[188937]
Title: Analysing the feasibility of an automated AI-based classifier for detecting paranasal anomalies in the maxillary sinus.
Written by: S. A. Hoffmann and D. Bhattacharya and B. Becker and D. Beyersdorff and E. Petersen and M. Petersen and D. Eggert and A. Schläfer and C. Betz
in: (2023).
Volume: <strong>102</strong>. Number: (S 02),
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Publisher: Georg Thieme Verlag:
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DOI: 10.1055/s-0043-1767093
URL: http://www.thieme-connect.com/products/ejournals/abstract/10.1055/s-0043-1767093
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Abstract: Large scale population studies have been performed to analyse the rate of finding sinus opacities in cranial MRIs. It is of interest whether there are findings requiring clarification. Using AI-based methods can automate the detection of the sinus opacities and reduce the workload of clinicians. In this work, a method for AI-based classification was developed in order to automatically recognise paranasal sinus opacities.

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