

Flere spørsmål og svar
Kom i gang

2 Måneder for 19 kr. Deretter 99 kr / Måned. Avslutt når som helst.