Harnessing AI for precision tonsillitis diagnosis: a revolutionary approach in endoscopic analysis.

IF 1.9 3区 医学 Q2 OTORHINOLARYNGOLOGY European Archives of Oto-Rhino-Laryngology Pub Date : 2024-12-01 Epub Date: 2024-09-04 DOI:10.1007/s00405-024-08938-w
Po-Hsuan Jeng, Chien-Yi Yang, Tien-Ru Huang, Chung-Feng Kuo, Shao-Cheng Liu
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Abstract

Background: Diagnosing and treating tonsillitis pose no significant challenge for otolaryngologists; however, it can increase the infection risk for healthcare professionals amidst the coronavirus pandemic. In recent years, with the advancement of artificial intelligence (AI), its application in medical imaging has also thrived. This research is to identify the optimal convolutional neural network (CNN) algorithm for accurate diagnosis of tonsillitis and early precision treatment.

Methods: Semi-supervised learning with pseudo-labels used for self-training was adopted to train our CNN, with the algorithm including UNet, PSPNet, and FPN. A total of 485 pharyngoscopic images from 485 participants were included, comprising healthy individuals (133 cases), patients with the common cold (295 cases), and patients with tonsillitis (57 cases). Both color and texture features from 485 images are extracted for analysis.

Results: UNet outperformed PSPNet and FPN in accurately segmenting oropharyngeal anatomy automatically, with average Dice coefficient of 97.74% and a pixel accuracy of 98.12%, making it suitable for enhancing the diagnosis of tonsillitis. The normal tonsils generally have more uniform and smooth textures and have pinkish color, similar to the surrounding mucosal tissues, while tonsillitis, particularly the antibiotic-required type, shows white or yellowish pus-filled spots or patches, and shows more granular or lumpy texture in contrast, indicating inflammation and changes in tissue structure. After training with 485 cases, our algorithm with UNet achieved accuracy rates of 93.75%, 97.1%, and 91.67% in differentiating the three tonsil groups, demonstrating excellent results.

Conclusion: Our research highlights the potential of using UNet for fully automated semantic segmentation of oropharyngeal structures, which aids in subsequent feature extraction, machine learning, and enables accurate AI diagnosis of tonsillitis. This innovation shows promise for enhancing both the accuracy and speed of tonsillitis assessments.

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利用人工智能精准诊断扁桃体炎:内窥镜分析的革命性方法。
背景:扁桃体炎的诊断和治疗对耳鼻喉科医生来说并非难事,但在冠状病毒大流行的情况下,扁桃体炎会增加医护人员的感染风险。近年来,随着人工智能(AI)的发展,其在医学影像领域的应用也蓬勃发展。本研究旨在确定最佳卷积神经网络(CNN)算法,以准确诊断扁桃体炎并进行早期精准治疗:方法:采用半监督学习和用于自我训练的伪标签来训练我们的 CNN,算法包括 UNet、PSPNet 和 FPN。共纳入了 485 名参与者的 485 张咽喉镜图像,其中包括健康人(133 例)、普通感冒患者(295 例)和扁桃体炎患者(57 例)。从 485 幅图像中提取颜色和纹理特征进行分析:在自动准确分割口咽解剖结构方面,UNet 的表现优于 PSPNet 和 FPN,其平均 Dice 系数为 97.74%,像素准确率为 98.12%,适用于加强扁桃体炎的诊断。正常扁桃体一般质地较为均匀光滑,呈粉红色,与周围粘膜组织相似,而扁桃体炎,尤其是需要抗生素治疗的扁桃体炎,则表现为白色或淡黄色脓性斑点或斑块,质地多呈颗粒状或块状,表明炎症和组织结构发生了变化。在对 485 个病例进行训练后,我们的 UNet 算法在区分三个扁桃体组别方面的准确率分别达到 93.75%、97.1% 和 91.67%,取得了非常好的效果:我们的研究凸显了使用 UNet 对口咽结构进行全自动语义分割的潜力,这有助于后续的特征提取和机器学习,并实现扁桃体炎的准确人工智能诊断。这一创新有望提高扁桃体炎评估的准确性和速度。
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来源期刊
CiteScore
5.30
自引率
7.70%
发文量
537
审稿时长
2-4 weeks
期刊介绍: Official Journal of European Union of Medical Specialists – ORL Section and Board Official Journal of Confederation of European Oto-Rhino-Laryngology Head and Neck Surgery "European Archives of Oto-Rhino-Laryngology" publishes original clinical reports and clinically relevant experimental studies, as well as short communications presenting new results of special interest. With peer review by a respected international editorial board and prompt English-language publication, the journal provides rapid dissemination of information by authors from around the world. This particular feature makes it the journal of choice for readers who want to be informed about the continuing state of the art concerning basic sciences and the diagnosis and management of diseases of the head and neck on an international level. European Archives of Oto-Rhino-Laryngology was founded in 1864 as "Archiv für Ohrenheilkunde" by A. von Tröltsch, A. Politzer and H. Schwartze.
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