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Can artificial intelligence in spine imaging affect current practice? Practical developments and their clinical

Yu-Cherng Chang1, Cinthia Del Toro2, Joseph P Gjolaj3

  • 1Department of Radiology, University of Miami Miller School of Medicine/Jackson Memorial Hospital, Miami, FL 33136, United States.

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|July 18, 2025
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Summary
This summary is machine-generated.

Artificial intelligence (AI) offers growing benefits in spine imaging, with deep learning reconstruction being the most advanced clinical application. This review details current AI tools to aid adoption decisions for spine imaging professionals.

Keywords:
Artificial intelligenceAugmented realityImage reconstructionRadiologySegmentationSpine imagingSurgical planning

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Area of Science:

  • Radiology
  • Spine Imaging
  • Artificial Intelligence

Background:

  • Artificial intelligence (AI) is rapidly expanding in spine imaging.
  • Assessing the clinical relevance of AI in spine imaging is challenging due to early-stage research.
  • This summary focuses on AI tools currently in clinical use.

Purpose of the Study:

  • To explain the benefits of AI in spine imaging.
  • To guide radiologists and surgeons in understanding the current state of AI in spine imaging.
  • To inform decisions regarding the adoption of AI in clinical practice.

Main Methods:

  • A narrative review of publications was conducted.
  • Searches focused on "artificial intelligence" and "spine imaging" in PubMed.
  • The review updates on AI applications in spine imaging currently used in clinical practice.

Main Results:

  • AI applications include deep learning image reconstruction (DLR), segmentation, report generation, and surgical assistance.
  • DLR is the most mature AI application, improving imaging speed and interpretability.
  • Other AI applications show promise but require further investigation or are comparable to human performance.

Conclusions:

  • AI in spine imaging encompasses diverse applications with early clinical implementation.
  • The findings suggest a promising future for AI integration in spine imaging.
  • AI tools are becoming increasingly relevant for clinical practice in spine imaging.