Deep Learning-Based Prediction of the 3D Postorthodontic Facial Changes

被引:22
|
作者
Park, Y. S. [1 ]
Choi, J. H. [2 ,3 ]
Kim, Y. [4 ]
Choi, S. H. [1 ]
Lee, J. H. [1 ,5 ]
Kim, K. H. [1 ,5 ]
Chung, C. J. [1 ,5 ]
机构
[1] Yonsei Univ, Inst Craniofacial Deform, Coll Dent, Dept Orthodont, Seoul, South Korea
[2] Smile Future Orthodont, Seoul, South Korea
[3] Seoul Natl Univ, Sch Dent, Dept Orthodont, Seoul, South Korea
[4] Imagoworks Inc, Seoul, South Korea
[5] Yonsei Univ, Dept Orthodont, Gangnam Severance Hosp, Seoul, South Korea
基金
新加坡国家研究基金会;
关键词
soft tissue prediction; deep learning; conditional GAN; orthodontics; 3-dimensional; outcome simulation; SOFT-TISSUE PROFILE; ACCURACY; SUPERIMPOSITION; RELIABILITY; DOLPHIN; ADULT;
D O I
10.1177/00220345221106676
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
With the increase of the adult orthodontic population, there is a need for an accurate and evidence-based prediction of the posttreatment face in 3 dimensions (3D). The objectives of this study are 1) to develop a 3D postorthodontic face prediction method based on a deep learning network using the patient-specific factors and orthodontic treatment conditions and 2) to validate the accuracy and clinical usability of the proposed method. Paired sets (n = 268) of pretreatment (T1) and posttreatment (T2) cone-beam computed tomography (CBCT) of adult patients were trained with a conditional generative adversarial network to generate 3D posttreatment facial data based on the patient's gender, age, and the changes of upper (Delta U1) and lower incisor position (Delta L1) as input. The accuracy was calculated with prediction error and mean absolute distances between real T2 (T2) and predicted T2 (PT2) near 6 perioral landmark regions, as well as percentage of prediction error less than 2 mm using test sets (n = 44). For qualitative evaluation, an online survey was conducted with experienced orthodontists as panels (n = 56). Overall, PT2 indicated similar 3D changes to the T2 face, with the most apparent changes simulated in the perioral regions. The mean prediction error was 1.2 +/- 1.01 mm with 80.8% accuracy. More than 50% of the experienced orthodontists were unable to distinguish between real and predicted images. In this study, we proposed a valid 3D postorthodontic face prediction method by applying a deep learning algorithm trained with CBCT data sets.
引用
收藏
页码:1372 / 1379
页数:8
相关论文
共 50 条
  • [41] Deep learning-based approach for 3D bone segmentation and prediction of missing tooth region for dental implant planning
    Al-Asali, Mohammed
    Alqutaibi, Ahmed Yaseen
    Al-Sarem, Mohammed
    Saeed, Faisal
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [42] Deep learning-based automatic pipeline for 3D needle localization on intra-procedural 3D MRI
    Zhou, Wenqi
    Li, Xinzhou
    Zabihollahy, Fatemeh
    Lu, David S.
    Wu, Holden H.
    INTERNATIONAL JOURNAL OF COMPUTER ASSISTED RADIOLOGY AND SURGERY, 2024, 19 (11) : 2227 - 2237
  • [43] 2.5D Facial Personality Prediction Based on Deep Learning
    Xu, Jia
    Tian, Weijian
    Lv, Guoyun
    Liu, Shiya
    Fan, Yangyu
    JOURNAL OF ADVANCED TRANSPORTATION, 2021, 2021
  • [44] Monitoring of Caspian Sea-level changes using deep learning-based 3D reconstruction of GRACE signal
    Sorkhabi, Omid Memarian
    Asgari, Jamal
    Amiri-Simkooei, Alireza
    MEASUREMENT, 2021, 174
  • [45] Diagnostic performance of deep learning-based reconstruction algorithm in 3D MR neurography
    Ensle, Falko
    Kaniewska, Malwina
    Tiessen, Anja
    Lohezic, Maelene
    Getzmann, Jonas M.
    Guggenberger, Roman
    SKELETAL RADIOLOGY, 2023, 52 (12) : 2409 - 2418
  • [46] Application of a novel deep learning-based 3D videography workflow to bat flight
    Hakansson, Jonas
    Quinn, Brooke L.
    Shultz, Abigail L.
    Swartz, Sharon M.
    Corcoran, Aaron J.
    ANNALS OF THE NEW YORK ACADEMY OF SCIENCES, 2024, 1536 (01) : 92 - 106
  • [47] Deep Learning-based Detection of Anthropometric Landmarks in 3D Infants Head Models
    Torres, Helena R.
    Oliveira, Bruno
    Veloso, Fernando
    Ruediger, Mario
    Burkhardt, Wolfram
    Moreira, Antonio
    Dias, Nuno
    Morais, Pedro
    Fonseca, Jaime C.
    Vilaca, Joao L.
    MEDICAL IMAGING 2019: COMPUTER-AIDED DIAGNOSIS, 2019, 10950
  • [48] COMBINATION OF HANDCRAFTED AND DEEP LEARNING-BASED FEATURES FOR 3D MESH QUALITY ASSESSMENT
    Abouelaziz, Ilyass
    Chetouani, Aladine
    El Hassouni, Mohammed
    Latecki, Longin Jan
    Cherifi, Hocine
    2020 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP), 2020, : 171 - 175
  • [49] Deep learning-based 3D local feature descriptor from Mercator projections
    Rezaei, Masoumeh
    Rezaeian, Mehdi
    Derhami, Vali
    Sohel, Ferdous
    Bennamoun, Mohammed
    COMPUTER AIDED GEOMETRIC DESIGN, 2019, 74
  • [50] Deep Reinforcement Learning-Based 3D Trajectory Planning for Cellular Connected UAV
    Liu, Xiang
    Zhong, Weizhi
    Wang, Xin
    Duan, Hongtao
    Fan, Zhenxiong
    Jin, Haowen
    Huang, Yang
    Lin, Zhipeng
    DRONES, 2024, 8 (05)