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Deep Learning-Based Multi-Class Segmentation of the Paranasal Sinuses of Sinusitis Patients Based on Computed Tomographic Images

Jongwook Whangbo, Juhui Lee, Young Jae Kim, Seon-Tae Kim, Kwang Gi Kim

2024Sensors16 citationsDOIOpen Access PDF

Abstract

Accurate paranasal sinus segmentation is essential for reducing surgical complications through surgical guidance systems. This study introduces a multiclass Convolutional Neural Network (CNN) segmentation model by comparing four 3D U-Net variations-normal, residual, dense, and residual-dense. Data normalization and training were conducted on a 40-patient test set (20 normal, 20 abnormal) using 5-fold cross-validation. The normal 3D U-Net demonstrated superior performance with an F1 score of 84.29% on the normal test set and 79.32% on the abnormal set, exhibiting higher true positive rates for the sphenoid and maxillary sinus in both sets. Despite effective segmentation in clear sinuses, limitations were observed in mucosal inflammation. Nevertheless, the algorithm's enhanced segmentation of abnormal sinuses suggests potential clinical applications, with ongoing refinements expected for broader utility.

Topics & Concepts

SegmentationParanasal sinusesSinus (botany)Artificial intelligenceNormalization (sociology)SinusitisConvolutional neural networkMedicineResidualComputer scienceTest setRadiologyPattern recognition (psychology)SurgeryAlgorithmBiologySociologyAnthropologyGenusBotanySinusitis and nasal conditionsDental Radiography and ImagingOral and Maxillofacial Pathology
Deep Learning-Based Multi-Class Segmentation of the Paranasal Sinuses of Sinusitis Patients Based on Computed Tomographic Images | Litcius