Park Jungeun, Yoon Seongwon, Kim Hannah, Kim Youngjun, Lee Uilyong, Yu Hyungseog
Department of Orthodontics, College of Dentistry, Yonsei University, Seoul, Korea.
College of Dentistry, Seoul National University, Seoul, Korea.
Imaging Sci Dent. 2024 Sep;54(3):240-250. doi: 10.5624/isd.20240009. Epub 2024 Aug 12.
This study was performed to assess the clinical validity and accuracy of a deep learning-based automatic landmarking algorithm for cone-beam computed tomography (CBCT). Three-dimensional (3D) CBCT head measurements obtained through manual and automatic landmarking were compared.
A total of 80 CBCT scans were divided into 3 groups: non-surgical (39 cases); surgical without hardware, namely surgical plates and mini-screws (9 cases); and surgical with hardware (32 cases). Each CBCT scan was analyzed to obtain 53 measurements, comprising 27 lengths, 21 angles, and 5 ratios, which were determined based on 65 landmarks identified using either a manual or a 3D automatic landmark detection method.
In comparing measurement values derived from manual and artificial intelligence landmarking, 6 items displayed significant differences: R U6CP-L U6CP, R L3CP-L L3CP, S-N, Or_R-R U3CP, L1L to Me-GoL, and GoR-Gn/S-N (<0.05). Of the 3 groups, the surgical scans without hardware exhibited the lowest error, reflecting the smallest difference in measurements between human- and artificial intelligence-based landmarking. The time required to identify 65 landmarks was approximately 40-60 minutes per CBCT volume when done manually, compared to 10.9 seconds for the artificial intelligence method (PC specifications: GeForce 2080Ti, 64GB RAM, and an Intel i7 CPU at 3.6 GHz).
Measurements obtained with a deep learning-based CBCT automatic landmarking algorithm were similar in accuracy to values derived from manually determined points. By decreasing the time required to calculate these measurements, the efficiency of diagnosis and treatment may be improved.
本研究旨在评估基于深度学习的锥束计算机断层扫描(CBCT)自动地标算法的临床有效性和准确性。比较了通过手动和自动地标法获得的三维(3D)CBCT头部测量值。
总共80例CBCT扫描被分为3组:非手术组(39例);无硬件植入的手术组,即无手术钢板和微型螺钉(9例);有硬件植入的手术组(32例)。对每次CBCT扫描进行分析以获得53项测量值,包括27个长度、21个角度和5个比例,这些测量值是基于使用手动或3D自动地标检测方法识别的65个地标确定的。
在比较手动地标和人工智能地标得出的测量值时,有6项显示出显著差异:R U6CP-L U6CP、R L3CP-L L3CP、S-N、Or_R-R U3CP、L1L至Me-GoL以及GoR-Gn/S-N(<0.05)。在这3组中,无硬件植入的手术扫描误差最低,反映出基于人工和人工智能的地标测量之间的差异最小。手动识别65个地标时,每个CBCT容积大约需要40 - 60分钟,而人工智能方法仅需10.9秒(电脑配置:GeForce 2080Ti、64GB内存和英特尔i7 3.6GHz CPU)。
基于深度学习的CBCT自动地标算法获得的测量值在准确性上与手动确定点得出的值相似。通过减少计算这些测量值所需的时间,可提高诊断和治疗效率。