Yao Wei, Bin Yang, Ling Wei, Jun Xue, Yicheng Zhu, Jianchu Li, Mingwei Qin, Shuyang Zhang, Qing Dai, Meng Yang
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Radiologists labeled a total of 3259 segmented ultrasound images from 445 videos with the diagnosis of carotid plaque, 2725 images were collected as a training dataset, and 554 images as a testing dataset. The automatic plaque recognition system BETU was established based on an artificial neural network, and remote application on a 5G environment was performed to test its diagnostic performance.</p><p><strong>Results: </strong>The diagnostic accuracy of BETU (98.5%) was consistent with the radiologist's (Kappa = 0.967, P < 0.001). Remote diagnostic feedback based on BETU-processed ultrasound videos could be obtained in 150ms across a distance of 1023 km between the ultrasound/BETU station and the consultation workstation.</p><p><strong>Conclusion: </strong>Based on the good performance of BETU in real-time plaque recognition from ultrasound videos, 5G plus Artificial intelligence (AI)-assisted ultrasound real-time carotid plaque screening was achieved, and the diagnosis was made.</p>","PeriodicalId":49400,"journal":{"name":"Ultraschall in Der Medizin","volume":" ","pages":"493-500"},"PeriodicalIF":3.1000,"publicationDate":"2024-10-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11466531/pdf/","citationCount":"0","resultStr":"{\"title\":\"Real-time carotid plaque recognition from dynamic ultrasound videos based on artificial neural network.\",\"authors\":\"Yao Wei, Bin Yang, Ling Wei, Jun Xue, Yicheng Zhu, Jianchu Li, Mingwei Qin, Shuyang Zhang, Qing Dai, Meng Yang\",\"doi\":\"10.1055/a-2180-8405\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Purpose: </strong>Carotid ultrasound allows noninvasive assessment of vascular anatomy and function with real-time display. 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引用次数: 0
摘要
目的:颈动脉超声可通过实时显示对血管解剖和功能进行无创评估。基于迁移学习方法,在静态图像的最佳图像识别和分析方面取得了一系列研究成果。然而,对于颈动脉斑块的识别,实时超声检测对自主开发的算法有很高的要求。本研究旨在建立一个基于人工神经网络的自动识别系统 Be Easy to Use (BETU),用于从超声视频中实时同步诊断颈动脉斑块。放射科医生对 445 个视频中的 3259 幅超声图像进行了颈动脉斑块诊断标记,收集了 2725 幅图像作为训练数据集,554 幅图像作为测试数据集。建立了基于人工神经网络的斑块自动识别系统BETU,并在5G环境下进行远程应用,测试其诊断性能:结果:BETU 的诊断准确率(98.5%)与放射科医生的诊断准确率一致(Kappa = 0.967,P < 0.001)。超声/BETU 站与会诊工作站之间的距离为 1023 公里,根据 BETU 处理过的超声视频进行远程诊断反馈只需 150 毫秒:结论:基于 BETU 在超声视频斑块实时识别方面的良好性能,实现了 5G 加人工智能(AI)辅助超声实时颈动脉斑块筛查,并做出了诊断。
Real-time carotid plaque recognition from dynamic ultrasound videos based on artificial neural network.
Purpose: Carotid ultrasound allows noninvasive assessment of vascular anatomy and function with real-time display. Based on the transfer learning method, a series of research results have been obtained on the optimal image recognition and analysis of static images. However, for carotid plaque recognition, there are high requirements for self-developed algorithms in real-time ultrasound detection. This study aims to establish an automatic recognition system, Be Easy to Use (BETU), for the real-time and synchronous diagnosis of carotid plaque from ultrasound videos based on an artificial neural network.
Materials and methods: 445 participants (mean age, 54.6±7.8 years; 227 men) were evaluated. Radiologists labeled a total of 3259 segmented ultrasound images from 445 videos with the diagnosis of carotid plaque, 2725 images were collected as a training dataset, and 554 images as a testing dataset. The automatic plaque recognition system BETU was established based on an artificial neural network, and remote application on a 5G environment was performed to test its diagnostic performance.
Results: The diagnostic accuracy of BETU (98.5%) was consistent with the radiologist's (Kappa = 0.967, P < 0.001). Remote diagnostic feedback based on BETU-processed ultrasound videos could be obtained in 150ms across a distance of 1023 km between the ultrasound/BETU station and the consultation workstation.
Conclusion: Based on the good performance of BETU in real-time plaque recognition from ultrasound videos, 5G plus Artificial intelligence (AI)-assisted ultrasound real-time carotid plaque screening was achieved, and the diagnosis was made.
期刊介绍:
Ultraschall in der Medizin / European Journal of Ultrasound publishes scientific papers and contributions from a variety of disciplines on the diagnostic and therapeutic applications of ultrasound with an emphasis on clinical application. Technical papers with a physiological theme as well as the interaction between ultrasound and biological systems might also occasionally be considered for peer review and publication, provided that the translational relevance is high and the link with clinical applications is tight. The editors and the publishers reserve the right to publish selected articles online only. Authors are welcome to submit supplementary video material. Letters and comments are also accepted, promoting a vivid exchange of opinions and scientific discussions.