Department of Developmental Biology, Harvard School of Dental Medicine, Boston, Mass.
Department of Developmental Biology, Harvard School of Dental Medicine, Boston, Mass; School of Dentistry, University of Minnesota, Minneapolis, Minn.
Am J Orthod Dentofacial Orthop. 2023 Aug;164(2):194-200. doi: 10.1016/j.ajodo.2022.11.020. Epub 2023 Mar 28.
Artificial intelligence remote monitoring of clear aligner therapy has recently gained popularity. It uses deep learning algorithms on a patient's mobile smartphone to determine readiness to progress to the next aligner (ie, GO vs NO-GO) and identify areas in which the teeth are not tracking with the clear aligners. This study aimed to assess the repeatability of the Go or No-Go instructions provided by the application and to determine the 3-dimensional discrepancies that constitute an unseat.
Thirty patients in treatment with clear aligners at an academic clinic were scanned twice using a remote monitoring application on a smartphone, and the results were compared. Gauge repeatability and reproducibility analysis were performed. Intraoral and remote monitoring scans were obtained on the same day from 24 additional clear aligner patients that completed treatment using their final aligners. The intraoral scan after using the final aligner and the stereolithography file of the planned position at the final aligner was compared with measure the maximum discrepancies between the actual and planned position of the teeth.
Gauge compatibility of 44.7% was noted. In total 83.3% of patient instructions agreed between Scan 1 and 2, but 0% agreed completely on which and/or how many teeth had tracking issues. Patients who received GO instruction had mean greatest discrepancies of 1.997 mm, 1.901 mm, 0.530 mm, 8.911°, 7.827°, and 7.049° in mesiodistal, buccolingual, occlusogingival, tip, torque, and rotational dimensions, respectively. These discrepancies were not significantly different from patients receiving NO-GO instruction (1.771 mm, 1.808 mm, 0.606 mm, 8.673°, 8.134°, and 6.719° for the corresponding categories).
Despite the study's limitations, these findings suggest concerns with the consistency of remote monitoring instructions because of gauge compatibility over the industry standard. Similarly, large discrepancies in tooth position for patients receiving GO and NO-GO instruction suggest that artificial intelligence decisions were inconsistent with quantitative findings.
人工智能远程监测隐形矫正治疗技术近来得到了广泛关注。该技术使用深度学习算法,通过患者的智能手机来判断是否准备好进入下一阶段的隐形矫正(即“通过/不通过”),并识别牙齿是否未按照隐形矫正器进行矫正的区域。本研究旨在评估应用程序提供的“通过/不通过”指令的可重复性,并确定构成“脱位”的三维差异。
在一家学术诊所接受隐形矫正治疗的 30 名患者,通过智能手机上的远程监测应用程序进行了两次扫描,然后对结果进行了比较。进行了量具重复性和再现性分析。另外,从 24 名已完成使用最终矫正器治疗的隐形矫正患者中,在同一天获得了口内和远程监测扫描。将使用最终矫正器后的口内扫描与最终矫正器处的计划位置的立体光刻文件进行比较,以测量牙齿实际位置与计划位置之间的最大差异。
注意到量具的兼容性为 44.7%。扫描 1 和 2 之间,83.3%的患者指令一致,但完全一致的比例为 0%,即哪些和/或多少牙齿存在跟踪问题。收到“通过”指令的患者,在近远中、颊舌向、牙合龈向、切端、转矩和扭转方向上的最大差异分别为 1.997mm、1.901mm、0.530mm、8.911°、7.827°和 7.049°。这些差异与收到“不通过”指令的患者(对应类别中的 1.771mm、1.808mm、0.606mm、8.673°、8.134°和 6.719°)没有显著差异。
尽管存在研究限制,但这些发现表明,由于量具兼容性超过行业标准,远程监测指令的一致性存在问题。同样,对于收到“通过”和“不通过”指令的患者,牙齿位置存在较大差异,这表明人工智能决策与定量发现不一致。