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1.IntroductionOptical coherence tomography (OCT) was first reported by Fujimoto 1 in 1991 and has been widely used in numerical clinical applications, including gastroenterology,2, 3, 4 ophthalmology,5, 6, 7 dermatology,8, 9 and dentistry.10, 11 In dental science, OCT can be an effective tool for assessing early caries,12, 13, 14 oral cancer,15, 16 and periodontal diseases.17 Periodontitis is one of the major chronic infectious diseases in the oral cavity, and the prevalence of periodontitis is >50% among the population.18, 19 The World Health Organization revealed that tooth loss resulting from severe periodontitis was found in 5–15% of most worldwide populations in 2003.20 Additionally, recent studies have indicated that certain correlations between periodontitis and various systemic diseases exist.21, 22, 23 Microbial dental plaque is an etiological factor of periodontitis, and dental calculus is a type of mineralized plaque from deposited microorganisms.24 The traditional diagnosis of subgingival calculus is based on clinical examination using periodontal probing and radiographs. The poor reliability and reproducibility of periodontal probing causes monitoring the progression of periodontal destruction and the effects of treatments to be difficult.25, 26, 27 Radiography can determine the level of bone-related destruction only for subgingival calculus located on the proximal surface of the teeth because of that x-rays cannot transmit hard tissues. The images of calculus on the buccal and lingual surfaces of a teeth are blocked; thus, it cannot be observed from radiography. In addition, the radiation exposure is accompanied by radiography measurement. Recently, several novel methods have been developed for dental calculus detection, such as a smart ultrasonic device,17, 28, 29 an LED-based optical probe,30 and laser fluorescence.31, 32 Raman and laser fluorescence spectrometer may apply to calculus detection but are still under investigation. In fact, the Raman spectrometer is currently used for in vitro measurement. In vivo measurement is still applied today, but rarely. Laser fluorescence spectrometer should detect calculus using biotracer; however, the sensitivity and reliability are also poor. Table 1 shows the comparison of general calculus detection methods used today. Compared to these methods, OCT may be an effective tool because it is a noninvasive, nondestructive, nonradiated, and real-time monitoring method. The swept-source optical coherence tomography (SS-OCT) has more benefits than conventional OCT. In this paper, we demonstrate the SS-OCT can be an effective tool for subgingival calculus detection in clinical diagnosis. The refractive indices of enamel, dentin, cementum, and dental calculus were measured for dental tissue characterization. The in vitro subgingival calculus was then imaged and processed for contrast improvement. The results show high-quality feasibility of dental calculus diagnosis based on SS-OCT. Table 1Comparison of calculus detection methods.
2.Experiments and Results2.1.Swept-Source Optical Coherence Tomography SystemAn SS-OCT system was built with a 1310-nm swept-source laser (Santec, HSL-2100) as a broadband light source. Figure 1a shows the picture of the SS-OCT setup, and Fig. 1b illustrates the system scheme. The fiber-based Mach–Zehnder interferometer was adopted with two couplers (one is 99:1, and the other is 50:50), and two optical circulators. The illumination power of the sample arm was 0.8 mW, and the power of the reference arm was 0.6 μW. The balance detector was utilized for interference detection, and the data acquisition card (DAQ card, NI-PCI 5122) was then used for computer-photodetector interfacing. In our in vitro study, all samples were placed on a three-dimensional translation stage for optical scanning. The wavelength-scanning rate is 20 kHz. The frame rate is 20 Hz (1000 A-scans/frame). The electric signals acquisition rate is 100 MS/s by NI-PCI 5122. Experimental data were collected and analyzed using LabVIEW (National Instrument) software. Dispersion compensation and interpolation were also completed using LabVIEW. We saved the OCT images per 100 μm length. Because of the width of the tooth being ∼1.2 cm, around 120 images were observed. For imaging the whole tooth, 200 images were taken in the experiments. 2.2.Refractive Indices MeasurementThe refractive index determines the optical property of material. In previous studies,40, 41 the refractive index of a highly scattering sample could be estimated from OCT measurement (as shown in Fig. 2). The lengths of the upper and lower parts are defined as z and z ′ and the refractive index is
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The refractive indices of enamel, dentin, and cementum were calculated following the method of Ref. 40. For calculating the refractive index of calculus, some clear definition of boundaries of z and z ′ should be discussed because the lower boundary of z ′ should choose a line that light can pass through as easily as possible. We chose three boundary lines in the OCT image for defining the boundary of refractive index calculation. The upper line is the top of the calculus. The middle line is the extension of the tooth surface from the left side to the right side of the calculus. The bottom line is the line that passes through the lower boundary of the calculus. Therefore, the chosen line that locates the bottom of the enamel instead of the bottom of the calculus is not easy to define in the real margin. Figure 3 shows the OCT images of glass, enamel, dentin, and cementum samples. Each sample was polished as a thin slice for SS-OCT measurement. All the OCT images were processed with a Gaussian filter and then binarized for contrast improvement. A (2×6)-mm glass slide was used as a standard sample for refractive index measurements calibration because its refractive index is well known. To avoid multireflection, the glass slide was placed on a (3×8)-mm rough-surfaced aluminum bar. Figure 3a is the OCT image of the glass slide. To observe the refractive index, we chose 20 points for each sample and five samples were measured in the OCT image of the glass slide for calculation. The refractive index of the glass slide is 1.503 ± 0.018 and extremely close to the typical glass refractive index of 1.52.42 Table 2 lists the refractive indices of enamel, dentin, cementum, calculus, and the glass slide, which were each measured as 1.625 ± 0.024, 1.534 ± 0.029, 1.570 ± 0.02, 2.097 ± 0.094, and 1.503 ± 0.018, respectively. These measurements strongly agree with previous results.41 Table 2Refractive indices of dental tissues and glass slide.
2.3.In Vitro Dental Calculus ImagingFigure 4 demonstrates the in vitro sample of dental calculus. One human caries-free tooth with subgingival calculus, extracted for periodontal reasons, was enrolled. The calculus region was marked on the surface of the tooth. For feasible study of subgingival calculus detection, a piece of porcine gingiva tissue with 0.8-mm thickness was used to cover the tooth sample. For effective position alignment, the tooth was fixed on beeswax and attached to a platform before applying gingiva to the tooth. Furthermore, an iron pin was placed on the surface next to the calculus to ensure the same measurement location because the iron pin shows an obviously high reflection property in the OCT image. The measurement path that passes through the pin for alignment subject is shown in Fig. 4. We moved the platform at 100 um between images; hence, measuring at the same location was possible if the platform moved in a reverse direction at the same distance after applying gingiva to the tooth. Therefore, images with the same number show a favorable comparison. We also controlled where the pin image is displayed in OCT images to ensure that the entire experiment began at the same location and that the OCT calculus images allowed for an effective comparison. Figure 5 shows the OCT images of the sample with respect to Fig. 4. By scanning along the path (the dotted line in Fig. 4), the OCT images of normal tooth surface and calculus can be observed in Fig. 5. Figure 5a shows the calculus region that corresponds to Fig. 4a, and Fig. 5b demonstrates the subgingival calculus image that corresponds to Fig. 4b. Although the gingival layer attenuates the optical signal, the calculus region can also be seen in Fig. 5b. Before the determination of refractive index, three boundary lines should be given. The measured image was postprocessed with an anisotropic diffusion filter, midvalue filter, and threshold filter for noise suppression and identified the position of calculus edge.43 These processes were also used for determining the boundary lines. Because of the surface of teeth can be observed directly from the OCT image, the second line was decided first. In Fig. 6a, we had removed other parts except teeth surface and approach the second line. The threshold filter and Gaussian filter were used to remove the calculus and keep the tooth surface. As shown in Fig. 6a, we kept tooth surface and connected two ends of the surface as the second line. The first line was decided as a parallel to second line and pass through the top point of calculus [Fig. 6b]. Next, the edge filter was used to obtain the calculus margin. In Fig. 6c, we found the lowest point of calculus margin and decided the third line passes through the point with parallel to the other lines. This approach provides an easy way to estimate the refractive index for dental tissue characterizing. The boundaries of z and z ′ are indicated in Fig. 6d. For optimization of image process, we separated calculus image with threshold and Gaussian filters. Figure 7 shows the processed images with different threshold values. Obviously, the processed calculus size depends on the threshold value in the gray-scale threshold filter. We chose the threshold value trial and error for imaging optimization.44, 45, 46 The optimal threshold value is 0.18. Because the parameters of OCT operation and image process are set as the optimal values, the errors of linear approximation can then be reduced. In clinical diagnoses, the OCT image provides great assistance if the dental calculus region can be highlighted accurately. The dental calculus region can be featured after this processing. Figure 8 shows the processed subgingival calculus image, and the calculus region is marked in red. 3.Discussion and ConclusionAlthough many studies have reported that caries detection could be achieved based on OCT imaging, we demonstrate a method that can be applied to subgingival calculus detection in dentistry. Moreover, the refractive index of dental calculus was measured in experiment. The dental calculus shows different optical and image properties to the caries. In Fig. 9, we can find that the dental calculus shows different optical and image properties to the caries. The caries reveal lower group delay and destroy the tooth structure inwardly. On the other hand, the calculus shows stronger group delay and do not affect the tooth structure because the calculus always deposits on the tooth surface. The different features can be observed in OCT images. Figure 9e shows the small volume of calculus still reveals the same property of strong group delay. Therefore, the difference between caries and calculus can be diagnosed by direct OCT imaging. In clinical diagnoses, the method presents advantages when compared to conventional x-ray imaging. X-ray imaging is radioactive and cannot observe the calculus on the buccal or lingual surface of the tooth. However, OCT imaging can overcome these two drawbacks. For further study, an oral probe will be developed instead of the sample arm for in vivo measurement. A linear boundary approximation method was used in this paper for refractive index calculation. This method provides an estimation of refractive index fast and easy. Errors of linear approximation occur with rough surface and nonlinear boundary of dental tissue. However, it should be sufficient for understanding the characterizations of teeth and calculus in our experiment. We demonstrated the subgingival calculus detection method using SS-OCT at 1310 nm with a Mach–Zehnder interferometer. The refractive indices of tooth tissue as enamel, dentin, cementum, and calculus were 1.625 ± 0.024, 1.534 ± 0.029, 1.570 ± 0.021, and 2.097 ± 0.094, respectively. Calculus revealed a strong scattering property that originated with a high refractive index. For subgingival calculus imaging, a human tooth with 0.8 mm porcine gingiva was employed as an in vitro sample in the experiment. The dental calculus region could then be marked with the postprocess. The experimental results indicate that the SS-OCT can be of great assistance for dental calculus detection. Currently, the handheld probe is under development for further in vivo study. AcknowledgmentsThis work was supported by the National Science Council of Taiwan under Grants No. NSC 99-2221-E-010-011, No. NSC 99-2622-E-010-001-CC3, and No. NSC 98-2221-E-010-004. ReferencesD Huang, E. A. Swanson, C. P. Lin, J. S. 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