Scientific Reports (Dec 2024)

Artificial intelligence in risk prediction and diagnosis of vertebral fractures

  • Srikar R. Namireddy,
  • Saran S. Gill,
  • Amaan Peerbhai,
  • Abith G. Kamath,
  • Daniele S. C. Ramsay,
  • Hariharan Subbiah Ponniah,
  • Ahmed Salih,
  • Dragan Jankovic,
  • Darius Kalasauskas,
  • Jonathan Neuhoff,
  • Andreas Kramer,
  • Salvatore Russo,
  • Santhosh G. Thavarajasingam

DOI
https://doi.org/10.1038/s41598-024-75628-2
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 16

Abstract

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Abstract With the increasing prevalence of vertebral fractures, accurate diagnosis and prognostication are essential. This study assesses the effectiveness of AI in diagnosing and predicting vertebral fractures through a systematic review and meta-analysis. A comprehensive search across major databases selected studies utilizing AI for vertebral fracture diagnosis or prognosis. Out of 14,161 studies initially identified, 79 were included, with 40 undergoing meta-analysis. Diagnostic models were stratified by pathology: non-pathological vertebral fractures, osteoporotic vertebral fractures, and vertebral compression fractures. The primary outcome measure was AUROC. AI showed high accuracy in diagnosing and predicting vertebral fractures: predictive AUROC = 0.82, osteoporotic vertebral fracture diagnosis AUROC = 0.92, non-pathological vertebral fracture diagnosis AUROC = 0.85, and vertebral compression fracture diagnosis AUROC = 0.87, all significant (p 99%, p < 0.001) indicated significant variation in model design and performance. AI technologies show considerable promise in improving the diagnosis and prognostication of vertebral fractures, with high accuracy. However, observed heterogeneity and study biases necessitate further research. Future efforts should focus on standardizing AI models and validating them across diverse datasets to ensure clinical utility.

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