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首页> 外文期刊>PLoS One >Deep learning neural networks to differentiate Stafne’s bone cavity from pathological radiolucent lesions of the mandible in heterogeneous panoramic radiography
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Deep learning neural networks to differentiate Stafne’s bone cavity from pathological radiolucent lesions of the mandible in heterogeneous panoramic radiography

机译:深入学习神经网络,将STAFNE的骨腔与异构全景射线照相颌下颌下颌下的病理无辐射病变区分

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This study aimed to develop a high-performance deep learning algorithm to differentiate Stafne’s bone cavity (SBC) from cysts and tumors of the jaw based on images acquired from various panoramic radiographic systems. Data sets included 176 Stafne’s bone cavities and 282 odontogenic cysts and tumors of the mandible (98 dentigerous cysts, 91 odontogenic keratocysts, and 93 ameloblastomas) that required surgical removal. Panoramic radiographs were obtained using three different imaging systems. The trained model showed 99.25% accuracy, 98.08% sensitivity, and 100% specificity for SBC classification and resulted in one misclassified SBC case. The algorithm was approved to recognize the typical imaging features of SBC in panoramic radiography regardless of the imaging system when traced back with Grad-Cam and Guided Grad-Cam methods. The deep learning model for SBC differentiating from odontogenic cysts and tumors showed high performance with images obtained from multiple panoramic systems. The present algorithm is expected to be a useful tool for clinicians, as it diagnoses SBCs in panoramic radiography to prevent unnecessary examinations for patients. Additionally, it would provide support for clinicians to determine further examinations or referrals to surgeons for cases where even experts are unsure of diagnosis using panoramic radiography alone.
机译:本研究旨在开发一种高性能深度学习算法,以基于从各种全景放射线系统获取的图像来区分STAWNE的骨腔(SBC)与下囊肿的囊肿和肿瘤。数据集包括176个Stafne的骨骼腔和282个牙牙囊肿和颌骨囊肿(98个直觉囊肿,91个牙植物角囊细胞和93Ameloblastomas),需要手术去除。使用三种不同的成像系统获得全景射线照相。培训的模型表现出99.25%的精度,灵敏度为98.08%,对SBC分类的100%特异性,导致一个错误分类的SBC案例。该算法被批准,以识别SBC在全景射线照相中的典型成像特征,无论采用Grad-CAM和引导型凸轮方法追溯。 SBC的深度学习模型与牙肠囊肿和肿瘤的差异显示出高性能,具有从多个全景系统获得的图像。当前算法预计是临床医生的有用工具,因为它诊断了全景造影中的SBC,以防止对患者的不必要的考试。此外,它将提供对临床医生的支持,以确定甚至专家不确定单独使用全景射线照相的案件的外科医生的进一步检查或转介。

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