An artificial intelligence algorithm for the classification of sphenoid sinus pneumatisation on sinus computed tomography scans

Author:

Taylor Alon1ORCID,Habib Al‐Rahim12ORCID,Kumar Ashnil34ORCID,Wong Eugene15ORCID,Hasan Zubair1ORCID,Singh Narinder15

Affiliation:

1. Department of Otolaryngology – Head and Neck Surgery Westmead Hospital Westmead New South Wales Australia

2. Faculty of Medicine and Health University of Sydney Sydney New South Wales Australia

3. School of Biomedical Engineering, Faculty of Engineering University of Sydney Sydney New South Wales Australia

4. ARC Training Centre for Innovative BioEngineering Sydney New South Wales Australia

5. Westmead Clinical School, Faculty of Medicine and Health University of Sydney Sydney New South Wales Australia

Abstract

AbstractBackgroundClassifying sphenoid pneumatisation is an important but often overlooked task in reporting sinus CT scans. Artificial intelligence (AI) and one of its key methods, convolutional neural networks (CNNs), can create algorithms that can learn from data without being programmed with explicit rules and have shown utility in radiological image classification.ObjectiveTo determine if a trained CNN can accurately classify sphenoid sinus pneumatisation on CT sinus imaging.MethodsSagittal slices through the natural ostium of the sphenoid sinus were extracted from retrospectively collected bone‐window CT scans of the paranasal sinuses for consecutive patients over 6 years. Two blinded Otolaryngology residents reviewed each image and classified the sphenoid sinus pneumatisation as either conchal, presellar or sellar. An AI algorithm was developed using the Microsoft Azure Custom Vision deep learning platform to classify the pattern of pneumatisation.ResultsSeven hundred eighty images from 400 patients were used to train the algorithm, which was then tested on a further 118 images from 62 patients. The algorithm achieved an accuracy of 93.2% (95% confidence interval [CI] 87.1–97.0), 87.3% (95% CI 79.9–92.7) and 85.6% (95% CI 78.0–91.4) in correctly identifying conchal, presellar and sellar sphenoid pneumatisation, respectively. The overall weighted accuracy of the CNN was 85.9%.ConclusionThe CNN described demonstrated a moderately accurate classification of sphenoid pneumatisation subtypes on CT scans. The use of CNN‐based assistive tools may enable surgeons to achieve safer operative planning through routine automated reporting allowing greater resources to be directed towards the identification of pathology.

Publisher

Wiley

Subject

Otorhinolaryngology

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