Human examination and artificial intelligence in cephalometric landmark detection—is AI ready to take over?
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Date
Authors
Indermun, Suvarna
Shaik, Shoayeb
Nyirenda, Clement
Johannes, Keith
Mulder, Riaan
Journal Title
Journal ISSN
Volume Title
Publisher
Oxford University Press
Abstract
OBJECTIVES : To compare the precision of two cephalometric landmark identification methods,
namely a computer-assisted
human examination software and an artificial intelligence
program, based on South African data.
METHODS : This retrospective quantitative cross-sectional
analytical study utilized a data set
consisting of 409 cephalograms obtained from a South African population. 19 landmarks were
identified in each of the 409 cephalograms by the primary researcher using the two programs
[(409 cephalograms x 19 landmarks) x 2 methods = 15,542 landmarks)]. Each landmark generated
two coordinate values (x, y), making a total of 31,084 landmarks. Euclidean distances
between corresponding pairs of observations was calculated. Precision was determined by
using the standard deviation and standard error of the mean.
RESULTS : The primary researcher acted as the gold-standard
and was calibrated prior to
data collection. The inter- and intrareliability tests yielded acceptable results. Variations
were present in several landmarks between the two approaches; however, they were statistically
insignificant. The computer-assisted
examination software was very sensitive to several
variables. Several incidental findings were also discovered. Attempts were made to draw valid
comparisons and conclusions.
CONCLUSIONS : There was no significant difference between the two programs regarding the
precision of landmark detection. The present study provides a basis to: (1) support the use
of automatic landmark detection to be within the range of computer-assisted
examination
software and (2) determine the learning data required to develop AI systems within an African
context.
Description
Keywords
Cephalometry, Cephalometric landmarks, Orthodontics, Artificial intelligence (AI)
Sustainable Development Goals
None
Citation
Indermun, S., Shaik, S., Nyirenda, C., Johannes, K. & Mulder, R. 2023, 'Human examination and artificial intelligence in cephalometric landmark detection—is AI ready to take over?', Dentomaxillofacial Radiology, vol. 52, no. 6, art. 20220362, pp. 1-14, doi : 10.1259/dmfr.20220362.