Performance of artificial intelligence in evaluating maxillary sinus mucosal alterations in imaging examinations: systematic review.

Authors

Moreira GC,do Carmo Ribeiro CS,Verner FS,Lemos CAA

Affiliations (2)

  • Applied Health Sciences Post-Graduate Program, Institute of Life Sciences, Federal University of Juiz de Fora, Governador Valadares Campus, Governador Valadares, MG, 35010-180, Brazil.
  • Department of Dentistry, Institute of Life Sciences, Federal University of Juiz de Fora, Governador Valadares Campus, Governador Valadares, MG, 35010-180, Brazil.

Abstract

This systematic review aimed to assess the performance of artificial intelligence (AI) in the evaluation of maxillary sinus mucosal alterations in imaging examinations compared to human analysis. Studies that presented radiographic images for the diagnosis of paranasal sinus diseases, as well as control groups for AI, were included. Articles that performed tests on animals, presented other conditions, surgical methods, did not present data on the diagnosis of MS or on the outcomes of interest (area under the curve, sensitivity, specificity, and accuracy), compared the outcome only among different AIs were excluded. Searches were conducted in 5 electronic databases and a gray literature. The risk of bias (RB) was assessed using the QUADAS-2 and the certainty of evidence by GRADE. Six studies were included. The type of study considered was retrospective observational; with serious RB, and a considerable heterogeneity in methodologies. The IA presents similar results to humans, however, imprecision was assessed as serious for the outcomes and the certainty of evidence was classified as very low according to the GRADE approach. Furthermore, a dose-response effect was determined, as specialists demonstrate greater mastery of the diagnosis of MS when compared to resident professionals or general clinicians. Considering the outcomes, the AI represents a complementary tool for assessing maxillary mucosal alterations, especially considering professionals with less experience. Finally, performance analysis and definition of comparison parameters should be encouraged considering future research perspectives. AI is a potential complementary tool for assessing maxillary sinus mucosal alterations, however studies are still lacking methodological standardization.

Topics

Maxillary SinusArtificial IntelligenceParanasal Sinus DiseasesNasal MucosaJournal ArticleSystematic Review

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