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Artificial intelligence for detecting keratoconus.

Magali Ms VandevenneEleonora FavuzzaMitko VetaErsilia LucenteforteTos Tjm BerendschotRita MencucciRudy Mma NuijtsGianni VirgiliMor M Dickman
Published in: The Cochrane database of systematic reviews (2023)
AI appears to be a promising triage tool in ophthalmologic practice for diagnosing keratoconus. Test accuracy was very high for manifest keratoconus and slightly lower for subclinical keratoconus, indicating a higher chance of missing a diagnosis in people without clinical signs. This could lead to progression of keratoconus or an erroneous indication for refractive surgery, which would worsen the disease. We are unable to draw clear and reliable conclusions due to the high risk of bias, the unexplained heterogeneity of the results, and high applicability concerns, all of which reduced our confidence in the evidence. Greater standardization in future research would increase the quality of studies and improve comparability between studies.
Keyphrases
  • artificial intelligence
  • machine learning
  • big data
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  • deep learning
  • minimally invasive
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