Facial recognition for disease diagnosis using a deep learning convolutional neural network: a systematic review and meta-analysis
With the rapid advancement of deep learning network technology, the application of facial recognition technology in the medical field has received increasing attention. This study aims to systematically review the literature of the past decade on facial recognition technology based on deep learning...
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Veröffentlicht in: | Postgraduate medical journal 2024-10, Vol.100 (1189), p.796-810 |
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Zusammenfassung: | With the rapid advancement of deep learning network technology, the application of facial recognition technology in the medical field has received increasing attention.
This study aims to systematically review the literature of the past decade on facial recognition technology based on deep learning networks in the diagnosis of rare dysmorphic diseases and facial paralysis, among other conditions, to determine the effectiveness and applicability of this technology in disease identification.
This study followed the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guidelines for literature search and retrieved relevant literature from multiple databases, including PubMed, on 31 December 2023. The search keywords included deep learning convolutional neural networks, facial recognition, and disease recognition. A total of 208 articles on facial recognition technology based on deep learning networks in disease diagnosis over the past 10 years were screened, and 22 articles were selected for analysis. The meta-analysis was conducted using Stata 14.0 software.
The study collected 22 articles with a total sample size of 57 539 cases, of which 43 301 were samples with various diseases. The meta-analysis results indicated that the accuracy of deep learning in facial recognition for disease diagnosis was 91.0% [95% CI (87.0%, 95.0%)].
The study results suggested that facial recognition technology based on deep learning networks has high accuracy in disease diagnosis, providing a reference for further development and application of this technology. |
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ISSN: | 0032-5473 1469-0756 1469-0756 |
DOI: | 10.1093/postmj/qgae061 |