Accuracy of artificial intelligence technology in detecting the number of root canals in human mandibular first molars : A diagnostic accuracy experimental study /
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Abstract
Artificial intelligence (AI) is revolutionizing various fields of medicine,
including dentistry. In endodontics, AI has the potential to improve diagnostic
accuracy, treatment planning, and overall patient care. There is minimal
scientific evidence concerning the accuracy of the detection of the number of
canals using Artificial Intelligence. The aim of this study is to define the
accuracy of an Artificial Intelligence (AI) Software to detect the number of
root canals in the mandibular first molars compared to the standard clinical
method under magnification and to the gold standard using a Cone Beam
Computed Tomography (CBCT). In addition, this study aims to determine the
morphological variations in cases where the AI failed to detect all the canals.
Thirty-Five patients presented to MIU dental clinics with mandibular first
permanent molars requiring root canal treatment were selected according to
the eligibility criteria. Teeth that met the criteria had pre-operative periapical
x-rays taken. Adequate case and medical history were taken. Detection of the
number of root canals was achieved by 3 methods: Radiographically using the
CBCT as the gold standard, clinically using the DOM and using an AI
software. After signing the informed consent, the patients underwent CBCT
imaging using Endo mode to minimize the radiation exposure before
treatment initiation. CBCT was coded based on the patients file numbers
instead of names. The number of canals identified was recorded in a pre formed information guide. Using randomization software, the 35 patients
were divided up amongst 6 post graduate students at random. A dental
operating microscope was used to prepare the access cavity for each patient.
In order to minimize the radiation dose to the patient, the CBCT was given to
the postgraduate student after the number of canals was recorded. This helped
to prevent inter-treatment periapical radiographs as working length X-rays.
After that, the principal researcher, who was blind to the outcomes of the
CBCT stage, carried out the AI stage individually. The Diagnocat AI Software
was used to upload the CBCT images, and CBCT segmentation and deep
learning techniques were employed. Next, the software's total number of canal
identifications was recorded. The gathered data was divided into three groups
based on the canal detection method into: CBCT Findings, Clinical Findings
and AI Findings. Cases containing canals that were missed by the AI software
had additional examination of the morphological features of each tooth from
the CBCT. The six cases in which the AI software successfully detected the
number of canals were randomly selected as a comparative group. For both
groups the following features were included: the inter-orifice distance was
measured in order to accomplish this, the length of the root, Vertucci
classification type and the length of the Canal division measured from the
apex and CEJ. In addition, from the axial cut of the CBCT, the inter-orifice
distance was measured in the same manner between the canals that were not
detected by the AI. Afterward, the mean inter-orifice distance was calculated
for both the failed and successful cases. Those measurements were utilized to
calculate the percentage of canal unity within the entire root length associated
to the missed canals.
The degree of accuracy was 100% for the DOM, 100% for the CBCT and
82.86% for the AI. It was clear that application of AI software didn’t detect
the exact number of canals in all cases. The AI software detected the correct
number of canals in only 29 cases. The use of DOM and CBCT detected all
canals in all the 35 cases. Another analysis was done to relate the inaccuracies
of the software to the morphology of the wrong cases detected. It was evident
that the inter-orifice distance for the incorrectly detected cases was less than
that of the cases correctly detected. Added to that, the percentage of canal
unity was analyzed for the distal canals, which is the measure of the unity of
both distal canals along the entire length of the root. The greater the union
between both distal canals, the less likely the AI software will distinguish
them as separate canals. The average percentage of canal unity of the
incorrectly detected cases was greater than 50% and the percentage of canal
unity for the correctly detected cases was a maximum of 20% which allowed
the software to detect two distal canals.
Description
DISSERTATION NOTE-Degree type M.Sc.
DISSERTATION NOTE-Name of granting institution Misr International University, Faculty of Oral and Dental Medicine
Includes bibliographic references.
DISSERTATION NOTE-Name of granting institution Misr International University, Faculty of Oral and Dental Medicine
Includes bibliographic references.