医学
人工智能
深度学习
超声波
医学物理学
生物医学工程
深层神经网络
人工神经网络
模式识别(心理学)
人工智能应用
计算机视觉
梅德林
机器学习
放射科
作者
Ximena Wortsman,Manuel Lozano,Francisco Javier Rodríguez‐Gómez,Yessenia Valderrama,Gabriela Ortiz‐Orellana,Luciana Zattar-Ramos,Francisco de Cabo,Eliza Porciuncula Justo Ducati,Rosa Sigrist,Cláudia Borges Fontan Câmara,Juliana Paulos de Rezende,Claudia González,Leonie Schelke,Julia Diva Zavariz,Patricia Barrera,Peter J. Velthuis
摘要
OBJECTIVES: Despite the growing use of artificial intelligence (AI) in medicine, imaging, and dermatology, to date, there is no information on the use of AI for discriminating cosmetic fillers on ultrasound (US). METHODS: An international collaborative group working in dermatologic and esthetic US was formed and worked with the staff of the Department of Computer Science and AI of the Universidad de Granada to gather and process a relevant number of anonymized images. AI techniques based on deep learning (DL) with YOLO (you only look once) architecture, together with a bounding box annotation tool, allowed experts to manually delineate regions of interest for the discrimination of common cosmetic fillers under real-world conditions. RESULTS: A total of 14 physicians from 6 countries participated in the AI study and compiled a final dataset comprising 1432 US images, including HA (hyaluronic acid), PMMA (polymethylmethacrylate), CaHA (calcium hydroxyapatite), and SO (silicone oil) filler cases. The model exhibits robust and consistent classification performance, with an average accuracy of 0.92 ± 0.04 across the cross-validation folds. YOLOv11 demonstrated outstanding performance in the detection of HA and SO, yielding F1 scores of 0.96 ± 0.02 and 0.94 ± 0.04, respectively. On the other hand, CaHA and PMMA show somewhat lower and less consistent performance in terms of precision and recall, with F1-scores around 0.83. CONCLUSIONS: AI using YOLOv11 allowed us to discriminate reliably between HA and SO using different complexity high-frequency US devices and operators. Further AI DL-specific work is needed to identify CaHA and PMMA more accurately.
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