Kise Yoshitaka, Kuwada Chiaki, Mori Mizuho, Fukuda Motoki, Ariji Yoshiko, Ariji Eiichiro
Department of Oral and Maxillofacial Radiology, Aichi Gakuin University School of Dentistry, Nagoya, Japan.
Department of Oral Radiology, School of Dentistry, Osaka Dental University, Osaka, Japan.
Imaging Sci Dent. 2024 Mar;54(1):33-41. doi: 10.5624/isd.20230169. Epub 2023 Dec 13.
The aims of this study were to create a deep learning model to distinguish between nasopalatine duct cysts (NDCs), radicular cysts, and no-lesions (normal) in the midline region of the anterior maxilla on panoramic radiographs and to compare its performance with that of dental residents.
One hundred patients with a confirmed diagnosis of NDC (53 men, 47 women; average age, 44.6±16.5 years), 100 with radicular cysts (49 men, 51 women; average age, 47.5±16.4 years), and 100 with normal groups (56 men, 44 women; average age, 34.4±14.6 years) were enrolled in this study. Cases were randomly assigned to the training datasets (80%) and the test dataset (20%). Then, 20% of the training data were randomly assigned as validation data. A learning model was created using a customized DetectNet built in Digits version 5.0 (NVIDIA, Santa Clara, USA). The performance of the deep learning system was assessed and compared with that of two dental residents.
The performance of the deep learning system was superior to that of the dental residents except for the recall of radicular cysts. The areas under the curve (AUCs) for NDCs and radicular cysts in the deep learning system were significantly higher than those of the dental residents. The results for the dental residents revealed a significant difference in AUC between NDCs and normal groups.
This study showed superior performance in detecting NDCs and radicular cysts and in distinguishing between these lesions and normal groups.
本研究的目的是创建一个深度学习模型,以在全景X线片上区分上颌前部中线区域的鼻腭管囊肿(NDC)、根囊肿和无病变(正常)情况,并将其性能与牙科住院医师的性能进行比较。
本研究纳入了100例确诊为NDC的患者(53例男性,47例女性;平均年龄44.6±16.5岁)、100例根囊肿患者(49例男性,51例女性;平均年龄47.5±16.4岁)和100例正常组患者(56例男性,44例女性;平均年龄34.4±14.6岁)。病例被随机分配到训练数据集(80%)和测试数据集(20%)。然后,将20%的训练数据随机分配为验证数据。使用内置在Digits 5.0版本(美国加利福尼亚州圣克拉拉市英伟达公司)中的定制DetectNet创建一个学习模型。对深度学习系统的性能进行评估,并与两名牙科住院医师的性能进行比较。
除根囊肿的召回率外,深度学习系统的性能优于牙科住院医师。深度学习系统中NDC和根囊肿的曲线下面积(AUC)显著高于牙科住院医师。牙科住院医师的结果显示,NDC与正常组之间的AUC存在显著差异。
本研究在检测NDC和根囊肿以及区分这些病变与正常组方面表现出卓越的性能。