Kise Yoshitaka, Kuwada Chiaki, Ariji Yoshiko, Naitoh Munetaka, Ariji Eiichiro
Department of Oral and Maxillofacial Radiology, School of Dentistry, Aichi Gakuin University, Nagoya 464-8651, Japan.
J Clin Med. 2021 Sep 29;10(19):4508. doi: 10.3390/jcm10194508.
This study was performed to evaluate the diagnostic performance of deep learning systems using ultrasonography (USG) images of the submandibular glands (SMGs) in three different conditions: obstructive sialoadenitis, Sjögren's syndrome (SjS), and normal glands. Fifty USG images with a confirmed diagnosis of obstructive sialoadenitis, 50 USG images with a confirmed diagnosis of SjS, and 50 USG images with no SMG abnormalities were included in the study. The training group comprised 40 obstructive sialoadenitis images, 40 SjS images, and 40 control images, and the test group comprised 10 obstructive sialoadenitis images, 10 SjS images, and 10 control images for deep learning analysis. The performance of the deep learning system was calculated and compared between two experienced radiologists. The sensitivity of the deep learning system in the obstructive sialoadenitis group, SjS group, and control group was 55.0%, 83.0%, and 73.0%, respectively, and the total accuracy was 70.3%. The sensitivity of the two radiologists was 64.0%, 72.0%, and 86.0%, respectively, and the total accuracy was 74.0%. This study revealed that the deep learning system was more sensitive than experienced radiologists in diagnosing SjS in USG images of two case groups and a group of healthy subjects in inflammation of SMGs.
本研究旨在评估深度学习系统在三种不同情况下,即阻塞性涎腺炎、干燥综合征(SjS)和正常腺体,使用下颌下腺(SMG)超声(USG)图像的诊断性能。研究纳入了50张确诊为阻塞性涎腺炎的USG图像、50张确诊为SjS的USG图像以及50张无SMG异常的USG图像。训练组包括40张阻塞性涎腺炎图像、40张SjS图像和40张对照图像,测试组包括10张阻塞性涎腺炎图像、10张SjS图像和10张对照图像用于深度学习分析。计算了深度学习系统的性能,并在两位经验丰富的放射科医生之间进行了比较。深度学习系统在阻塞性涎腺炎组、SjS组和对照组中的敏感性分别为55.0%、83.0%和73.0%,总准确率为70.3%。两位放射科医生的敏感性分别为64.0%、72.0%和86.0%,总准确率为74.0%。本研究表明,在SMG炎症的两个病例组和一组健康受试者的USG图像中,深度学习系统在诊断SjS方面比经验丰富的放射科医生更敏感。