Artificial Intelligence Techniques for Automatic Detection of Peri-implant Marginal Bone Remodeling in Intraoral Radiographs
-
Published:2023-07-19
Issue:5
Volume:36
Page:2259-2277
-
ISSN:1618-727X
-
Container-title:Journal of Digital Imaging
-
language:en
-
Short-container-title:J Digit Imaging
Author:
Vera María, Gómez-Silva María JoséORCID, Vera Vicente, López-González Clara I., Aliaga IgnacioORCID, Gascó Esther, Vera-González VicenteORCID, Pedrera-Canal María, Besada-Portas EvaORCID, Pajares GonzaloORCID
Abstract
AbstractPeri-implantitis can cause marginal bone remodeling around implants. The aim is to develop an automatic image processing approach based on two artificial intelligence (AI) techniques in intraoral (periapical and bitewing) radiographs to assist dentists in determining bone loss. The first is a deep learning (DL) object-detector (YOLOv3) to roughly identify (no exact localization is required) two objects: prosthesis (crown) and implant (screw). The second is an image understanding-based (IU) process to fine-tune lines on screw edges and to identify significant points (intensity bone changes, intersections between screw and crown). Distances between these points are used to compute bone loss. A total of 2920 radiographs were used for training (50%) and testing (50%) the DL process. The mAP@0.5 metric is used for performance evaluation of DL considering periapical/bitewing and screws/crowns in upper and lower jaws, with scores ranging from 0.537 to 0.898 (sufficient because DL only needs an approximation). The IU performance is assessed with 50% of the testing radiographs through the t test statistical method, obtaining p values of 0.0106 (line fitting) and 0.0213 (significant point detection). The IU performance is satisfactory, as these values are in accordance with the statistical average/standard deviation in pixels for line fitting (2.75/1.01) and for significant point detection (2.63/1.28) according to the expert criteria of dentists, who establish the ground-truth lines and significant points. In conclusion, AI methods have good prospects for automatic bone loss detection in intraoral radiographs to assist dental specialists in diagnosing peri-implantitis.
Funder
Universidad Complutense de Madrid
Publisher
Springer Science and Business Media LLC
Subject
Computer Science Applications,Radiology, Nuclear Medicine and imaging,Radiological and Ultrasound Technology
Reference43 articles.
1. Hashim D, Cionca, NA: Comprehensive review of peri-implantitis risk factors. Curr Oral Health Rep 7:262–273, 2020 2. Hashim D, Cionca N, Combescure C, Mombelli A: The diagnosis of periimplantitis: a systematic review on the predictive value of bleeding on probing. Clin Oral Implants Res. 29 (Suppl 16):276–93, 2018 3. Berglundh,T, Armitage G, Araujo MG, Avila-Ortiz G, Blanco J, Camargo PM, Chen S, Cochran D, Derks J, Figuero E, Hämmerle CHF, Heitz-Mayfield LJA, Huynh-Ba G, Iacono V, Koo KT, Lambert F, McCauley L, Quirynen M, Renvert S, Salvi GE, Schwarz F, Tarnow D, Tomasi C, Wang HL, Zitzmann N: Peri-implant diseases and conditions: consensus report of workgroup 4 of the 2017 World Workshop on the Classification of Periodontal and Peri-Implant Diseases and Conditions. Journal of Periodontology, 89(Suppl 1):S313– S318, 2018 4. Romandini M, Lima C, Pedrinaci I, Araoz A, Soldini MC, Sanz M: Prevalence and risk/protective indicators of peri-implant diseases: a university-representative cross-sectional study. Clin Oral Implants Res, 32(1),112-122, 2021. 5. Bagchi P, Josh N: Role of radiographic evaluation in treatment planning for dental implants: a review. Journal of Dental & Allied Sciences, 1(1):21-25, 2012
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|