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Erschienen in: Oral Radiology 2/2024

04.12.2023 | Original Article

Dental bitewing radiographs segmentation using deep learning-based convolutional neural network algorithms

verfasst von: Talal Bonny, Abdelaziz Al-Ali, Mohammed Al-Ali, Rashid Alsaadi, Wafaa Al Nassan, Khaled Obaideen, Maryam AlMallahi

Erschienen in: Oral Radiology | Ausgabe 2/2024

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Abstract

Objectives

Dental radiographs, particularly bitewing radiographs, are widely used in dental diagnosis and treatment Dental image segmentation is difficult for various reasons, such as intricate structures, low contrast, noise, roughness, and unclear borders, resulting in poor image quality. Recent developments in deep learning models have improved performance in analyzing dental images. In this research, our primary objective is to determine the most effective segmentation technique for bitewing radiographs based on different metrics: accuracy, training time, and the number of training parameters as a reflection of architectural cost.

Methods

In this research, we employ several deep learning models, namely Resnet-18, Resnet-50, Xception, Inception Resnet v2, and Mobilenetv2, to segment bitewing radiographs. The process begins by importing the radiographs into MATLAB®(MathWorks Inc), where the images are first improved, then segmented using the graph cut method based on regions to produce a binary mask that distinguishes the background from the original X-ray.

Results

The deep learning models were trained on 298 and 99 radiograph training and validation sets and were evaluated using 99 images from the testing set. We also compare the segmentation model using several criteria, including accuracy, speed, and size, to determine which network is superior. Furthermore, we compare our findings with prior research to provide a comprehensive understanding of the advancements made in dental image segmentation. The accurate segmentation achieved was 93.67% and 94.42% by the Resnet-18 and Resnet-50 models, respectively.

Conclusion

This research advances dental image analysis and facilitates more accurate diagnoses and treatment planning by determining the best segmentation technique. The outcomes of this study can guide researchers and practitioners in selecting appropriate segmentation methods for practical dental image analysis.
Literatur
1.
Zurück zum Zitat Bonny T, Kashkash M, Ahmed F. An efficient deep reinforcement machine learning-based control reverse osmosis system for water desalination. Desalination. 2022;522: 115443.CrossRef Bonny T, Kashkash M, Ahmed F. An efficient deep reinforcement machine learning-based control reverse osmosis system for water desalination. Desalination. 2022;522: 115443.CrossRef
2.
Zurück zum Zitat Abdelsalam M, Bonny T. Iov road safety: vehicle speed limiting system. In: 2019 International conference on communications, signal processing, and their applications (ICCSPA). IEEE; 2019. p. 1–6. Abdelsalam M, Bonny T. Iov road safety: vehicle speed limiting system. In: 2019 International conference on communications, signal processing, and their applications (ICCSPA). IEEE; 2019. p. 1–6.
3.
Zurück zum Zitat Bonny T, Henkel J. Efficient code compression for embedded processors. IEEE Trans Very Large Scale Integr (VLSI) Syst. 2008;16(12):1696–707.CrossRef Bonny T, Henkel J. Efficient code compression for embedded processors. IEEE Trans Very Large Scale Integr (VLSI) Syst. 2008;16(12):1696–707.CrossRef
4.
Zurück zum Zitat Tahoun N, Awad A, Bonny T. Smart assistant for blind and visually impaired people. In: Proceedings of the 2019 3rd international conference on advances in artificial intelligence. 2019. p. 227–31. Tahoun N, Awad A, Bonny T. Smart assistant for blind and visually impaired people. In: Proceedings of the 2019 3rd international conference on advances in artificial intelligence. 2019. p. 227–31.
5.
Zurück zum Zitat Bonny T, Henkel J. Instruction splitting for efficient code compression. In: Proceedings of the 44th annual design automation conference. 2007. p. 646–51. Bonny T, Henkel J. Instruction splitting for efficient code compression. In: Proceedings of the 44th annual design automation conference. 2007. p. 646–51.
6.
Zurück zum Zitat Kaziha O, Bonny T. A comparison of quantized convolutional and lstm recurrent neural network models using mnist. In: 2019 international conference on electrical and computing technologies and applications (ICECTA). IEEE; 2019. p. 1–5. Kaziha O, Bonny T. A comparison of quantized convolutional and lstm recurrent neural network models using mnist. In: 2019 international conference on electrical and computing technologies and applications (ICECTA). IEEE; 2019. p. 1–5.
7.
Zurück zum Zitat Monterubbianesi R, Tosco V, Vitiello F, Orilisi G, Fraccastoro F, Putignano A, Orsini G. Augmented, virtual and mixed reality in dentistry: a narrative review on the existing platforms and future challenges. Appl Sci. 2022;12(2):877.CrossRef Monterubbianesi R, Tosco V, Vitiello F, Orilisi G, Fraccastoro F, Putignano A, Orsini G. Augmented, virtual and mixed reality in dentistry: a narrative review on the existing platforms and future challenges. Appl Sci. 2022;12(2):877.CrossRef
8.
Zurück zum Zitat Kumar A, Bhadauria HS, Singh A. Descriptive analysis of dental X-ray images using various practical methods: a review. PeerJ Comput Sci. 2021;7: e620.CrossRefPubMedPubMedCentral Kumar A, Bhadauria HS, Singh A. Descriptive analysis of dental X-ray images using various practical methods: a review. PeerJ Comput Sci. 2021;7: e620.CrossRefPubMedPubMedCentral
9.
Zurück zum Zitat Apostolakis D, Michelinakis G, Kamposiora P, Papavasiliou G. The current state of computer assisted orthognathic surgery: a narrative review. Comput Assist Orthognath Surg J Dent. 2022;119: 104052. Apostolakis D, Michelinakis G, Kamposiora P, Papavasiliou G. The current state of computer assisted orthognathic surgery: a narrative review. Comput Assist Orthognath Surg J Dent. 2022;119: 104052.
10.
Zurück zum Zitat Ji Q, Huang J, He W, Sun Y. Optimized deep convolutional neural networks for identification of macular diseases from optical coherence tomography images. Algorithms. 2019;12(3):51.MathSciNetCrossRef Ji Q, Huang J, He W, Sun Y. Optimized deep convolutional neural networks for identification of macular diseases from optical coherence tomography images. Algorithms. 2019;12(3):51.MathSciNetCrossRef
11.
Zurück zum Zitat Panyarak W, Wantanajittikul K, Suttapak W, Charuakkra A, Prapayasatok S. Feasibility of deep learning for dental caries classification in bitewing radiographs based on the iccms\(^{{\rm TM}}\) radiographic scoring system. Oral Surg Oral Med Oral Pathol Oral Radiol. 2023;135(2):272–81.CrossRefPubMed Panyarak W, Wantanajittikul K, Suttapak W, Charuakkra A, Prapayasatok S. Feasibility of deep learning for dental caries classification in bitewing radiographs based on the iccms\(^{{\rm TM}}\) radiographic scoring system. Oral Surg Oral Med Oral Pathol Oral Radiol. 2023;135(2):272–81.CrossRefPubMed
12.
13.
Zurück zum Zitat Tekin BY, Ozcan C, Pekince A, Yasa Y. An enhanced tooth segmentation and numbering according to fdi notation in bitewing radiographs. Comput Biol Med. 2022;146: 105547.CrossRef Tekin BY, Ozcan C, Pekince A, Yasa Y. An enhanced tooth segmentation and numbering according to fdi notation in bitewing radiographs. Comput Biol Med. 2022;146: 105547.CrossRef
14.
Zurück zum Zitat Duman S, Yılmaz EF, Eşer G, Çelik Ö, Bayrakdar IS, Bilgir E, Costa ALF, Jagtap R, Orhan K. Detecting the presence of taurodont teeth on panoramic radiographs using a deep learning-based convolutional neural network algorithm. Oral Radiol. 2022;39:1–8. Duman S, Yılmaz EF, Eşer G, Çelik Ö, Bayrakdar IS, Bilgir E, Costa ALF, Jagtap R, Orhan K. Detecting the presence of taurodont teeth on panoramic radiographs using a deep learning-based convolutional neural network algorithm. Oral Radiol. 2022;39:1–8.
15.
Zurück zum Zitat Başaran M, Çelik Ö, Bayrakdar IS, Bilgir E, Orhan K, Odabaş A, Aslan AF, Jagtap R. Diagnostic charting of panoramic radiography using deep-learning artificial intelligence system. Oral Radiol. 2021;38(3):1–7. Başaran M, Çelik Ö, Bayrakdar IS, Bilgir E, Orhan K, Odabaş A, Aslan AF, Jagtap R. Diagnostic charting of panoramic radiography using deep-learning artificial intelligence system. Oral Radiol. 2021;38(3):1–7.
16.
Zurück zum Zitat Campello VM, Gkontra P, Izquierdo C, Martin-Isla C, Sojoudi A, Full PM, Maier-Hein K, Zhang Y, He Z, Ma J, et al. Multi-centre, multi-vendor and multi-disease cardiac segmentation: the m &ms challenge. IEEE Trans Med Imaging. 2021;40(12):3543–54.CrossRefPubMed Campello VM, Gkontra P, Izquierdo C, Martin-Isla C, Sojoudi A, Full PM, Maier-Hein K, Zhang Y, He Z, Ma J, et al. Multi-centre, multi-vendor and multi-disease cardiac segmentation: the m &ms challenge. IEEE Trans Med Imaging. 2021;40(12):3543–54.CrossRefPubMed
17.
Zurück zum Zitat Jang TJ, Kim KC, Cho HC, Seo JK. A fully automated method for 3d individual tooth identification and segmentation in dental cbct. arXiv preprint arXiv:2102.06060. Jang TJ, Kim KC, Cho HC, Seo JK. A fully automated method for 3d individual tooth identification and segmentation in dental cbct. arXiv preprint arXiv:​2102.​06060.
18.
Zurück zum Zitat Cui Z, Fang Y, Mei L, Zhang B, Yu B, Liu J, Jiang C, Sun Y, Ma L, Huang J, et al. A fully automatic ai system for tooth and alveolar bone segmentation from cone-beam ct images. Nat Commun. 2022;13(1):1–11.CrossRef Cui Z, Fang Y, Mei L, Zhang B, Yu B, Liu J, Jiang C, Sun Y, Ma L, Huang J, et al. A fully automatic ai system for tooth and alveolar bone segmentation from cone-beam ct images. Nat Commun. 2022;13(1):1–11.CrossRef
19.
Zurück zum Zitat Kaziha O, Bonny T. A convolutional neural network for seizure detection. In: 2020 advances in science and engineering technology international conferences (ASET). IEEE; 2020. p. 1–5. Kaziha O, Bonny T. A convolutional neural network for seizure detection. In: 2020 advances in science and engineering technology international conferences (ASET). IEEE; 2020. p. 1–5.
20.
Zurück zum Zitat Al Nassan W, Bonny T, Obaideen K, Hammal AA. An lstm model-based prediction of chaotic system: analyzing the impact of training dataset precision on the performance. In: 2022 international conference on electrical and computing technologies and applications (ICECTA). IEEE; 2022. p. 337–342. Al Nassan W, Bonny T, Obaideen K, Hammal AA. An lstm model-based prediction of chaotic system: analyzing the impact of training dataset precision on the performance. In: 2022 international conference on electrical and computing technologies and applications (ICECTA). IEEE; 2022. p. 337–342.
21.
Zurück zum Zitat Moran M, Faria M, Giraldi G, Bastos L, Oliveira L, Conci A. Classification of approximal caries in bitewing radiographs using convolutional neural networks. Sensors. 2021;21(15):5192.ADSCrossRefPubMedPubMedCentral Moran M, Faria M, Giraldi G, Bastos L, Oliveira L, Conci A. Classification of approximal caries in bitewing radiographs using convolutional neural networks. Sensors. 2021;21(15):5192.ADSCrossRefPubMedPubMedCentral
22.
Zurück zum Zitat Lee J-H, Kim D-H, Jeong S-N, Choi S-H. Diagnosis and prediction of periodontally compromised teeth using a deep learning-based convolutional neural network algorithm. J Periodontal Implant Sci. 2018;48(2):114–23.CrossRefPubMedPubMedCentral Lee J-H, Kim D-H, Jeong S-N, Choi S-H. Diagnosis and prediction of periodontally compromised teeth using a deep learning-based convolutional neural network algorithm. J Periodontal Implant Sci. 2018;48(2):114–23.CrossRefPubMedPubMedCentral
23.
Zurück zum Zitat Salih O, Duffy KJ. The local ternary pattern encoder–decoder neural network for dental image segmentation. IET Image Process. 2022;16(6):1520–30.CrossRef Salih O, Duffy KJ. The local ternary pattern encoder–decoder neural network for dental image segmentation. IET Image Process. 2022;16(6):1520–30.CrossRef
24.
Zurück zum Zitat Rohrer C, Krois J, Patel J, Meyer-Lueckel H, Rodrigues JA, Schwendicke F. Segmentation of dental restorations on panoramic radiographs using deep learning. Diagnostics. 2022;12(6):1316.CrossRefPubMedPubMedCentral Rohrer C, Krois J, Patel J, Meyer-Lueckel H, Rodrigues JA, Schwendicke F. Segmentation of dental restorations on panoramic radiographs using deep learning. Diagnostics. 2022;12(6):1316.CrossRefPubMedPubMedCentral
25.
Zurück zum Zitat Kumari AR, Rao SN, Reddy PR. Design of hybrid dental caries segmentation and caries detection with meta-heuristic-based resnext-rnn. Biomed Signal Process Control. 2022;78: 103961.CrossRef Kumari AR, Rao SN, Reddy PR. Design of hybrid dental caries segmentation and caries detection with meta-heuristic-based resnext-rnn. Biomed Signal Process Control. 2022;78: 103961.CrossRef
26.
Zurück zum Zitat Rad AE, Rahim MSM, Kolivand H, Norouzi A. Automatic computer-aided caries detection from dental X-ray images using intelligent level set. Multimed Tools Appl. 2018;77(21):28843–62.CrossRef Rad AE, Rahim MSM, Kolivand H, Norouzi A. Automatic computer-aided caries detection from dental X-ray images using intelligent level set. Multimed Tools Appl. 2018;77(21):28843–62.CrossRef
27.
Zurück zum Zitat Lin P, Huang P, Huang P, Hsu H, Chen C. Teeth segmentation of dental periapical radiographs based on local singularity analysis. Comput Methods Programs Biomed. 2014;113(2):433–45.CrossRefPubMed Lin P, Huang P, Huang P, Hsu H, Chen C. Teeth segmentation of dental periapical radiographs based on local singularity analysis. Comput Methods Programs Biomed. 2014;113(2):433–45.CrossRefPubMed
28.
Zurück zum Zitat Majanga V, Viriri S. Dental images’ segmentation using threshold connected component analysis. Comput Intell Neurosci. 2021. Majanga V, Viriri S. Dental images’ segmentation using threshold connected component analysis. Comput Intell Neurosci. 2021.
29.
Zurück zum Zitat Al Nassan W, Bonny T, Obaideen K, Hammal AA. A customized convolutional neural network for dental bitewing images segmentation. In: 2022 international conference on electrical and computing technologies and applications (ICECTA). IEEE; 2022. p. 347–51. Al Nassan W, Bonny T, Obaideen K, Hammal AA. A customized convolutional neural network for dental bitewing images segmentation. In: 2022 international conference on electrical and computing technologies and applications (ICECTA). IEEE; 2022. p. 347–51.
30.
Zurück zum Zitat Estai M, Tennant M, Gebauer D, Brostek A, Vignarajan J, Mehdizadeh M, Saha S. Evaluation of a deep learning system for automatic detection of proximal surface dental caries on bitewing radiographs. Oral Surg Oral Med Oral Pathol Oral Radiol. 2022;134(2):262–70.CrossRefPubMed Estai M, Tennant M, Gebauer D, Brostek A, Vignarajan J, Mehdizadeh M, Saha S. Evaluation of a deep learning system for automatic detection of proximal surface dental caries on bitewing radiographs. Oral Surg Oral Med Oral Pathol Oral Radiol. 2022;134(2):262–70.CrossRefPubMed
31.
Zurück zum Zitat Kaya MC. Dental panoramic and bitewing X-ray image segmentation using u-net and transformer networks, Master’s thesis, Middle East Technical University. 2023. Kaya MC. Dental panoramic and bitewing X-ray image segmentation using u-net and transformer networks, Master’s thesis, Middle East Technical University. 2023.
32.
Zurück zum Zitat Fatima A, Shafi I, Afzal H, Mahmood K, Díez IdlT, Lipari V, Ballester JB, Ashraf I. Deep learning-based multiclass instance segmentation for dental lesion detection. In: Healthcare, Vol. 11. MDPI; 2023. p. 347. Fatima A, Shafi I, Afzal H, Mahmood K, Díez IdlT, Lipari V, Ballester JB, Ashraf I. Deep learning-based multiclass instance segmentation for dental lesion detection. In: Healthcare, Vol. 11. MDPI; 2023. p. 347.
33.
Zurück zum Zitat Sezgin M, Sankur B. Survey over image thresholding techniques and quantitative performance evaluation. J Electron Imaging. 2004;13(1):146–65.ADSCrossRef Sezgin M, Sankur B. Survey over image thresholding techniques and quantitative performance evaluation. J Electron Imaging. 2004;13(1):146–65.ADSCrossRef
34.
Zurück zum Zitat MATLAB, version (R2020a), The MathWorks Inc., Natick, Massachusetts, 2020. MATLAB, version (R2020a), The MathWorks Inc., Natick, Massachusetts, 2020.
35.
Zurück zum Zitat Lee S, Oh S-I, Jo J, Kang S, Shin Y, Park J-W. Deep learning for early dental caries detection in bitewing radiographs. Sci Rep. 2021;11(1):1–8. Lee S, Oh S-I, Jo J, Kang S, Shin Y, Park J-W. Deep learning for early dental caries detection in bitewing radiographs. Sci Rep. 2021;11(1):1–8.
36.
Zurück zum Zitat Moutselos K, Berdouses E, Oulis C, Maglogiannis I. Recognizing occlusal caries in dental intraoral images using deep learning. In: 41st annual international conference of the IEEE engineering in medicine and biology society (EMBC). IEEE; 2019. p. 1617–20. Moutselos K, Berdouses E, Oulis C, Maglogiannis I. Recognizing occlusal caries in dental intraoral images using deep learning. In: 41st annual international conference of the IEEE engineering in medicine and biology society (EMBC). IEEE; 2019. p. 1617–20.
37.
Zurück zum Zitat Ibragimov B, Xing L. Segmentation of organs-at-risks in head and neck ct images using convolutional neural networks. Med Phys. 2017;44(2):547–57.CrossRefPubMedPubMedCentral Ibragimov B, Xing L. Segmentation of organs-at-risks in head and neck ct images using convolutional neural networks. Med Phys. 2017;44(2):547–57.CrossRefPubMedPubMedCentral
38.
Zurück zum Zitat Amorim PH, Moraes TF, Silva JV, Pedrini H, Ruben RB. Reconstruction of panoramic dental images through bézier function optimization. Front Bioeng Biotechnol. 2020;8:794.CrossRefPubMedPubMedCentral Amorim PH, Moraes TF, Silva JV, Pedrini H, Ruben RB. Reconstruction of panoramic dental images through bézier function optimization. Front Bioeng Biotechnol. 2020;8:794.CrossRefPubMedPubMedCentral
Metadaten
Titel
Dental bitewing radiographs segmentation using deep learning-based convolutional neural network algorithms
verfasst von
Talal Bonny
Abdelaziz Al-Ali
Mohammed Al-Ali
Rashid Alsaadi
Wafaa Al Nassan
Khaled Obaideen
Maryam AlMallahi
Publikationsdatum
04.12.2023
Verlag
Springer Nature Singapore
Erschienen in
Oral Radiology / Ausgabe 2/2024
Print ISSN: 0911-6028
Elektronische ISSN: 1613-9674
DOI
https://doi.org/10.1007/s11282-023-00717-3

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