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Accuracy of Artificial Intelligence Technology in Detecting Number of Root Canals in Human Mandibular First Molars Obturated and Indicated for Retreatment: Diagnostic Accuracy Experimental Study

Not Applicable
Completed
Conditions
Missed Canals
Interventions
Diagnostic Test: CBCT
Diagnostic Test: clinical examination under dental operating microscope
Diagnostic Test: canal detection AI software (diagnocat)
Registration Number
NCT06325163
Lead Sponsor
Misr International University
Brief Summary

evaluate the accuracy of new AI technology for detecting root canals in mandibular first molars retreatment cases in comparison to dentist clinical access cavity and CBCT imaging.

Detailed Description

evaluate the accuracy of new AI technology for detecting root canals in mandibular first molars retreatment cases in comparison to dentist clinical access cavity and CBCT imaging.

1. CBCT exmanation stage: In this stage, CBCT scanning was done using Soredex Cranex 3D Dental Imaging System, FINLAND, with the following parameters ((XS FOV dimensions 61 x 41 mm (HxD)) (XS FOV High resolution 90 kV / 4 - 12.5 mA / 6.1 s)).

The samples will be randomized using randomization software (Microsoft Office Excel, USA) and will be assigned randomly to 2 endodontists who are unaware of the findings of stage 2. After interpreting and segmenting the CBCT scans in DICOM Format using OnDemand software (USA), the number of canals identified will be recorded on a pre-established information guide.

The samples are coded based on the patient's file number, and the codes were undisclosed so that the CBCT examiners could not identify the samples. All images were interpreted from the axial section in the analysis of the tomographic sections, the number of canals are identified by the corresponding radiolucent orifices, regardless of their location along the root

2. Clinical Stage: This is a clinical stage where the thirty-five patients, as predetermined by power analysis, will be randomly distributed upon 6 Practitioners using randomization software (Microsoft Office Excel). Practitioners will then proceed in access formation under dental operating microscope, (Leica M320D using magnification 16X, using fully integrated 4K camera).

Access will be done using TR13 diamond stone (Mani, Japan) to remove caries and restorations.

Troughing will be done using ultrasonic tip (NSK E4 and E15D) power 3W.

Irrigation will be done using NAOCL (JK Dental Vision sodium hypochlorite, Egypt) with a concentration of 2.5%.

Gutta percha will be removed from the canal using M-pro rotary files:

At first orifice opener will be used to remove the coronal gutta percha then used the yellow file tapered 4% then confirm the working length by apex locator, after that using taper file 25 to remove the remaining gutta percha.

DG16 endodontic probe (Dentsply Sirona, Germany) will be used to locate canal orifices.

Upon confirmation by clinic PHD supervisors, the number of orifices found will be recorded on a pre-formed information guide, in one visit per patient. Access cavity will be aided by Leica M320D DOM

3. Artificial intelligence stage: The carrying out of this stage will be solely undertaken by the principal investigator. The CBCT images will be uploaded to convolutional neural network software (CNN) that uses a deep learning algorithm and CBCT segmentation. The software will then record the number of canals it found

The software utilized employs deep convolutional neural networks (CNNs) with a specific U-net inspired structure. The complete CBCT scan is uploaded onto the software, where all collected images are analyzed and each tooth in the 3D scan is precisely located and assessed. The software uses pattern recognition and statistical predictions to segment numerous slices of each tooth and determine the condition or pathosis present. This is achieved by analyzing previously fed photos that were used to train the software

Recruitment & Eligibility

Status
COMPLETED
Sex
All
Target Recruitment
35
Inclusion Criteria
  • Males and females.
  • Patients aged 18 to 40 years
  • Repairable permanent first molars in the lower jaw, with a closed apex, which required non-surgical retreatment.
  • One or more of the following signs and symptoms: Spontaneous pain, Pain on biting, Sinus tract, Radiolucency related to one or more roots.
Exclusion Criteria
  • Patients with lower first molars which are deemed non restorable, or have large perforations, external resorption, or vertical root fracture,
  • Pregnant women
  • Immunocompromised patients.

Study & Design

Study Type
INTERVENTIONAL
Study Design
SEQUENTIAL
Arm && Interventions
GroupInterventionDescription
A single arm consisting of 3 stagesclinical examination under dental operating microscopeThis study will include 3 stages: 1. CBCT examination stage: In this stage, CBCT scanning will be done and examined by by 2 blinded endodontists and the number of canals identified will be recorded 2. Clinical Stage: This is a clinical stage where patients will be randomly distributed upon 6 Practitioners using randomization software (Microsoft Office Excel). Practitioners will then proceed with the pretreatment procedures under dental operating microscope 3. Artificial intelligence stage: The carrying out of this stage will be solely undertaken by the principal investigator. The CBCT images will be uploaded to convolutional neural network software (CNN) that uses a deep learning algorithm and CBCT segmentation. The software will then record the number of canals it found
A single arm consisting of 3 stagesCBCTThis study will include 3 stages: 1. CBCT examination stage: In this stage, CBCT scanning will be done and examined by by 2 blinded endodontists and the number of canals identified will be recorded 2. Clinical Stage: This is a clinical stage where patients will be randomly distributed upon 6 Practitioners using randomization software (Microsoft Office Excel). Practitioners will then proceed with the pretreatment procedures under dental operating microscope 3. Artificial intelligence stage: The carrying out of this stage will be solely undertaken by the principal investigator. The CBCT images will be uploaded to convolutional neural network software (CNN) that uses a deep learning algorithm and CBCT segmentation. The software will then record the number of canals it found
A single arm consisting of 3 stagescanal detection AI software (diagnocat)This study will include 3 stages: 1. CBCT examination stage: In this stage, CBCT scanning will be done and examined by by 2 blinded endodontists and the number of canals identified will be recorded 2. Clinical Stage: This is a clinical stage where patients will be randomly distributed upon 6 Practitioners using randomization software (Microsoft Office Excel). Practitioners will then proceed with the pretreatment procedures under dental operating microscope 3. Artificial intelligence stage: The carrying out of this stage will be solely undertaken by the principal investigator. The CBCT images will be uploaded to convolutional neural network software (CNN) that uses a deep learning algorithm and CBCT segmentation. The software will then record the number of canals it found
Primary Outcome Measures
NameTimeMethod
Number of canalsThe day of the procedure

the numbers of canals in mandibular molars indicated for retreatment will be measured using CBCT, clinical under dental operating microscope, and using AI software

Secondary Outcome Measures
NameTimeMethod
linear morphological variations in failed casesFollowing the CBCT stage, an average of one week

This outcome will measure I)Inter orifice distance II)Canal configuration. III)Width of the root, in millimeters

Trial Locations

Locations (1)

Misr International University

🇪🇬

Cairo, Egypt

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