Scientific Reports (Oct 2024)

Deep learning improves physician accuracy in the comprehensive detection of abnormalities on chest X-rays

  • Pamela G. Anderson,
  • Hannah Tarder-Stoll,
  • Mehmet Alpaslan,
  • Nora Keathley,
  • David L. Levin,
  • Srivas Venkatesh,
  • Elliot Bartel,
  • Serge Sicular,
  • Scott Howell,
  • Robert V. Lindsey,
  • Rebecca M. Jones

DOI
https://doi.org/10.1038/s41598-024-76608-2
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 13

Abstract

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Abstract Chest X-rays are the most commonly performed medical imaging exam, yet they are often misinterpreted by physicians. Here, we present an FDA-cleared, artificial intelligence (AI) system which uses a deep learning algorithm to assist physicians in the comprehensive detection and localization of abnormalities on chest X-rays. We trained and tested the AI system on a large dataset, assessed generalizability on publicly available data, and evaluated radiologist and non-radiologist physician accuracy when unaided and aided by the AI system. The AI system accurately detected chest X-ray abnormalities (AUC: 0.976, 95% bootstrap CI: 0.975, 0.976) and generalized to a publicly available dataset (AUC: 0.975, 95% bootstrap CI: 0.971, 0.978). Physicians showed significant improvements in detecting abnormalities on chest X-rays when aided by the AI system compared to when unaided (difference in AUC: 0.101, p < 0.001). Non-radiologist physicians detected abnormalities on chest X-ray exams as accurately as radiologists when aided by the AI system and were faster at evaluating chest X-rays when aided compared to unaided. Together, these results show that the AI system is accurate and reduces physician errors in chest X-ray evaluation, which highlights the potential of AI systems to improve access to fast, high-quality radiograph interpretation.