Scoring Primary Sjögren's syndrome affected salivary glands ultrasonography images by using deep learning algorithms

A. Vukicevic, A. Zabotti, V. Milic, A. Hočevar, O. Lucia, G. Filippou, A. Tzioufas, S. Vita, Nenad Filipović
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Abstract

Salivary gland ultrasonography (SGUS) represents a promising tool for diagnosing Primary Sjögren's syndrome (pSS), which is manifest with abnormalities in salivary glands (SG). In this study, we propose a fully automatic method for scoring SGs in SGUS images, which is the most important step towards SG the pSS diagnosis. A two-centric cohort included 600 images (150 patients) annotated by experienced clinicians. The aim of the study was to assess various deep learning classifiers (MobileNetV2, VGG19, Dense-Net, Squeeze-Net, Inception_v3, and ResNet) for the purpose of the pSS scoring in SGUS. The training was performed using the ADAM optimizer and cross entropy loss function. Top performing algorithms were MobileNetV2, ResNet, and Dense-Net. The assessment showed that deep learning algorithms reached clinicians-level performances in the almost real-time. Considering that, the further work should be regarded towards evaluation on larger and international data sets with the goal to establish SGUS as an effective noninvasive pSS diagnostic tool.
利用深度学习算法对原发性Sjögren综合征影响唾液腺超声图像进行评分
唾液腺超声检查(SGUS)是一种很有前途的诊断原发性Sjögren综合征(pSS)的工具,它表现为唾液腺(SG)的异常。在本研究中,我们提出了一种全自动的SGs图像SGs评分方法,这是SGs诊断pSS的最重要的一步。双中心队列包括600张图像(150名患者),由经验丰富的临床医生注释。本研究的目的是评估各种深度学习分类器(MobileNetV2、VGG19、Dense-Net、squeezy - net、Inception_v3和ResNet),以便在SGUS中进行pSS评分。采用ADAM优化器和交叉熵损失函数进行训练。表现最好的算法是MobileNetV2、ResNet和Dense-Net。评估表明,深度学习算法几乎实时地达到了临床医生的水平。考虑到这一点,进一步的工作应该是对更大的和国际数据集进行评估,目标是将SGUS建立为有效的无创pSS诊断工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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