Accuracy of artificial intelligence technology in detecting number of root canals of obturated human maxillary second molars indicated for retreatment : diagnostic accuracy experimental study /
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Abstract
Statement of the Problem:
Endodontic treatment has always been a challenging procedure and
failure to detect all canals and completely disinfecting the root canal
system could lead to an endodontic failure. In retreatment cases, the
endodontic procedure becomes more challenging and tricky requiring
high knowledge and skills. Artificial intelligence software makes it easier
in analysis of CBCT scans reducing dentist errors and improving
treatment success rates.
Aim of the study:
The aim of the study is to evaluate the accuracy and reliability of an
artificially intelligent software that would analyze, aid, support, and help
the endodontist to detect the correct number of root canals of 35 obturated
maxillary second molars indicated for retreatment in comparison to both
Cone Beam Computed Tomography and Clinical observation.
Materials and methods:
This study included 35 Patients with Maxillary Second obturated molars
indicated for re-treatment who underwent a pre-treatment CBCT, while
only a pre-treatment periapical radiograph was taken to aid in access
cavity preparation in the clinical stage. The study was levelled into three
stages. CBCT Stage: Pre-operative CBCT scans of the patients were
taken and randomly assigned to 2 co-supervisors who segmented,
interpreted, and recorded the number of canals on a pre-formed
information guide. Clinical Stage: A clinical stage where the enrolled
patients were randomly distributed upon 6 researchers. Researchers then
performed access cavities under DOM. The number of orifices found was
recorded in a preformed information guide. AI stage: CBCT scans was
uploaded to AI software by researcher and Number of canals found by the
software were recorded. The results of the first two stages were then
compared to the findings of the third stage to determine software
accuracy. Cases with missed canals by the AI software underwent further
evaluation of tooth morphological features, to determine the reason for
the software’s detection failure.
Results:
There was a statistically significant difference between detected number
of canals by the three methods (P-value = 0.018). AI showed higher
percentage of two, three canals and lower percentage of four canals
detection.
The CBCT stage and the clinical stage showed complete agreement in
their findings, however the CNN program inaccurately identified the
proper number of canals in three cases. To evaluate the relationship
between these cases and the potential impact of morphological variation
on the AI software, the canal type was determined using Vertucci's
classification. It was found that all three unsuccessful cases had a type II
canal. There was an insignificant link between the canal morphology and
the AI software's incapacity to detect canals. When the AI program was
unable to accurately identify the proper number of canals, the average
ratio of canal unity was around 60%. This means that around two-thirds
of the canal length was considered as one canal, while only one-third of
the length was considered as two separate 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 and Appendix.
DISSERTATION NOTE-Name of granting institution Misr International University, Faculty of Oral and Dental Medicine
Includes bibliographic references and Appendix.