Literature DB >> 35559377

Cranio-maxillofacial post-operative face prediction by deep spatial multiband VGG-NET CNN.

Rizwan Ali1, Rui Lei1, Haifei Shi2, Jinghong Xu1.   

Abstract

Current plastic and reconstructive surgery computational techniques are not precise and take a long time to perform. Therefore, these limitations reduced the adoption of computational techniques. Although computer-aided surgical preparation systems may help to enhance clinical results, minimize operating time and costs, they are too complicated and require detailed manual information, which restricts their usage in doctor-patient communication and clinical decision-making. In order to obtain the optimal aesthetic and reconstruction treatment results, these techniques must be designed and implemented carefully. Computer-aided modeling, planning, and simulation techniques enable the preoperational evaluation of various therapeutic strategies based on the 3D patient models. We offer the new deep-learning architecture for diagnostics, risk stratification, and post-operative simulation for face prediction. Initially, preprocessing was done by using the weighted adaptive median filter and Laplacian partial differential equation-based histogram equalization. Then the target area was converted to 3D for clear visualization by using the Smart restorative frustum model. Finally, the post-operative face prediction was constructed by using the deep spatial Multiband VGG NET CNN. We obtained a face dataset of 313,318 CT and their clinical records from different centers. The algorithms were developed by 21,095 scans (Qure25k data set). In addition, CQ500 datasets from various centers were compiled in two batches, B1 and B2, to validate the algorithms clinically. Four hundred ninety-one scans used the CQ500 dataset. Initially, we reconstructed the input image and then devised the post-operative face computationally. The suggested deep spatial Multiband VGG NET CNN showed the high range of post-operative face prediction accuracy. Therefore, successful metrics such as the Jaccard and dice scores have shown accurate outcomes compared to other traditional methods. MATLAB was used to obtain the output of proposed work. With the help of the suggested classifier, the prediction accuracy was 93.7%, sensitivity was 99.9%, and specificity was 99.8%, all of which were higher than traditional approaches. Here, the suggested method provides better results for post-operative face prediction to the applied dataset than any other existing mechanisms. It is a generalized attempt that can apply to other similar datasets as well. AJTR
Copyright © 2022.

Entities:  

Keywords:  Plastic and reconstructive surgery; deep spatial multiband VGG NET CNN; histogram equalization; post-operative face prediction; smart restorative frustum model; surgical planning; weighted adaptive median filter

Year:  2022        PMID: 35559377      PMCID: PMC9091107     

Source DB:  PubMed          Journal:  Am J Transl Res        ISSN: 1943-8141            Impact factor:   3.940


  19 in total

1.  Three-Dimensional Analysis and Surgical Planning in Craniomaxillofacial Surgery.

Authors:  Derek M Steinbacher
Journal:  J Oral Maxillofac Surg       Date:  2015-12       Impact factor: 1.895

Review 2.  Three-Dimensional Printing in Plastic and Reconstructive Surgery: A Systematic Review.

Authors:  Adam J Bauermeister; Alexander Zuriarrain; Martin I Newman
Journal:  Ann Plast Surg       Date:  2016-11       Impact factor: 1.539

3.  Three-dimensional virtual planning in orthognathic surgery enhances the accuracy of soft tissue prediction.

Authors:  Geert Van Hemelen; Maarten Van Genechten; Lieven Renier; Maria Desmedt; Elric Verbruggen; Nasser Nadjmi
Journal:  J Craniomaxillofac Surg       Date:  2015-04-30       Impact factor: 2.078

4.  Geometric morphometrics aided by machine learning in craniofacial surgery.

Authors:  Lara S van de Lande; Athanasios Papaioannou; David J Dunaway
Journal:  J Orthod       Date:  2019-04-08

5.  A machine learning approach for real-time modelling of tissue deformation in image-guided neurosurgery.

Authors:  Michele Tonutti; Gauthier Gras; Guang-Zhong Yang
Journal:  Artif Intell Med       Date:  2017-07-24       Impact factor: 5.326

6.  The Auto-eFACE: Machine Learning-Enhanced Program Yields Automated Facial Palsy Assessment Tool.

Authors:  Matthew Q Miller; Tessa A Hadlock; Emily Fortier; Diego L Guarin
Journal:  Plast Reconstr Surg       Date:  2021-02-01       Impact factor: 4.730

7.  Facial soft tissue esthetic predictions: validation in craniomaxillofacial surgery with cone beam computed tomography data.

Authors:  Alberto Bianchi; Louis Muyldermans; Mirko Di Martino; Lorenzo Lancellotti; Sara Amadori; Alessandro Sarti; Claudio Marchetti
Journal:  J Oral Maxillofac Surg       Date:  2010-07       Impact factor: 1.895

8.  Machine Learning Applied to Registry Data: Development of a Patient-Specific Prediction Model for Blood Transfusion Requirements During Craniofacial Surgery Using the Pediatric Craniofacial Perioperative Registry Dataset.

Authors:  Ali Jalali; Hannah Lonsdale; Lillian V Zamora; Luis Ahumada; Anh Thy H Nguyen; Mohamed Rehman; James Fackler; Paul A Stricker; Allison M Fernandez
Journal:  Anesth Analg       Date:  2020-06-30       Impact factor: 5.108

9.  A comparison of postoperative, three-dimensional soft tissue changes in patients with skeletal class III malocclusions treated via orthodontics-first and surgery-first approaches.

Authors:  Daigo Okamoto; Kensuke Yamauchi; Mai Yazaki; Shizu Saito; Hikari Suzuki; Shinnosuke Nogami; Tetsu Takahashi
Journal:  J Craniomaxillofac Surg       Date:  2021-05-04       Impact factor: 2.078

10.  Quantifying the Severity of Metopic Craniosynostosis: A Pilot Study Application of Machine Learning in Craniofacial Surgery.

Authors:  Riddhish Bhalodia; Lucas A Dvoracek; Ali M Ayyash; Ladislav Kavan; Ross Whitaker; Jesse A Goldstein
Journal:  J Craniofac Surg       Date:  2020 May/Jun       Impact factor: 1.172

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.