Department of Orthodontics, University of Alfonso X el Sabio, Avenidad de la universidad,1, Villanueva de la Cañada, Madrid, 28691, Spain.
Clinica Odontoiatrica Lario, Via Strada Statale dei Giovi, 59, Grandate, Come, 22070, Italy.
BMC Oral Health. 2024 Oct 28;24(1):1309. doi: 10.1186/s12903-024-05097-6.
Artificial intelligence (AI) is revolutionizing cephalometric diagnosis in orthodontics, streamlining the patient assessments. This study aimed to assess the reliability, accuracy, and time consumption of artificial intelligence (AI)-based software compared to a conventional digital cephalometric analysis method on 2D lateral cephalogram.
408 lateral cephalometries were analysed using three methods: manual landmark localization, automatic localization, and semi-automatic localization with AI-based software. On each lateral cephalogram, 15 variables were selected, including skeletal, dental, and soft tissue measurements. The difference between the two AI-based software options (automatic and semi-automatic) was compared with the conventional digital technique. The time required to produce a complete cephalometric tracing was evaluated for each method using Student's t-test.
Statistically significant differences in the accuracy of landmark positioning were detected among the three different techniques (p < 0,01). However, it is noteworthy that almost all of these differences were not clinically significant. There was a small difference in accuracy between the semi-automatic AI-based option and conventional digital techniques. Regarding the time used for each technique, the automatic version was the fastest, followed by the semi-automatic option and the conventional digital technique. (p < 0,000).
The study showed a statistical difference in accuracy between the conventional digital technique and two AI-based software alternatives, but these differences were not clinically significant except for specific measurements. The semi-automatic option was more accurate than the automatic one and faster than conventional tracing. Further research is needed to confirm AI's accuracy in cephalometric tracing.
人工智能(AI)正在彻底改变正畸中的头影测量诊断,简化了患者评估。本研究旨在评估人工智能(AI)为基础的软件与传统的数字头影测量分析方法在二维侧位头颅侧位片上的可靠性、准确性和时间消耗。
使用三种方法分析了 408 个侧位头颅侧位片:手动地标定位、自动定位和基于 AI 的软件的半自动定位。在每个侧位头颅侧位片上,选择了 15 个变量,包括骨骼、牙齿和软组织测量值。比较了两种基于 AI 的软件选项(自动和半自动)与传统数字技术之间的差异。使用学生 t 检验评估了每种方法生成完整头影测量轨迹所需的时间。
在三种不同技术中,地标定位的准确性存在统计学上的显著差异(p<0.01)。然而,值得注意的是,几乎所有这些差异都没有临床意义。半自动 AI 选项和传统数字技术之间的准确性存在微小差异。关于每种技术使用的时间,自动版本最快,半自动选项次之,传统数字技术最慢。(p<0.000)。
该研究表明,传统数字技术与两种基于 AI 的软件替代方案之间在准确性上存在统计学差异,但这些差异除了特定测量值外,没有临床意义。半自动选项比自动选项更准确,比传统跟踪更快。需要进一步研究以确认 AI 在头影测量追踪中的准确性。