| Literature DB >> 33562764 |
Yejin Jeon1, Kyeorye Lee1, Leonard Sunwoo1,2, Dongjun Choi1, Dong Yul Oh1, Kyong Joon Lee1, Youngjune Kim3, Jeong-Whun Kim4, Se Jin Cho1, Sung Hyun Baik1, Roh-Eul Yoo5, Yun Jung Bae1, Byung Se Choi1, Cheolkyu Jung1, Jae Hyoung Kim1.
Abstract
Accurate image interpretation of Waters' and Caldwell view radiographs used for sinusitis screening is challenging. Therefore, we developed a deep learning algorithm for diagnosing frontal, ethmoid, and maxillary sinusitis on both Waters' and Caldwell views. The datasets were selected for the training and validation set (n = 1403, sinusitis% = 34.3%) and the test set (n = 132, sinusitis% = 29.5%) by temporal separation. The algorithm can simultaneously detect and classify each paranasal sinus using both Waters' and Caldwell views without manual cropping. Single- and multi-view models were compared. Our proposed algorithm satisfactorily diagnosed frontal, ethmoid, and maxillary sinusitis on both Waters' and Caldwell views (area under the curve (AUC), 0.71 (95% confidence interval, 0.62-0.80), 0.78 (0.72-0.85), and 0.88 (0.84-0.92), respectively). The one-sided DeLong's test was used to compare the AUCs, and the Obuchowski-Rockette model was used to pool the AUCs of the radiologists. The algorithm yielded a higher AUC than radiologists for ethmoid and maxillary sinusitis (p = 0.012 and 0.013, respectively). The multi-view model also exhibited a higher AUC than the single Waters' view model for maxillary sinusitis (p = 0.038). Therefore, our algorithm showed diagnostic performances comparable to radiologists and enhanced the value of radiography as a first-line imaging modality in assessing multiple sinusitis.Entities:
Keywords: artificial intelligence; deep learning; machine learning; multi-view radiographs; paranasal sinusitis
Year: 2021 PMID: 33562764 PMCID: PMC7914751 DOI: 10.3390/diagnostics11020250
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418