Evaluation of 3D Modeling Workflows Using Dental CBCT Data for Periodontal Regenerative Treatment
Abstract
:1. Introduction
2. Materials and Methods
2.1. Test Dataset and Evaluated Software
- CBCT scanner: NEWTOM VGI evo CBCT machine (CEFLA, Imola, BO, Italia).
- Imaging protocol: high resolution (HR) protocol with a voxel size of 150 microns (0.15 mm).
- Exposure settings: 110 KV and a total of 109.2 mAs.
- Field of view: standard 100 mm × 100 mm.
- Scanning procedure: based on manufacturer’s recommendations.
2.2. Manual Segmentation
- Teeth: a segment for all teeth of the maxilla of the patient.
- Alveolar bone: a segment for the alveolar bone of the maxilla of the patient.
- Periodontal ligament space (PDL space), i.e., the soft tissue union between teeth and the alveolar bone: a segment for the PDL space of the maxilla of the patient.
- Gums: a segment for the gums of the maxilla of the patient.
- Tongue: a segment for the tongue of the patient.
- Lips: a segment for the upper lips of the patient
- Vacuum: a segment for the vacuum inside the maxilla of the patient, depicted through black areas in the CBCT scan.
- The segments for the gums, the tongue, and the lips were not properly separated due to their similar intensity in the CBCT images.
- The segment for the PDL space was not correctly defined. This soft tissue union between the teeth and the alveolar bone occupies a very small percentage of the tomographic images (e.g., see Figure 1b). Also, in some images, it is visible while in others it is not visible. Thus, the automatic segmentation method could not yield satisfactory results for the PDL space.
- A big percentage of noise is present in the results, especially due to the segment defined for the PDL space.
- The manual accurate definition of the aforementioned segments took too much time.
- Conversion of the 3D surface model into a point cloud.
- Processing of the point cloud, including, but not limited to, the stages described in the following.
- Manual deletion of points outside the area of interest.
- Manual and automatic removal of obviously wrong points (outliers).
- Automatic noise removal.
- Automatic reduction of the number of points in flat areas.
- Generation of a 3D mesh model using the processed point cloud.
- Processing of the 3D mesh model, including, but not limited to, the stages described in the following.
- Automatic and manual closing of holes of the 3D surface.
- Automatic noise reduction.
- Automatic surface smoothing.
- Automatic correction of non-manifold edges, self-intersections, and highly creased edges.
- Storage of the 3D model in STL format.
2.3. Automatic Segmentation
- teeth: >1700.
- alveolar bone: [500, 1000].
- soft tissues: [−30, 300].
- vacuum: <−70.
2.4. Semi-Automatic Segmentation
- teeth;
- alveolar bone;
- a segment including all the other regions of the oral cavity (except for the teeth and the alveolar bone), hereinafter referred to as “other”.
- Automatic teeth thresholding (the threshold used for the brightness values of the CBCT slices: >1700).
- Automatic alveolar bone thresholding (brightness values of the CBCT slices range: 500–1000) and manual definition of more samples in areas where the alveolar bone was not recognized by thresholding.
- Manual definition of samples for the segment “other” (including gums, tongue, lips, vacuum, etc.).
3. Results
3.1. 3D Models of Teeth
3.2. 3D Models of Alveolar Bone
4. Discussion
- Definition of the region of interest by cropping the corresponding volume defined in the CBCT dataset, using the 3D Slicer software. In this way, each CBCT image will depict only the region of interest, in all three reference planes (axial, coronal, sagittal).
- Definition of the following three segments for the segmentation process within the 3D Slicer software:
- teeth
- alveolar bone
- “other”, including all the other areas of the oral system, depicted in the CBCT images after their cropping, which do not belong to the teeth and alveolar bone segments.
- Definition of samples for the three segments (teeth, alveolar bone, and other) for a small subset of CBCT images (e.g., 30 images: 10 in each reference plane). This procedure for each selected CBCT image may be performed as described below, using the 3D Slicer software.
- Thresholding of the CBCT image using a data-dependent threshold, so that the teeth segment is defined. Indicatively, an average lower threshold for the intensity values of the CBCT image that may be used is ~1000, which is better determined through testing on the specific CBCT image.
- Usage of the result of thresholding performed in step (a) as a mask and definition of the segment of teeth in the specific CBCT image using the “Paint” tool, only in areas constrained by the mask, i.e., in regions with intensity values defined by the threshold used in step (a) (e.g., >1000). Simultaneously, the “Erase” tool may optionally be used, to erase areas incorrectly labeled as teeth.
- Thresholding of the CBCT image using a data-dependent threshold, so that the alveolar bone segment is defined. Indicatively, an average lower threshold for intensity values of the CBCT image that may be used is ~500, which is better determined through testing on the specific CBCT image.
- Usage of the result of thresholding performed in step (c) as a mask and definition of the part of the alveolar bone in the specific CBCT image using the “Paint” tool, only in areas outside the teeth segment that are constrained by the mask, i.e., with intensity values defined by the threshold used in step (c) (e.g., >500). Hence, in this step, the teeth segment is also used as a mask that prevents the definition of the alveolar bone segment in the areas occupied by the teeth segment. Simultaneously, the “Erase” tool may optionally be used, to erase areas incorrectly labeled as the alveolar bone.
- Manual (coarse) definition of the segment “other”, in the areas not occupied by the teeth and alveolar bone segments. It is recommended to use the teeth and alveolar bone segments as masks, so that they prevent the definition of the segment “other” in the areas they occupy. Simultaneously, the “Erase” tool may optionally be used, to erase areas incorrectly labeled as “other”.
- Initialization of the “Grow from seeds” method available in the 3D Slicer software.
- Visual inspection of the result of the “Grow from seeds” method and—if necessary—correction of the existing samples of the three segments (teeth, alveolar bone, and “other”) using the “Paint” and “Erase” tools of the 3D Slicer software.
- Update of the result of the “Grow from seeds” method if at least a correction was made to at least one of the segments, in the 3D Slicer software.
- Repetition of steps 5–6, until the visual inspection of the result of the “Grow from seeds” method does not show any “big” error, i.e., an error which is not easily corrected by editing the 3D model that will be generated using the segmentation output. Errors/noise that may be corrected more easily and/or in a faster way using the Geomagic Wrap software are recommended to be ignored.
- Conversion of the segmentation results for the teeth and alveolar bone segments into 3D models (meshes) and storage of these models in STL format, using the 3D Slicer software.
- Editing of the two 3D models (teeth and alveolar bone) using the Geomagic Wrap software. The processing of each 3D model may include, indicatively, the steps outlined in the following.
- Conversion of the 3D mesh to point cloud.
- Editing of the point cloud, which may include, but is not limited to, the steps outlined in the following.
- Manual deletion of points outside the area of interest.
- Manual and automatic removal of obviously incorrect points (outliers).
- Automatic noise removal.
- Automatic reduction of the number of points in flat areas.
- Creation of a 3D mesh (surface) using the edited point cloud.
- Editing of the 3D mesh, which may include, but is not limited to, the steps outlined in the following.
- Automatic and manual closing of holes of the 3D model.
- Automatic noise reduction.
- Automatic surface smoothing.
- Automatic correction of non-manifold edges, self-intersections, and highly creased edges.
- Optional merging of the two 3D models (teeth and alveolar bone) into a single 3D model using the Geomagic Wrap software.
- Storage of each processed 3D model (or the merged 3D model) in STL format, using Geomagic Wrap.
5. Conclusions
- Segmentation and 3D modeling workflows using existing software packages were evaluated for the 3D reconstruction of the hard tissues of the oral cavity using CBCT data that belong to a patient with periodontitis. Specifically, one medical image editing software solution was used for determining the optimal segmentation methodology that produces the best results in terms of efficiency and accuracy, and one 3D model editing software was used for generating the final 3D models. The main purpose of the evaluation conducted within this research was to determine the best combination of segmentation steps, including the optimal number of segments to be determined and the optimal combination of methods (automatic, semi-automatic, or manual ones) for generating 3D models that may be easily edited within a 3D editing software. The used software for segmentation and 3D model editing are only indicative; other software packages that include similar functions may also be used, following the proposed workflow.
- Comparisons between the 3D models generated through two—out of the four—experiments that yielded the most satisfactory results were made. These comparisons include the calculation of the distances between the two 3D models of the teeth and the two 3D models of the alveolar bone and their visualization (a) within a histogram and (b) in three dimensions as well, using one of the compared 3D models as a reference one. The comparisons aimed to obtain a rough estimation of the differences between these 3D models, so that it may be concluded if these differences are within permissible limits and if they may be considered negligible or insignificant for the needs of 3D modeling of the teeth and alveolar bone for periodontal regeneration. Indeed, the differences were considered to be acceptable for the needs of the proposed research, which leads to the conclusion that a semi-automatic segmentation methodology may be applied instead of a fully manual process. However, for a real comparison of the quality of the segmentation, a Micro CT dataset released for science and research would be useful to be used as a reference, thanks to the ultra-high resolution that it provides.
- The proposed 3D modeling workflow was discussed in detail, for being used for the needs of designing 3D scaffolds for periodontal regeneration. This workflow includes the definition of three segments for the segmentation process (teeth, alveolar bone, and “other”, including all the other areas of the oral system), the combination of automatic and manual stages for completing the segmentation process, and the usage of 3D editing tools for repairing the generated 3D model. Taking into account the fact that a CBCT dataset from only one patient was examined, the proposed 3D modeling workflow should be verified in a future research study using a greater number of CBCT datasets.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
- Mozzo, P.; Procacci, C.; Tacconi, A.; Martini, P.T.; Andreis, I.B. A new volumetric CT machine for dental imaging based on the cone-beam technique: Preliminary results. Eur. Radiol. 1998, 8, 1558–1564. [Google Scholar] [CrossRef] [PubMed]
- Alamri, H.M.; Sadrameli, M.; Alshalhoob, M.A.; Alshehri, M.A. Applications of CBCT in dental practice: A review of the literature. Gen. Dent. 2012, 60, 390–400. [Google Scholar] [PubMed]
- Pauwels, R.; Araki, K.; Siewerdsen, J.H.; Thongvigitmanee, S.S. Technical aspects of dental CBCT: State of the art. Dentomaxillofac. Radiol. 2015, 44, 20140224. [Google Scholar] [CrossRef]
- Palkovics, D.; Mangano, F.G.; Nagy, K.; Windisch, P. Digital three-dimensional visualization of intrabony periodontal defects for regenerative surgical treatment planning. BMC Oral Health 2020, 20, 351. [Google Scholar] [CrossRef]
- Misch, K.A.; Yi, E.S.; Sarment, D.P. Accuracy of cone beam computed tomography for periodontal defect measurements. J. Periodontol. 2006, 77, 1261–1266. [Google Scholar] [CrossRef] [PubMed]
- Walter, C.; Kaner, D.; Berndt, D.C.; Weiger, R.; Zitzmann, N.U. Three-dimensional imaging as a pre-operative tool in decision making for furcation surgery. J. Clin. Periodontol. 2009, 36, 250–257. [Google Scholar] [CrossRef] [PubMed]
- Vandenberghe, B.; Jacobs, R.; Yang, J. Diagnostic validity (or acuity) of 2D CCD versus 3D CBCT-images for assessing periodontal breakdown. Oral Surg. Oral Med. Oral Pathol. Oral Radiol. Endodontol. 2007, 104, 395–401. [Google Scholar] [CrossRef]
- Vandenberghe, B.; Jacobs, R.; Yang, J. Detection of periodontal bone loss using digital intraoral and cone beam computed tomography images: An in vitro assessment of bony and/or infrabony defects. Dentomaxillofac. Radiol. 2008, 37, 252–260. [Google Scholar] [CrossRef]
- Grimard, B.A.; Hoidal, M.J.; Mills, M.P.; Mellonig, J.T.; Nummikoski, P.V.; Mealey, B.L. Comparison of clinical, periapical radiograph, and cone-beam volume tomography measurement techniques for assessing bone level changes following regenerative periodontal therapy. J. Periodontol. 2009, 80, 48–55. [Google Scholar] [CrossRef]
- de Faria Vasconcelos, K.; Evangelista, K.M.; Rodrigues, C.D.; Estrela, C.; De Sousa, T.O.; Silva, M.A.G. Detection of periodontal bone loss using cone beam CT and intraoral radiography. Dentomaxillofac. Radiol. 2012, 41, 64–69. [Google Scholar] [CrossRef]
- Bagis, N.; Kolsuz, M.E.; Kursun, S.; Orhan, K. Comparison of intraoral radiography and cone-beam computed tomography for the detection of periodontal defects: An in vitro study. BMC Oral Health 2015, 15, 64. [Google Scholar] [CrossRef] [PubMed]
- Cetmili, H.; Tassoker, M.; Sener, S. Comparison of cone-beam computed tomography with bitewing radiography for detection of periodontal bone loss and assessment of effects of different voxel resolutions: An in vitro study. Oral Radiol. 2019, 35, 177–183. [Google Scholar] [CrossRef]
- Zhang, X.; Li, Y.; Ge, Z.; Zhao, H.; Miao, L.; Pan, Y. The dimension and morphology of alveolar bone at maxillary anterior teeth in periodontitis: A retrospective analysis—Using CBCT. Int. J. Oral Sci. 2020, 12, 4. [Google Scholar] [CrossRef] [PubMed]
- Rinne, C.A.; Dagassan-Berndt, D.C.; Connert, T.; Müller-Gerbl, M.; Weiger, R.; Walter, C. Impact of CBCT image quality on the confidence of furcation measurements. J. Clin. Periodontol. 2020, 47, 816–824. [Google Scholar] [CrossRef]
- Güth, J.F.; Kauling, A.E.C.; Schweiger, J.; Kühnisch, J.; Stimmelmayr, M. Virtual simulation of periodontal surgery including presurgical CAD/CAM fabrication of tooth-colored removable splints on the basis of CBCT data: A case report. Int. J. Periodontics Restor. Dent. 2017, 37, e310–e320. [Google Scholar] [CrossRef] [PubMed]
- Scarfe, W.C.; Azevedo, B.; Pinheiro, L.R.; Priaminiarti, M.; Sales, M.A. The emerging role of maxillofacial radiology in the diagnosis and management of patients with complex periodontitis. Periodontology 2017, 74, 116–139. [Google Scholar] [CrossRef]
- Sepehrian, M.; Deylami, A.M.; Zoroofi, R.A. Individual teeth segmentation in CBCT and MSCT dental images using Watershed. In Proceedings of the 20th Iranian Conference on Biomedical Engineering (ICBME 2013), Tehran, Iran, 18 December 2013. [Google Scholar]
- Gan, Y.; Xia, Z.; Xiong, J.; Li, G.; Zhao, Q. Tooth and alveolar bone segmentation from dental computed tomography images. IEEE J. Biomed. Health Inform. 2017, 22, 196–204. [Google Scholar] [CrossRef]
- Cui, Z.; Li, C.; Wang, W. ToothNet: Automatic tooth instance segmentation and identification from cone beam CT images. In Proceedings of the 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR 2019), Long Beach, CA, USA, 15–20 June 2019. [Google Scholar]
- Radon, J. Über die Bestimmung von Funktionen durch ihre Integralwerte längs gewisser Mannigfaltigkeiten. In Classic Papers in Modern Diagnostic Radiology; Springer: Berlin/Heidelberg, Germany, 2005; p. 5. [Google Scholar]
- Gao, H.; Chae, O. Individual tooth segmentation from CT images using level set method with shape and intensity prior. Pattern Recognit. 2010, 43, 2406–2417. [Google Scholar] [CrossRef]
- Ji, D.X.; Ong, S.H.; Foong, K.W.C. A level set based approach for anterior teeth segmentation in cone beam computed tomography images. Comput. Biol. Med. 2014, 50, 116–128. [Google Scholar] [CrossRef]
- Hosntalab, M.; Zoroofi, R.A.; Tehrani-Fard, A.A.; Shirani, G. Segmentation of teeth in CT volumetric dataset by panoramic projection and variational level set. Int. J. Comput. Assist. Radiol. Surg. 2008, 3, 257–265. [Google Scholar] [CrossRef]
- Yau, H.T.; Yang, T.J.; Chen, Y.C. Tooth model reconstruction based upon data fusion for orthodontic treatment simulation. Comput. Biol. Med. 2014, 48, 8–16. [Google Scholar] [CrossRef] [PubMed]
- Minnema, J.; van Eijnatten, M.; Hendriksen, A.A.; Liberton, N.; Pelt, D.M.; Batenburg, K.J.; Forouzanfar, T.; Wolff, J. Segmentation of dental cone-beam CT scans affected by metal artifacts using a mixed-scale dense convolutional neural network. Med. Phys. 2019, 46, 5027–5035. [Google Scholar] [CrossRef] [PubMed]
- 3D Slicer Image Computing Platform. Available online: https://www.slicer.org/ (accessed on 27 July 2022).
- Zukic, D.; Vicory, J.; McCormick, M.; Wisse, L.; Gerig, G.; Yushkevich, P.; Aylward, S. ND morphological contour interpolation. Insight J. 2016, 1–8. [Google Scholar] [CrossRef]
- Autodesk Meshmixer. Available online: https://www.meshmixer.com/ (accessed on 27 July 2022).
- Haas, L.F.; Zimmermann, G.S.; De Luca Canto, G.; Flores-Mir, C.; Corrêa, M. Precision of cone beam CT to assess periodontal bone defects: A systematic review and meta-analysis. Dentomaxillofac. Radiol. 2017, 47, 20170084. [Google Scholar] [CrossRef]
- Bayat, S.; Talaeipour, A.R.; Sarlati, F. Detection of simulated periodontal defects using cone-beam CT and digital intraoral radiography. Dentomaxillofac. Radiol. 2016, 45, 20160030. [Google Scholar] [CrossRef]
- Rasperini, G.; Pilipchuk, S.P.; Flanagan, C.L.; Park, C.H.; Pagni, G.; Hollister, S.J.; Giannobile, W.V. 3D-printed bioresorbable scaffold for periodontal repair. J. Dent. Res. 2015, 94, 153S–157S. [Google Scholar] [CrossRef]
- Materialise Magics. Available online: https://www.materialise.com/en/software/magics (accessed on 27 July 2022).
- NX|Siemens Software. Available online: https://www.plm.automation.siemens.com/global/en/products/nx/ (accessed on 27 July 2022).
- Materialise Mimics. Available online: https://www.materialise.com/en/medical/mimics-innovation-suite/mimics (accessed on 27 July 2022).
- Geomagic Wrap. Available online: https://www.artec3d.com/3d-software/geomagic-wrap (accessed on 27 July 2022).
- Vezhnevets, V.; Konouchine, V. GrowCut: Interactive multi-label ND image segmentation by cellular automata. In Proceedings of the GraphiCon, Novosibirsk Akademgorodok, Russia, 20–24 June 2005. [Google Scholar]
- Zhu, L.; Kolesov, I.; Gao, Y.; Kikinis, R.; Tannenbaum, A. An Effective Interactive Medical Image Segmentation Method Using Fast GrowCut. In Proceedings of the 17th International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI), Cambridge, MA, USA, 14–18 September 2014. [Google Scholar]
- CloudCompare. Available online: https://www.danielgm.net/cc/ (accessed on 27 July 2022).
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Verykokou, S.; Ioannidis, C.; Angelopoulos, C. Evaluation of 3D Modeling Workflows Using Dental CBCT Data for Periodontal Regenerative Treatment. J. Pers. Med. 2022, 12, 1355. https://doi.org/10.3390/jpm12091355
Verykokou S, Ioannidis C, Angelopoulos C. Evaluation of 3D Modeling Workflows Using Dental CBCT Data for Periodontal Regenerative Treatment. Journal of Personalized Medicine. 2022; 12(9):1355. https://doi.org/10.3390/jpm12091355
Chicago/Turabian StyleVerykokou, Styliani, Charalabos Ioannidis, and Christos Angelopoulos. 2022. "Evaluation of 3D Modeling Workflows Using Dental CBCT Data for Periodontal Regenerative Treatment" Journal of Personalized Medicine 12, no. 9: 1355. https://doi.org/10.3390/jpm12091355
APA StyleVerykokou, S., Ioannidis, C., & Angelopoulos, C. (2022). Evaluation of 3D Modeling Workflows Using Dental CBCT Data for Periodontal Regenerative Treatment. Journal of Personalized Medicine, 12(9), 1355. https://doi.org/10.3390/jpm12091355