Miguel Mascarenhas, Maria João Almeida, Mariano González-Haba, Belén Agudo Castillo, Jessica Widmer, António Costa, Yousef Fazel, Tiago Ribeiro, Francisco Mendes, Miguel Martins, João Afonso, Pedro Cardoso, Joana Mota, Joana Fernandes, João Ferreira, Filipe Vilas Boas, Pedro Pereira, Guilherme Macedo
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引用次数: 0
摘要
胆道狭窄(BS)的诊断和特征仍然具有挑战性。人工智能(AI)应用于数字单操作员胆道镜检查(D-SOC)有望提高不确定BS的诊断准确性。这项多中心研究旨在验证卷积神经网络(CNN)模型使用大型D-SOC图像数据集自动检测和表征恶性BS。纳入三个中心的D-SOC检查,分别是葡萄牙波尔图Universitário de s o jo医院(n = 123)、西班牙马德里Majadahonda大学医院(n = 18)和美国纽约纽约大学Langone医院(n = 23)。框架根据组织病理学进行分类。评估CNN在检测肿瘤血管、乳头状突起、结节和肿块方面的表现。数据集被分成90%的训练集和10%的验证集。性能指标包括AUC、敏感性、特异性、PPV和NPV。对164份D-SOC检查的96,020张图像(50,427例恶性狭窄和45,593例良性狭窄)进行分析,结果显示CNN的准确率为92.9%,灵敏度为91.7%,特异性为94.4%,PPV为95.1%,NPV为93.1%,AUROC为0.95。形态学特征的准确率分别为90.8%(乳头状突起)、93.6%(结节)、93.2%(肿块)和78.1%(肿瘤血管)。人工智能驱动的CNN模型有望提高疑似胆道恶性肿瘤的诊断准确性。这项多中心研究为正在进行的研究提供了不同的数据集,支持人工智能在这一患者群体中的进一步应用。
Artificial intelligence for automatic diagnosis and pleomorphic morphological characterization of malignant biliary strictures using digital cholangioscopy.
Diagnosing and characterizing biliary strictures (BS) remains challenging. Artificial intelligence (AI) applied to digital single-operator cholangioscopy (D-SOC) holds promise for improving diagnostic accuracy in indeterminate BS. This multicenter study aimed to validate a convolutional neural network (CNN) model using a large dataset of D-SOC images to automatically detect and characterize malignant BS. D-SOC exams from three centers-Centro Hospitalar Universitário de São João, Porto, Portugal (n = 123), Hospital Universitario Puerta de Hierro Majadahonda, Madrid, Spain (n = 18), and New York University Langone Hospital, New York, USA (n = 23)-were included. Frames were categorized based on histopathology. The CNN's performance in detecting tumor vessels, papillary projections, nodules, and masses was assessed. The dataset was split into 90% training and 10% validation sets. Performance metrics included AUC, sensitivity, specificity, PPV, and NPV. Analysis of 96,020 images from 164 D-SOC exams (50,427 malignant strictures and 45,593 benign findings) showed the CNN achieved 92.9% accuracy, 91.7% sensitivity, 94.4% specificity, 95.1% PPV, 93.1% NPV, and an AUROC of 0.95. Accuracy rates for morphological features were 90.8% (papillary projections), 93.6% (nodules), 93.2% (masses), and 78.1% (tumor vessels). AI-driven CNN models hold promise for enhancing diagnostic accuracy in suspected biliary malignancies. This multicenter study contributes diverse datasets to ongoing research, supporting further AI applications in this patient population.
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