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Accepted for/Published in: Journal of Medical Internet Research

Date Submitted: Sep 20, 2024
Date Accepted: Dec 16, 2024

The final, peer-reviewed published version of this preprint can be found here:

Effectiveness of AI for Enhancing Computed Tomography Image Quality and Radiation Protection in Radiology: Systematic Review and Meta-Analysis

Zhang S, Zhu Z, Yu Z, Sun H, Sun Y, Huang H, Xu L, Wan J

Effectiveness of AI for Enhancing Computed Tomography Image Quality and Radiation Protection in Radiology: Systematic Review and Meta-Analysis

J Med Internet Res 2025;27:e66622

DOI: 10.2196/66622

PMID: 40053787

PMCID: 11907168

Artificial Intelligence for CT Image Quality and Radiation Protection in Radiology: A Meta-Analysis

  • Subo Zhang; 
  • Zhitao Zhu; 
  • Zhenfei Yu; 
  • Haifeng Sun; 
  • Yi Sun; 
  • Hai Huang; 
  • Lei Xu; 
  • Jinxin Wan

ABSTRACT

Background:

Artificial intelligence (AI) presents a promising approach to balancing high image quality with reduced radiation exposure in Computed Tomography (CT) imaging.

Objective:

This meta-analysis evaluates the effectiveness of AI in enhancing CT image quality and lowering radiation doses.

Methods:

A thorough literature search was performed across several databases, including PubMed, Embase, Web of Science, Science Direct, and Cochrane Library, with the final update in 2024. We included studies that compared AI-based interventions to conventional CT techniques. The quality of these studies was assessed using the Newcastle-Ottawa Scale (NOS). Random-effects models were utilized to pool results, and heterogeneity was measured using the I² statistic. Primary outcomes included image quality, CT dose index, and diagnostic accuracy.

Results:

This meta-analysis incorporated five clinical validation studies published between 2022 and 2024, totaling 929 participants. Results indicated that AI-based interventions significantly improved image quality (Mean Difference = 0.70 [0.43, 0.96], P < .001) and showed a positive trend in reducing the CT dose index, though not statistically significant (Mean Difference = 0.47 [-0.21, 1.15], P = 0.18). AI also enhanced image analysis efficiency (Odds Ratio = 1.57 [1.08, 2.27], P = 0.02) and demonstrated high accuracy and sensitivity in detecting intracranial aneurysms, with low-dose CT using AI reconstruction showing non-inferiority for liver lesion detection.

Conclusions:

The findings suggest that AI-based interventions can significantly enhance CT imaging practices by improving image quality and potentially reducing radiation doses, which may lead to better diagnostic accuracy and patient safety. However, these results should be interpreted with caution due to the limited number of studies and the variability in AI algorithms. Further research is needed to clarify AI's impact on radiation reduction and to establish clinical standards.


 Citation

Please cite as:

Zhang S, Zhu Z, Yu Z, Sun H, Sun Y, Huang H, Xu L, Wan J

Effectiveness of AI for Enhancing Computed Tomography Image Quality and Radiation Protection in Radiology: Systematic Review and Meta-Analysis

J Med Internet Res 2025;27:e66622

DOI: 10.2196/66622

PMID: 40053787

PMCID: 11907168

Per the author's request the PDF is not available.

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