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Reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (WebCeph) in comparison with digital software (AutoCEPH) and manual tracing method

INTRODUCTION: It has been suggested that human errors during manual tracing of linear/angular cephalometric parameters can be eliminated by using computer-aided analysis. The landmarks, however, are located manually and the computer system completes the analysis. With the advent of Artificial Intell...

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Autores principales: Prince, S Tsander Tito, Srinivasan, Dilip, Duraisamy, Sangeetha, Kannan, Ravi, Rajaram, Krishnaraj
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dental Press International 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10069747/
https://www.ncbi.nlm.nih.gov/pubmed/37018830
http://dx.doi.org/10.1590/2177-6709.28.1.e2321214.oar
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author Prince, S Tsander Tito
Srinivasan, Dilip
Duraisamy, Sangeetha
Kannan, Ravi
Rajaram, Krishnaraj
author_facet Prince, S Tsander Tito
Srinivasan, Dilip
Duraisamy, Sangeetha
Kannan, Ravi
Rajaram, Krishnaraj
author_sort Prince, S Tsander Tito
collection PubMed
description INTRODUCTION: It has been suggested that human errors during manual tracing of linear/angular cephalometric parameters can be eliminated by using computer-aided analysis. The landmarks, however, are located manually and the computer system completes the analysis. With the advent of Artificial Intelligence in the field of Dentistry, automatic location of the landmarks has become a promising tool in digital Orthodontics. METHODS: Fifty pretreatment lateral cephalograms obtained from the Orthodontic department of SRM dental college (India) were used. Analysis were done by the same investigator using the following methods: WebCeph™, AutoCEPH(©) for Windows or manual tracing. Landmark identification was carried out automatically by Artificial Intelligence in WebCeph™ and with a mouse driven cursor in AutoCEPH(©), and manually using acetate sheet and 0.3-mm pencil, ruler and a protractor. The mean differences of the cephalometric parameters obtained between the three methods were calculated using ANOVA with statistical significance set at p<0.05. Intraclass correlation coefficient (ICC) was used to determine both reproducibility and agreement between linear and angular measurements obtained from the three methods and intrarater reliability of repeated measurements. ICC value of >0.75 indicated good agreement. RESULTS: Intraclass correlation coefficient between the three groups was >0.830, showing good level of agreement, and the value within each group was >0.950, indicating high intrarater reliability. CONCLUSION: Artificial Intelligence assisted software showed good agreement with AutoCEPH(©) and manual tracing for all the cephalometric measurements.
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spelling pubmed-100697472023-04-04 Reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (WebCeph) in comparison with digital software (AutoCEPH) and manual tracing method Prince, S Tsander Tito Srinivasan, Dilip Duraisamy, Sangeetha Kannan, Ravi Rajaram, Krishnaraj Dental Press J Orthod Original Article INTRODUCTION: It has been suggested that human errors during manual tracing of linear/angular cephalometric parameters can be eliminated by using computer-aided analysis. The landmarks, however, are located manually and the computer system completes the analysis. With the advent of Artificial Intelligence in the field of Dentistry, automatic location of the landmarks has become a promising tool in digital Orthodontics. METHODS: Fifty pretreatment lateral cephalograms obtained from the Orthodontic department of SRM dental college (India) were used. Analysis were done by the same investigator using the following methods: WebCeph™, AutoCEPH(©) for Windows or manual tracing. Landmark identification was carried out automatically by Artificial Intelligence in WebCeph™ and with a mouse driven cursor in AutoCEPH(©), and manually using acetate sheet and 0.3-mm pencil, ruler and a protractor. The mean differences of the cephalometric parameters obtained between the three methods were calculated using ANOVA with statistical significance set at p<0.05. Intraclass correlation coefficient (ICC) was used to determine both reproducibility and agreement between linear and angular measurements obtained from the three methods and intrarater reliability of repeated measurements. ICC value of >0.75 indicated good agreement. RESULTS: Intraclass correlation coefficient between the three groups was >0.830, showing good level of agreement, and the value within each group was >0.950, indicating high intrarater reliability. CONCLUSION: Artificial Intelligence assisted software showed good agreement with AutoCEPH(©) and manual tracing for all the cephalometric measurements. Dental Press International 2023-04-03 /pmc/articles/PMC10069747/ /pubmed/37018830 http://dx.doi.org/10.1590/2177-6709.28.1.e2321214.oar Text en https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License
spellingShingle Original Article
Prince, S Tsander Tito
Srinivasan, Dilip
Duraisamy, Sangeetha
Kannan, Ravi
Rajaram, Krishnaraj
Reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (WebCeph) in comparison with digital software (AutoCEPH) and manual tracing method
title Reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (WebCeph) in comparison with digital software (AutoCEPH) and manual tracing method
title_full Reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (WebCeph) in comparison with digital software (AutoCEPH) and manual tracing method
title_fullStr Reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (WebCeph) in comparison with digital software (AutoCEPH) and manual tracing method
title_full_unstemmed Reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (WebCeph) in comparison with digital software (AutoCEPH) and manual tracing method
title_short Reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (WebCeph) in comparison with digital software (AutoCEPH) and manual tracing method
title_sort reproducibility of linear and angular cephalometric measurements obtained by an artificial-intelligence assisted software (webceph) in comparison with digital software (autoceph) and manual tracing method
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10069747/
https://www.ncbi.nlm.nih.gov/pubmed/37018830
http://dx.doi.org/10.1590/2177-6709.28.1.e2321214.oar
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