通过人工智能在支气管镜检查中区分不同类型气道支架的科学进展。

Science progress distinguishing different types of airway stents under bronchoscopy by artificial intelligence.

作者信息

Chen Chongxiang, Zuo Yingnan, Liu Jingyu, Min Mingyue, Ren Jiangtao, Qiu Huiping, Jian Wenhua, Peng Ping, Zhong Changhao, Li Shiyue

机构信息

Guangzhou Development District Hospital, Guangzhou Huangpu District People's Hospital, Guangzhou, China.

State Key Laboratory of Respiratory Disease, National Clinical Research Center for Respiratory Disease, Guangzhou Institute of Respiratory Health, The First Affiliated Hospital of Guangzhou Medical University, Guangzhou, China.

出版信息

Sci Prog. 2025 Jul-Sep;108(3):368504251362931. doi: 10.1177/00368504251362931. Epub 2025 Jul 31.

Abstract

ObjectiveIn prior research, we employed artificial intelligence (AI) to distinguish different anatomical positions in the airway under bronchoscopy. We aimed to leverage AI to identifying different types of airway stent.MethodsTo "deep learn" imaging data from patients who underwent bronchoscopy for implanting airway stents from January 2010 to June 2024, utilizing the Vision Transformer model (AI architecture). Eight percent of randomized clear images of the upper ends of stents from 662 patients were used to train for three main types of airway stent (T-shaped silicone, silicone, and metal-covered), and to determine if the stents were Y-shaped. The remaining 20% of clear images were utilized for validation.ResultsA total of 1254 bronchoscopic images of the upper ends and interiors of stents from 662 patients with different types of stents were analyzed. These types of stents were T-shaped silicone (70 patients), Y-shaped silicone stents (121), non-Y-shaped silicone stents (196), Y-shaped metal covered (67), and non-Y-shaped metal covered (208). A total of 662 bronchoscopic images depicting the upper ends of stents were utilized to identify three primary types of stents: T-shaped silicone, all silicone, and all metal covered. The mean accuracy for recognizing these three types was 98.5%, with individual accuracies of 93.3% for T-shaped silicone, 98.4% for all silicone, and 100% for all metal-covered stents. The area under the curve value for these three types was >0.99. Additionally, 592 images of stent interiors were employed for training and validation to determine if they were Y-shaped, and if they could be categorized further into Y-shaped silicone, non-Y-shaped silicone, Y-shaped metal-covered, or non-Y-shaped metal-covered stents. The accuracies for identifying Y-shaped silicone stents and Y-shaped metal-covered stents were 95.5% and 100%, respectively.ConclusionsArtificial intelligence technology can differentiate between various types of stent utilizing bronchoscopy images. The trained model holds potential to improve quality control in future clinical applications.

摘要

目的

在先前的研究中,我们运用人工智能(AI)在支气管镜检查下区分气道中的不同解剖位置。我们旨在利用人工智能识别不同类型的气道支架。

方法

利用视觉Transformer模型(一种人工智能架构),对2010年1月至2024年6月期间接受支气管镜检查以植入气道支架的患者的成像数据进行“深度学习”。从662例患者中随机抽取8%的支架上端清晰图像,用于训练三种主要类型的气道支架(T形硅胶支架、硅胶支架和金属覆膜支架),并确定支架是否为Y形。其余20%的清晰图像用于验证。

结果

共分析了662例不同类型支架患者的1254张支架上端和内部的支气管镜图像。这些支架类型包括T形硅胶支架(70例患者)、Y形硅胶支架(121例)、非Y形硅胶支架(196例)、Y形金属覆膜支架(67例)和非Y形金属覆膜支架(208例)。总共662张描绘支架上端的支气管镜图像用于识别三种主要类型的支架:T形硅胶支架、全硅胶支架和全金属覆膜支架。识别这三种类型的平均准确率为98.5%,其中T形硅胶支架的个体准确率为93.3%,全硅胶支架为98.4%,全金属覆膜支架为100%。这三种类型的曲线下面积值>0.99。此外,592张支架内部图像用于训练和验证,以确定它们是否为Y形,以及是否可进一步分类为Y形硅胶支架、非Y形硅胶支架、Y形金属覆膜支架或非Y形金属覆膜支架。识别Y形硅胶支架和Y形金属覆膜支架的准确率分别为95.5%和100%。

结论

人工智能技术可利用支气管镜图像区分不同类型的支架。经过训练的模型在未来临床应用中具有改善质量控制的潜力。

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