School and Hospital of Stomatology, Fujian Medical University, Fuzhou, 350001, China.
Fujian Provincial Engineering Research Center of Oral Biomaterial, Fujian Medical University, Fuzhou, 350001, China.
Sci Rep. 2024 Feb 6;14(1):3009. doi: 10.1038/s41598-024-52930-7.
Currently, the classification of bone mineral density (BMD) in many research studies remains rather broad, often neglecting localized changes in BMD. This study aims to explore the correlation between peri-implant BMD and primary implant stability using a new artificial intelligence (AI)-based BMD grading system. 49 patients who received dental implant treatment at the Affiliated Hospital of Stomatology of Fujian Medical University were included. Recorded the implant stability quotient (ISQ) after implantation and the insertion torque value (ITV). A new AI-based BMD grading system was used to obtain the distribution of BMD in implant site, and the bone mineral density coefficients (BMDC) of the coronal, middle, apical, and total of the 1 mm site outside the implant were calculated by model overlap and image overlap technology. Our objective was to investigate the relationship between primary implant stability and BMDC values obtained from the new AI-based BMD grading system. There was a significant positive correlation between BMDC and ISQ value in the coronal, middle, and total of the implant (P < 0.05). However, there was no significant correlation between BMDC and ISQ values in the apical (P > 0.05). Furthermore, BMDC was notably higher at implant sites with greater ITV (P < 0.05). BMDC calculated from the new AI-based BMD grading system could more accurately present the BMD distribution in the intended implant site, thereby providing a dependable benchmark for predicting primary implant stability.
目前,许多研究中骨密度(BMD)的分类仍然相当广泛,往往忽略了 BMD 的局部变化。本研究旨在探讨使用新的基于人工智能(AI)的 BMD 分级系统评估种植体周围 BMD 与初级种植体稳定性之间的相关性。研究纳入了在福建医科大学附属口腔医院接受牙种植治疗的 49 名患者。记录植入后的种植体稳定性指数(ISQ)和植入扭矩值(ITV)。使用新的基于 AI 的 BMD 分级系统获得种植部位的 BMD 分布,并通过模型重叠和图像重叠技术计算种植体 1mm 外冠、中、根尖和总部位的骨矿物质密度系数(BMDC)。我们的目的是探讨初级种植体稳定性与新的基于 AI 的 BMD 分级系统获得的 BMDC 值之间的关系。种植体冠、中、总部位的 BMDC 与 ISQ 值呈显著正相关(P < 0.05)。然而,种植体根尖部位的 BMDC 与 ISQ 值之间无显著相关性(P > 0.05)。此外,ITV 较大的种植体部位的 BMDC 值明显较高(P < 0.05)。从新的基于 AI 的 BMD 分级系统计算的 BMDC 可以更准确地呈现预期种植部位的 BMD 分布,从而为预测初级种植体稳定性提供可靠的基准。