4.2 Article

Semi-Supervised Deep Learning Semantic Segmentation for 3D Volumetric Computed Tomographic Scoring of Chronic Rhinosinusitis: Clinical Correlations and Comparison with Lund-Mackay Scoring

Journal

TOMOGRAPHY
Volume 8, Issue 2, Pages 718-729

Publisher

MDPI
DOI: 10.3390/tomography8020059

Keywords

three-dimensional CT; Lund-Mackay score; artificial intelligence; semi-supervised deep learning; MobileNet; SENet; ResNet

Funding

  1. Tri-Service General Hospital [TSGH-A111004, TSGH-NTUST-111-03, MND-MAB-D-111116]
  2. National Defense Medical Center [TSGH-A111004, TSGH-NTUST-111-03, MND-MAB-D-111116]
  3. National Taiwan University of Science and Technology [TSGH-A111004, TSGH-NTUST-111-03, MND-MAB-D-111116]

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This study proposed a volume-based modified LM score (VMLMs) to evaluate the volume of inflammatory disease and found that VMLMs had a stronger correlation with clinical symptoms. The methods showed improved sinus classification and segmentation compared to state-of-the-art networks and were able to differentiate sex dimorphism and age correlation. Patients who underwent surgery had significantly higher TLMs and VMLMs, and VMLMs had excellent predictive capability for postoperative symptom improvement.
Background: The traditional Lund-Mackay score (TLMs) is unable to subgrade the volume of inflammatory disease. We aimed to propose an effective modification and calculated the volume-based modified LM score (VMLMs), which should correlate more strongly with clinical symptoms than the TLMs. Methods: Semi-supervised learning with pseudo-labels used for self-training was adopted to train our convolutional neural networks, with the algorithm including a combination of MobileNet, SENet, and ResNet. A total of 175 CT sets, with 50 participants that would undergo sinus surgery, were recruited. The Sinonasal Outcomes Test-22 (SNOT-22) was used to assess disease-specific symptoms before and after surgery. A 3D-projected view was created and VMLMs were calculated for further comparison. Results: Our methods showed a significant improvement both in sinus classification and segmentation as compared to state-of-the-art networks, with an average Dice coefficient of 91.57%, an MioU of 89.43%, and a pixel accuracy of 99.75%. The sinus volume exhibited sex dimorphism. There was a significant positive correlation between volume and height, but a trend toward a negative correlation between maxillary sinus and age. Subjects who underwent surgery had significantly greater TLMs (14.9 vs. 7.38) and VMLMs (11.65 vs. 4.34) than those who did not. ROC-AUC analyses showed that the VMLMs had excellent discrimination at classifying a high probability of postoperative improvement with SNOT-22 reduction. Conclusions: Our method is suitable for obtaining detailed information, excellent sinus boundary prediction, and differentiating the target from its surrounding structure. These findings demonstrate the promise of CT-based volumetric analysis of sinus mucosal inflammation.

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