Artificial intelligence based diagnosis of sulcus: assesment of videostroboscopy via deep learning.

IF 1.9 3区 医学 Q2 OTORHINOLARYNGOLOGY European Archives of Oto-Rhino-Laryngology Pub Date : 2024-11-01 Epub Date: 2024-07-13 DOI:10.1007/s00405-024-08801-y
Ömer Tarık Kavak, Şevket Gündüz, Cabir Vural, Necati Enver
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Abstract

Purpose: To develop a convolutional neural network (CNN)-based model for classifying videostroboscopic images of patients with sulcus, benign vocal fold (VF) lesions, and healthy VFs to improve clinicians' accuracy in diagnosis during videostroboscopies when evaluating sulcus.

Materials and methods: Videostroboscopies of 433 individuals who were diagnosed with sulcus (91), who were diagnosed with benign VF diseases (i.e., polyp, nodule, papilloma, cyst, or pseudocyst [311]), or who were healthy (33) were analyzed. After extracting 91,159 frames from videostroboscopies, a CNN-based model was created and tested. The healthy and sulcus groups underwent binary classification. In the second phase of the study, benign VF lesions were added to the training set, and multiclassification was executed across all groups. The proposed CNN-based model results were compared with five laryngology experts' assessments.

Results: In the binary classification phase, the CNN-based model achieved 98% accuracy, 98% recall, 97% precision, and a 97% F1 score for classifying sulcus and healthy VFs. During the multiclassification phase, when evaluated on a subset of frames encompassing all included groups, the CNN-based model demonstrated greater accuracy when compared with that of the five laryngologists (%76 versus 72%, 68%, 72%, 63%, and 72%).

Conclusion: The utilization of a CNN-based model serves as a significant aid in the diagnosis of sulcus, a VF disease that presents notable challenges in the diagnostic process. Further research could be undertaken to assess the practicality of implementing this approach in real-time application in clinical practice.

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基于人工智能的脑沟诊断:通过深度学习评估视频旋转镜。
目的:开发一种基于卷积神经网络(CNN)的模型,用于对声带沟、声带良性病变和健康声带沟患者的视频频闪仪图像进行分类,以提高临床医生在视频频闪仪检查中评估声带沟时诊断的准确性:分析了 433 名被诊断为声带沟(91 人)、被诊断为良性声带疾病(即息肉、结节、乳头状瘤、囊肿或假性囊肿 [311])或健康声带(33 人)的视频旋转内窥镜检查结果。从视频罗盘镜中提取了 91,159 帧图像后,创建并测试了基于 CNN 的模型。健康组和窦道组进行了二元分类。在研究的第二阶段,良性 VF 病变被添加到训练集中,所有组别都进行了多重分类。将所提出的基于 CNN 的模型结果与五位喉科专家的评估结果进行了比较:结果:在二元分类阶段,基于 CNN 的模型对沟状 VF 和健康 VF 的分类准确率为 98%,召回率为 98%,精确率为 97%,F1 分数为 97%。在多分类阶段,当对包含所有组别的帧子集进行评估时,与五位喉科专家相比,基于 CNN 的模型表现出更高的准确率(%76 对 72%、68%、72%、63% 和 72%):结论:基于 CNN 的模型的使用对咽峡炎的诊断有重要帮助,咽峡炎是一种在诊断过程中具有显著挑战性的 VF 疾病。可开展进一步研究,以评估在临床实践中实时应用这种方法的实用性。
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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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