AI in Healthcare

AI assisted Pediatric Bone Age Workflow Study

2 min · 3. sept. 2025
episode AI assisted Pediatric Bone Age Workflow Study cover

Description

In this episode of the AI in Healthcare podcast, we break down a new study by Jeong and colleagues that explores the impact of AI assistance on radiologist reading times and workflow efficiency. One‑line takeaway: AI assistance reduced reading time and improved throughput for bone‑age radiograph interpretation in a real‑world retrospective cohort. Reference The Impact of Artificial Intelligence on Radiologists’ Reading Time in Bone Age Radiograph Assessment Citation: Jeong S, Han K, Kang Y, et al. Journal of Imaging Informatics in Medicine. 2025 Aug;38(4):1915‑1923. https://pubmed.ncbi.nlm.nih.gov/39528879/

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