Quantitative analysis of the mouth opening movement of temporomandibular joint disorder patients according to disc position using computer vision: a pilot study
Original Article

Quantitative analysis of the mouth opening movement of temporomandibular joint disorder patients according to disc position using computer vision: a pilot study

Kug Jin Jeon1#^, Young Hyun Kim1#^, Eun-Gyu Ha1^, Han Seung Choi1^, Hyung-Joon Ahn2^, Jeong Ryong Lee3^, Dosik Hwang1,3,4^, Sang-Sun Han1,4,5^

1Department of Oral and Maxillofacial Radiology, Yonsei University College of Dentistry, Seoul, Korea; 2Department of Orofacial Pain and Oral Medicine, Dental Hospital, Yonsei University College of Dentistry, Seoul, Korea; 3Department of Electrical and Electronic Engineering, Yonsei University, Seoul, Korea; 4Clinical Imaging Data Science (CCIDS), Yonsei University College of Medicine, Seoul, Korea; 5Department of Computer Science, Yonsei University, Seoul, Korea

Contributions: (I) Conception and design: KJ Jeon, YH Kim, SS Han; (II) Administrative support: SS Han; (III) Provision of study materials or patients: KJ Jeon, YH Kim, HJ Ahn, D Hwang, SS Han; (IV) Collection and assembly of data: EG Ha, HS Choi, JR Lee; (V) Data analysis and interpretation: KJ Jeon, YH Kim, EG Ha, HS Choi, JR Lee; (VI) Manuscript writing: All authors; (VII) Final approval of manuscript: All authors.

#These authors contributed equally to this work.

^ORCID: Kug Jin Jeon, 0000-0002-5862-2975; Young Hyun Kim, 0000-0001-6541-3293; Eun-Gyu Ha, 0000-0002-4436-1751; Han Seung Choi, 0000-0002-7375-2401; Hyung-Joon Ahn, 0000-0001-9669-9781; Jeong Ryong Lee, 0000-0001-7251-2126; Dosik Hwang, 0000-0002-2217-2837; Sang-Sun Han, 0000-0003-1775-7862.

Correspondence to: Sang-Sun Han, DDS, PhD. Department of Oral and Maxillofacial Radiology, Yonsei University College of Dentistry, 50-1 Yonsei-ro, Seodaemun-gu, Seoul 03722, Korea. Email: sshan@yuhs.ac.

Background: Temporomandibular joint disorder (TMD), which is a broad category encompassing disc displacement, is a common condition with an increasing prevalence. This study aimed to develop an automated movement tracing algorithm for mouth opening and closing videos, and to quantitatively analyze the relationship between the results obtained using this developed system and disc position on magnetic resonance imaging (MRI).

Methods: Mouth opening and closing videos were obtained with a digital camera from 91 subjects, who underwent MRI. Before video acquisition, an 8.0-mm-diameter circular sticker was attached to the center of the subject’s upper and lower lips. The automated mouth opening tracing system based on computer vision was developed in two parts: (I) automated landmark detection of the upper and lower lips in acquired videos, and (II) graphical presentation of the tracing results for detected landmarks and an automatically calculated graph height (mouth opening length) and width (sideways values). The graph paths were divided into three types: straight, sideways-skewed, and limited-straight line graphs. All traced results were evaluated according to disc position groups determined using MRI. Graph height and width were compared between groups using analysis of variance (SPSS version 25.0; IBM Corp., Armonk, NY, USA).

Results: Subjects with a normal disc position predominantly (85.72%) showed straight line graphs. The other two types (sideways-skewed or limited-straight line graphs) were found in 85.0% and 89.47% in the anterior disc displacement with reduction group and in the anterior disc displacement without reduction group, respectively, reflecting a statistically significant correlation (χ2=38.113, P<0.001). A statistically significant difference in graph height was found between the normal group and the anterior disc displacement without reduction group, 44.90±9.61 and 35.78±10.24 mm, respectively (P<0.05).

Conclusions: The developed mouth opening tracing system was reliable. It presented objective and quantitative information about different trajectories from those associated with a normal disc position in mouth opening and closing movements. This system will be helpful to clinicians when it is difficult to obtain information through MRI.

Keywords: Artificial intelligence (AI); magnetic resonance imaging (MRI); temporomandibular joint disorder (TMD)


Submitted Jun 15, 2021. Accepted for publication Sep 29, 2021.

doi: 10.21037/qims-21-629


Introduction

Temporomandibular joint disorder (TMD) is a common condition, with a prevalence of about 40% (1,2), and the number of patients seeking medical care for TMD is increasing over time (3). Disc displacement is a subtype of TMD (4), for which the most accurate diagnostic tool is magnetic resonance imaging (MRI) as a modality capable of evaluating the position and shape of the disc and the range of condylar head movement (5,6). One of the clinical examinations used to estimate disc displacement is to assess whether there is deviation or deflection during mouth opening movement (7). This movement occurs as a complex series of interrelated three-dimensional rotational and translational activities of both temporomandibular joints (TMJs). Each TMJ cannot function independently. In the early stage of mouth opening, rotation occurs in the inferior cavity of the joint, followed by translation in the superior cavity (2). Therefore, if the disc is in the normal position, the mouth opening movement generally proceeds almost in a straight line. In contrast, disc displacement interferes with condylar translation, resulting in deviations or deflection of the mouth movement.

Because the path of mouth opening movement has been used to generate data for functional adjustments in the processes of dental prosthetic treatment and TMD screening, various methods have been developed to record and analyze mouth opening movements. The use of mechanical equipment can help to accurately trace the motion, but the disadvantage is that the equipment is heavy and cumbersome, potentially interfering with movement. Another method using an ultrasonic jaw motion analyzer has also been reported (8,9); such devices are increasingly simple, but remain impractical to use in dental clinics. Thus, most clinicians visually evaluate the path of mouth opening movement for TMD screening in a clinical setting. However, a visual examination is subjective, with results that may vary from tester to tester, and the movement path cannot be recorded and quantified. Only a few studies have explored the relationship between patterns of mouth opening movement and disc displacement (10,11).

Recently, artificial intelligence (AI) applications have been actively developed in the dental field (12,13). In this study, an AI-based system including computer vision that analyzes the mouth opening path was developed and the relationship between the path analysis generated by the model and the MRI-based diagnosis was evaluated. We hypothesized that if disc displacement is present, the mouth opening movement would be different from the pattern observed if the disc is in the normal position, and that AI-based systems would be as accurate as clinical experts with extensive clinical experience. The results will be useful for TMD screening by providing quantitative information on patterns of mouth opening movement.

The purpose of this study was to develop an automatic mouth opening tracing system based on computer vision using videos of mouth opening and closing movements, and to investigate the relationship between the path analysis obtained from the developed system and disc position on MRI.

We present the following article in accordance with the MDAR checklist (available at https://dx.doi.org/10.21037/qims-21-629).


Methods

Subjects

The study was conducted in accordance with the Declaration of Helsinki (as revised in 2013). This research was approved by the Institutional Review Board of Yonsei University Dental Hospital (IRB No. 2-2020-0038). Informed consent was obtained from all participants and, if applicable, their legal guardians and patient information such as age, sex, and patient number were anonymized prior to analysis.

A total of 104 subjects who underwent TMJ MRI examinations at Yonsei University Dental Hospital were selected. Among the subjects, those with a history of TMJ surgery, traumatic injury, and medial or lateral disc displacement on MRI were excluded. Finally, 91 subjects (17 males and 74 females; mean age, 38.42 years old; age range, 13 to 80 years old) were included in this study (Figure 1). All MRI images were obtained according to a routine TMJ protocol in the closed- and open-mouth positions using a SIGNA Pioneer 3.0 T MRI scanner (GE Healthcare, Waukesha, WI, USA) with a 16-channel flex large coil. Sagittal proton density-weighted images were obtained with the following parameters: TE/TR, 50/2,084 ms; bandwidth, 41.67 kHz; NEX, 1.5; FOV, 130 mm ×130 mm; slice thickness, 2.5 mm; and scan time, 2 min 14 s. Coronal proton density-weighted images were obtained with the following parameters: TE/TR, 50/1,500 ms; bandwidth, 41.67 kHz; NEX, 2; FOV, 130 mm ×130 mm; slice thickness, 2.5 mm; and scan time, 2 min 3 s. Sagittal T2-weighted images were obtained with the following parameters: TE/TR, 80/3,088 ms; bandwidth, 25.00 kHz; NEX, 1.5; FOV, 130 mm ×130 mm; slice thickness, 2.5 mm; and scan time, 2 min 16 s.

Figure 1 Flow chart diagram of participation. TMJ, temporomandibular joint; MRI, magnetic resonance imaging.

On MRI, the normal disc position is one in which the posterior band is located directly superior to the condylar head and the thin intermediate zone is located between the articulating surface in the closed mouth position (14). An oral and maxillofacial radiologist with 15 years of experience assessed the disc position as normal, anterior disc displacement with reduction (DDWR; the posterior band located anterior to the condylar head in the closed-mouth position, but with a normal disc-condyle relationship in the open-mouth position), or anterior disc displacement without reduction (DDWOR; the posterior band positioned anterior to the condyle in both the closed- and open-mouth positions). Disc displacement can be unilateral or bilateral. The subjects were divided into six subgroups as follows: (I) group A (normal on both sides), (II) group B (DDWR on only one side), (III) group C (DDWR on both sides), (IV) group D (DDWOR on only one side), (V) group E (DDWOR on both sides), and (VI) group F (DDWOR on one side and DDWR on the other side). The six subgroups were further grouped as normal, DDWR, or DDWOR. Group F was included in the DDWOR group. Table 1 shows the general characteristics of the subjects according to groups.

Table 1

Groups of the subjects according to disc position on MRI

Groups Subgroups Number of subjects (male/female) Mean age (years) Age range (years)
Normal A (normal on both sides) 14 (8/6) 39.57 20–80
DDWR B (DDWR on only one side) 13 (3/10) 35.08 13–55
C (DDWR on both sides) 7 (2/5) 38.57 19–68
DDWOR D (DDWOR on only one side) 12 (1/11) 38.17 13–63
E (DDWOR on both sides) 20 (1/19) 39.90 17–73
F (DDWOR on one side and DDWR on the other side) 25 (2/23) 38.40 14–71

MRI, magnetic resonance imaging; DDWR, anterior disc displacement with reduction; DDWOR, anterior disc displacement without reduction.

Video acquisition of mouth opening and closing movements

An 8.0-mm-diameter circular sticker was attached to the center of the subject’s upper and lower lips. The subject was seated on a chair with his/her back and head against a wall to minimize body movements during video acquisition. One operator (HS Choi) adjusted the subject’s face to ensure that it was not tilted, and the camera was positioned in front of the subject. To remove personally identifiable information, only a limited area from the nose to above the shoulder was taken and the lips were located at the center of the imaging area to reduce camera lens distortion. Before video acquisition, the subject practiced mouth opening and closing movements one to two times under the guidance of an oral radiologist (KJ Jeon). Finally, the subject performed the mouth movements as practiced upon request, and the operator recorded the movements. A digital camera (Sony A5100L; Sony, Minato, Tokyo, Japan) and lens (Sony SELP1650; Sony, Minato, Tokyo, Japan) were used with the following capture settings: focal length, 16–50 mm in focal length; aperture range, and f/3.5–5.6; 30 frames per second. The video for input to the model was resized from its original resolution of 1,080 (width) × 1,440 (height) to 540 (width) × 720 (height).

Development of the automated mouth opening tracing system based on computer vision

A total of 10,604 frames obtained from the videos of 91 subjects were used to develop an automatic tracing system of mouth opening and closing movements. The mouth opening tracing system was developed to automatically output a tracing graph after video input using MATLAB R2019b (MathWorks, Natick, MA, USA). Figure 2 shows the overall process of the developed system. We designed the automated model as follows: (I) development of automated landmark detection of the upper and lower lips from the videos; and (II) graphical visualization of the tracing graph and automatic calculation of the graph height (mouth opening length) and width (sideways values).

Figure 2 Overall process of our automated mouth opening tracing system. (A) The final output of the proposed system; (B) the mouth opening tracing model and graphical output. This image is published with the patient/participant’s consent.

In the first step, the landmarks to be automatically detected were defined by the circular stickers attached to the upper and lower lips in each video frame. This process started with inputting the video, and each video frame was converted from an RGB image to a gray-scale image. The model detected the bright circles with a radius of 3–10 (pixels) in each converted frame using the circular Hough transform method. From the two detected circular stickers, the center coordinates (x and y) and the radius of each circle were extracted. The second step was designed to provide the visual and quantitative information necessary for analysis using automatically detected landmarks. The tracing graph output the lower lip movement based on the upper lip at the same position. In the first frame, the positions of the initially recognized (x, y) coordinates were adjusted to (0, 0), and in the subsequent frames, each position of the coordinates was calculated using the equations below.

x-coordinate:(x-coordinateofthelowerlip)(x-coordinateoftheupperlip)

y-coordinate:(y-coordinateofthelowerlip)(y-coordinateoftheupperlip)

To provide additional information, graph height and width values were calculated from the traced graphs. The computed (x, y) coordinates (pixels) using the actual radius of the circular sticker were extracted as the actual length (mm). The height and width were calculated by the following equation.

Heightvalue=(maximumy-coordinatevalue)(minimumy-coordinatevalue)

Widthvalue=(maximumx-coordinatevalue)(minimumx-coordinatevalue)

As the final output of the developed automated mouth opening tracing system, a visualized graph with height and width values was presented. The opening tracing was displayed as green and the closing tracing was displayed in orange for easy identification of mouth movement.

Evaluation of the proposed systems and statistical analysis of graphs according to disc position

For objective evaluation, the expert manually annotated the centers of two circular stickers on 252 randomly selected frames, and this manual annotation data were used as the gold-standard coordinates. To verify the reliability of the proposed system, intraclass correlation coefficients (ICCs), mean absolute error (MAE), and mean squared error (MSE) were calculated between the automatically detected results and the gold-standard values. The automatically detected landmarks showed good reliability, with an ICC of 0.876, MAE of 0.802, and MSE of 0.904 mm compared with the expert’s manual annotation.

The graph paths were categorized into three types: straight, sideways-skewed, and limited-straight line graphs. The straight line type displayed alignment from the starting to ending points on the graph during mouth opening and closing movements, and had height values of 35 mm or more. The sideways-skewed line type had notable sideways changes on the path, such as skews or bouncing with various ranges of height and width values. The limited-straight line type presented a straight line, but with a limited height value of less than 35 mm.

Statistical analysis was performed using the two-sided Fisher exact test to evaluate correlations between the three groups (normal, DDWR, and DDWOR) and the proportions of graph path types in each group. The height and width values were presented by descriptive statistics including mean and range. The Shapiro-Wilk and Levene tests were conducted to assess the normality of the distribution and the equality of variance of the data according to group. Statistically significant differences in height and width were calculated using Welch’s one-way analysis of variance (ANOVA) with the post-hoc test using the Games-Howell multiple comparison test with a 5% significance level. IBM SPSS Statistics version 25.0 (IBM Corp., Armonk, NY, USA) was used for statistical analysis.


Results

In group A, 85.72% of the graph paths were straight line graphs, while sideways-skewed line graphs were present in 76.92%, 71.43%, 58.33%, 65%, and 76% of subjects in groups B to F, respectively. The limited-straight line pattern was found in 25% of subjects in group E. The mean height of the graphs was 44.90 mm in group A and 34.58 mm in group E (Table 2).

Table 2

Graph path types, height, and width of automated mouth opening tracing results according to groups

Groups Subgroups Graph path types, n (%) Height range (mean) Width range (mean)
Straight (n=21) Sideways-skewed (n=55) Limited-straight (n=15)
Normal A 12 (85.72) 1 (7.14) 1 (7.14) 25.86–64.48 (44.90) 1.41–6.41 (3.76)
DDWR B 1 (7.70) 10 (76.92) 2 (15.38) 27.83–59.49 (38.60) 1.21–9.53 (4.60)
C 2 (28.57) 5 (71.43) 0 (0) 30.8–53.52 (38.31) 2.83–8.96 (4.73)
DDWOR D 2 (16.67) 7 (58.33) 3 (25.00) 16.05–59.08 (35.79) 1.24–6.82 (3.30)
E 2 (10.00) 13 (65.00) 5 (25.00) 20.89–55.19 (34.58) 1.35–7.18 (3.72)
F 2 (8.00) 19 (76.00) 4 (16.00) 24.37–56.66 (36.73) 1.19–10.17 (4.23)

The unit of height and width values are millimeters (mm). DDWR, anterior disc displacement with reduction; DDWOR, anterior disc displacement without reduction.

A correlation between the disc position on MRI and graph path type was statistically confirmed in the three groups (P<0.001) (Table 3). The straight line type was present in 85.72% of subjects in the normal group, while the sideways-skewed and limited-straight line types were found in 85.0% and 89.47% of subjects in the DDWR and DDWOR groups, respectively (Figure 3).

Table 3

Distribution of graph path types between the normal, DDWR, and DDWOR groups

Groups Graph path types, n (%) Total
Straight Sideways-skewed Limited-straight
Normal 12 (85.72) 1 (7.14) 1 (7.14) 14
DDWR 3 (15.00) 15 (75.00) 2 (10.00) 20
DDWOR 6 (10.53) 39 (68.42) 12 (21.05) 57
χ2 (P value) 38.113 (<0.001*)

Two-sided Fisher’s exact test, *P<0.05. DDWR, anterior disc displacement with reduction; DDWOR, anterior disc displacement without reduction.

Figure 3 Different types of mouth opening tracing from the proposed automated system and their relationships with the disc position on MRI. In general, the normal group showed the straight line type, and DDWR and DDWOR groups showed the sideways-skewed or limited-straight line type. MRI, magnetic resonance imaging. This image is published with the patient/participant’s consent.

Figure 4 shows a comparison of the height of mouth opening among groups. The mean height in the DDWOR group was 35.78±10.24 mm, which was lower than that of the normal group (44.90±9.61 mm) and the DDWR group (38.50±8.92 mm), reflecting a statistically significant difference (P<0.05). No statistically significant difference in the width of mouth opening was found among the groups (P>0.05).

Figure 4 Comparison of height obtained from the automated mouth opening tracing system according to groups classified by disc position. Welch’s analysis of variance and the Games-Howell post hoc test were used for the statistical analysis (*, P<0.05).

Discussion

Our study showed a correlation between the graph paths identified using the developed system and the disc position on MRI. Approximately one-third of the population has TMD, which is a chronic disease that may not be diagnosed until mouth opening limitation or pain develops (1,2). TMD is a very complex condition, and its treatment requires an interdisciplinary approach (15,16). Anterior disc displacement is considered to be one of the main causes of TMD (17). MRI can provide accurate diagnostic information on disc displacement, but its use is limited due to cost, time, and accessibility for most dental clinicians. Thus, clinical examinations for disc displacement diagnosis include pain with mandibular function, abnormal mandibular movement, and joint sounds (click, popping, crepitus, and thud sensation) (18).

Pain is divided into TMJ and masticatory muscle pain, but it is not easy to accurately distinguish between them (17). Joint sounds are caused by disc displacement and/or osteoarthritis, but it is difficult to diagnose osteoarthritis without computed tomography or cone-beam computed tomography (19-21). Abnormal mandibular movements include deviation, deflection, and limitation of mouth opening. During the mouth opening and closing movement, deflection refers to visible deviation to one side at the maximum opening. Deviation is defined as visible left or right movement during opening that returns to the midline before or near the maximum opening. Limitation of mouth opening refers to an unassisted maximum opening of less than 35 mm according to the Diagnostic Criteria for Temporomandibular Disorders (17). Limitation of mouth opening can be assessed as the maximum amount of opening measured by the distance between the incisal edges, and there are two types: acute and chronic. If limitation of mouth opening is due to an acute lock, the patient is likely to recognize that there is a problem; however, if TMD is chronic and the disease progresses gradually, the patient may not recognize that the mouth opening is restricted. Approximately 3.6% to 7% of TMD patients seek professional care for pain, sound, and limitation of mouth opening, and many patients leave without treatment (1,2). As a clinical examination, mouth opening and closing movement can be objectified and quantified, and deviation or deflection can be graphed by recording mouth opening and closing movements using special equipment. Recording devices are expensive to purchase, are not often used due to the time cost, weight, and discomfort of the device, and rely on a subjective visual inspection. Since a visual examination has the drawback that it cannot be visualized and quantified, it would be very useful if visualization and quantification could be performed using only a video of mouth opening and closing movement without any special equipment.

AI is used in various dental fields such as dental caries diagnosis (22-24), the diagnosis of oral diseases such as squamous cell carcinoma (25), the formulation of orthodontic treatment plans (26-28), and assessments of the developmental stages of third molars (29). There have been few studies using AI for TMD; therefore, in this study, we developed an AI system based on computer vision to trace the mouth opening path using only mouth opening and closing videos. In this novel study of mouth opening tracing, circular stickers were attached to the upper and lower lips to recognize the landmarks. Previously, paths and height have been analyzed at interincisal points of the maxilla and mandible. However, since the anterior teeth are not clearly visible in the mouth opening and closing videos, we analyzed movement based on the center points of the stickers on the upper and lower lips. The automated mouth opening tracing system developed in this study was objectively reliable.

In this study, patients with a normal disc position mostly showed the straight line type, while those with anterior disc displacement showed the sideways-skewed or limited-straight line type. In the normal group, more than 85% of subjects showed the straight line type, and only two did not. One of the subjects showed the sideways-skewed type with left deviation, but a neurological problem was suspected and the patient was referred to a neurologist. The other one showed the limited-straight line type. That patient had masseter muscle pain and a history of Botox injections, reflecting muscle problems, not disc displacement. In the group with anterior disc displacement, only about 12% of patients showed the straight line type. Of the nine patients with anterior disc displacement who presented the straight line type, the DDWR joints showed slight or partial disc displacement in the early stage. In the DDWOR joints, the disc displacement was in the late stage, and the disc was not stuck until the maximum opening, or the disc located in front at the condylar head moved with the condylar head at the time of opening. The proposed automated mouth opening tracing system detected anterior disc displacement well, but it seemed likely to miss detection of initial and late stages of disc displacement.

The height of mouth opening was highest in the normal group, followed in descending order by the DDWR and DDWOR groups, and the difference was statistically significant between the normal and DDWOR groups. The width was lowest in the normal group, followed in increasing order by the DDWOR and DDWR groups, but the difference showed no statistical significance. The reason why DDWOR group had narrower movements than the DDWR group is thought to be that the condyle was stuck in the disc and limitation of mouth opening occurred before the sideways motion.

The main limitations of this study are that each group, especially the normal group, had a small number of subjects, the overall age range was very wide, and the number of male participants was small. With a large number of samples, we will be able to better characterize the mouth opening graphs according to disc position. In addition, potential measurement errors can occur due to the omission of lens calibration and posterior movement of the lower lip upon opening of the mouth. Although we constructed a controlled experimental environment, with steps such as locating the mouth at the center of the image area and fixing the subject's posture, technical improvements may be necessary to obtain more accurate results. Further research may make it possible to trace paths in real-time without circular stickers by advances in AI or facial landmark detection using computer vision.


Conclusions

The developed mouth opening tracing system based on computer vision was reliable and its results were correlated with disc position on MRI. The proposed system provided objective and quantitative information about the different trajectories of mouth opening and closing movements in people with disc displacement or a normal disc position. This will help clinicians screen TMD and will facilitate precise diagnoses for patients.


Acknowledgments

Funding: This work was supported by a National Research Foundation of Korea (NRF) grant funded by the Korean government (MSIT) (2019R1A2C1007508).


Footnote

Reporting Checklist: The authors have completed the MDAR checklist. Available at https://dx.doi.org/10.21037/qims-21-629

Conflicts of Interest: All authors have completed the ICMJE uniform disclosure form (available at https://dx.doi.org/10.21037/qims-21-629). The authors have no conflicts of interest to declare.

Ethical Statement: The authors are accountable for all aspects of the work in ensuring that questions related to the accuracy or integrity of any part of the work are appropriately investigated and resolved. The study was conducted in accordance with the Declaration of Helsinki (as revised in 2013). This research was approved by the Institutional Review Board of Yonsei University Dental Hospital (No. 2-2020-0038). Informed consent was obtained from all participants and, if applicable, their legal guardians.

Open Access Statement: This is an Open Access article distributed in accordance with the Creative Commons Attribution-NonCommercial-NoDerivs 4.0 International License (CC BY-NC-ND 4.0), which permits the non-commercial replication and distribution of the article with the strict proviso that no changes or edits are made and the original work is properly cited (including links to both the formal publication through the relevant DOI and the license). See: https://creativecommons.org/licenses/by-nc-nd/4.0/.


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Cite this article as: Jeon KJ, Kim YH, Ha EG, Choi HS, Ahn HJ, Lee JR, Hwang D, Han SS. Quantitative analysis of the mouth opening movement of temporomandibular joint disorder patients according to disc position using computer vision: a pilot study. Quant Imaging Med Surg 2022;12(3):1909-1918. doi: 10.21037/qims-21-629

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