深度学习方法测量COVID-19后牙槽骨流失

Sang Won Lee, Kateryna Huz, Kayla Gorelick, Thomas Bina, Satoko Matsumura, Noah Yin, Nicholas Zhang, Yvonne Naa Ardua Anang, Jackie Li, Helena I. Servin-DeMarrais, Donald J McMahon, Michael T. Yin, Sunil Wadhwa, Helen H. Lu
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摘要

牙周病的严重程度可以通过牙咬x线片测量牙槽嵴高度(ACH)来确定;然而,普遍的评估方法是通过可视化,这是耗时的,不是一个直接的措施。本文的主要目的是创建和验证一种深度学习技术,以精确评估咬翼x线片中的牙槽骨丢失。此外,对牙科专业人员进行了调查,以确定与深度学习程序相比,严重牙周病乙酰胆碱可视化测量的准确性,并确定该程序在不同牙科专业人员中的可接受性。最后,研究中利用深度学习程序,通过纵向测量“大流行前”(2017年2月- 2020年2月)和“大流行后”(2020年2月- 2023年2月)期间患者的咬牙x线片ACH,评估COVID对牙周病的作用。大流行前组乙酰胆碱的平均百分比损失为-1.74 + 16.5%,代表牙槽骨的增加。相比之下,大流行后组乙酰胆碱增加了2.46 + 14.6%,代表了牙槽骨的损失。在考虑x射线持续时间的差异后,大流行后组与大流行前组的乙酰胆碱ACH年化百分比变化仍有较大的趋势(1.33 + 11.9% vs -0.94 + 12.5%, p=0.07)。总的来说,这项研究证明了乙酰胆碱测量的深度学习程序的成功训练和验证,以及它在牙科专业人员的临床和研究中的实用性和可接受性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Approach to Measure Alveolar Bone Loss After COVID-19
Severity of periodontal disease may be determined by measurement of alveolar crestal height (ACH) on dental bitewing radiographs; however, the prevailing method of assessment is through visualization which is time consuming and not a direct measure. The primary objective of this manuscript is to create and validate a deep learning technique for precise evaluation of alveolar bone loss in bitewing radiographs. Additionally, surveys were conducted with dental professionals to determine accuracy of visualized measures of ACH for severe periodontal disease versus the deep learning program and to determine the acceptability of utility of the program among diverse dental professionals. Lastly, the deep learning program was utilized in research to evaluate the role of COVID on periodontal disease through longitudinal measures of bitewing radiograph ACH from patients during the: "pre-pandemic" (Feb 2017 - Feb 2020) and "post-pandemic" (Feb 2020 - Feb 2023) periods. The pre-pandemic group had a mean percentage loss of ACH of -1.74 + 16.5%, representing a gain in alveolar bone. In contrast, the post-pandemic group had a gain in ACH of 2.46 + 14.6%, representing a loss in alveolar bone. There remained a trend for greater annualized percent change in ACH in the post-pandemic vs pre-pandemic group (1.33 + 11.9% vs -0.94 + 12.5%, p=0.07), after accounting for differences in duration between xrays. Overall, this study demonstrates the successful training and validation of a deep learning program for ACH measurement as well as its utility and acceptability among dental professionals for clinical and research.
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