Shaik, ShoayebIndermun, Suvarna2022-03-032024-04-152022-03-032024-04-152021https://hdl.handle.net/10566/10805Magister Scientiae Dentium - MSc(Dent)Cephalometric landmark detection is important for accurate diagnosis and treatment planning. The most common cause of random errors, in both computer-aided cephalometry and manual cephalometric analysis, is inconsistency in landmark detection. These methods are time-consuming. As a result, attempts have been made to automate cephalometric analysis, to improve the accuracy and precision of landmark detection whilst also minimizing errors caused by clinician subjectivity.This mini-thesis aimed to determine the precision of two cephalometric landmark identification methods, namely an artificial intelligence programme (BoneFinder®) and a computer-assisted examination software (Dolphin ImagingTM).enArtificial intelligenceHuman examinationMachine learningRadiologyOrthodonticsCephalometric landmark detection: Artificial intelligence vs human examinationUniversity of Western Cape