Abstract

Several efforts have been made to completely automate cephalometric analysis by automatic landmark search. However, accuracy obtained was worse than manual identification in every study. The analogue-to-digital conversion of X-ray has been claimed to be the main problem. Therefore the aim of this investigation was to evaluate the accuracy of the Cellular Neural Networks approach for automatic location of cephalometric landmarks on softcopy of direct digital cephalometric X-rays. Forty-one, direct-digital lateral cephalometric radiographs were obtained by a Siemens Orthophos DS Ceph and were used in this study and 10 landmarks (N, A Point, Ba, Po, Pt, B Point, Pg, PM, UIE, LIE) were the object of automatic landmark identification. The mean errors and standard deviations from the best estimate of cephalometric points were calculated for each landmark. Differences in the mean errors of automatic and manual landmarking were compared with a 1-way analysis of variance. The analyses indicated that the differences were very small, and they were found at most within 0.59 mm. Furthermore, only few of these differences were statistically significant, but differences were so small to be in most instances clinically meaningless. Therefore the use of X-ray files with respect to scanned X-ray improved landmark accuracy of automatic detection. Investigations on softcopy of digital cephalometric X-rays, to search more landmarks in order to enable a complete automatic cephalometric analysis, are strongly encouraged.

Highlights

  • IntroductionDue to the affordability of digital radiographic imaging, the demand for the medical profession to completely automate analysis and diagnostic tasks has increased

  • Since the introduction of the cephalometer in 1931 [1], cephalometric analysis has become an important clinical tool in diagnosis, treatment planning, evaluation of growth, or treatment results and research [2, 3].Recently, due to the affordability of digital radiographic imaging, the demand for the medical profession to completely automate analysis and diagnostic tasks has increased

  • The analogue-to-digital conversion of X-ray has been claimed to be the main problem. The aim of this investigation was to evaluate the accuracy of the Cellular Neural Networks approach for automatic location of cephalometric landmarks on softcopy of direct digital cephalometric X-rays

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Summary

Introduction

Due to the affordability of digital radiographic imaging, the demand for the medical profession to completely automate analysis and diagnostic tasks has increased. In this respect, automatic cephalometric analysis is one of the main goals, to be reached in orthodontics in the near future. The main problem, in automated cephalometric analysis, is landmark detection, given that the measurement process has already been automated successfully. None of the proposed approaches solves the problem completely, that is, locating all the landmarks requested by a complete cephalometric analysis and with accuracy suitable to clinical practice

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