Determination of the stage and grade of periodontitis according to the current classification of periodontal and peri-implant diseases and conditions (2018) using machine learning algorithms.

IF 2.2 4区 医学 Q2 DENTISTRY, ORAL SURGERY & MEDICINE Journal of Periodontal and Implant Science Pub Date : 2023-02-01 Epub Date: 2022-09-06 DOI:10.5051/jpis.2201060053
Kübra Ertaş, Ihsan Pence, Melike Siseci Cesmeli, Zuhal Yetkin Ay
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Abstract

Purpose: The current Classification of Periodontal and Peri-Implant Diseases and Conditions, published and disseminated in 2018, involves some difficulties and causes diagnostic conflicts due to its criteria, especially for inexperienced clinicians. The aim of this study was to design a decision system based on machine learning algorithms by using clinical measurements and radiographic images in order to determine and facilitate the staging and grading of periodontitis.

Methods: In the first part of this study, machine learning models were created using the Python programming language based on clinical data from 144 individuals who presented to the Department of Periodontology, Faculty of Dentistry, Süleyman Demirel University. In the second part, panoramic radiographic images were processed and classification was carried out with deep learning algorithms.

Results: Using clinical data, the accuracy of staging with the tree algorithm reached 97.2%, while the random forest and k-nearest neighbor algorithms reached 98.6% accuracy. The best staging accuracy for processing panoramic radiographic images was provided by a hybrid network model algorithm combining the proposed ResNet50 architecture and the support vector machine algorithm. For this, the images were preprocessed, and high success was obtained, with a classification accuracy of 88.2% for staging. However, in general, it was observed that the radiographic images provided a low level of success, in terms of accuracy, for modeling the grading of periodontitis.

Conclusions: The machine learning-based decision system presented herein can facilitate periodontal diagnoses despite its current limitations. Further studies are planned to optimize the algorithm and improve the results.

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根据目前的牙周和种植体周围疾病和条件分类(2018 年),使用机器学习算法确定牙周炎的阶段和等级。
目的:2018年出版发行的现行《牙周和种植体周围疾病与条件分类》因其标准而存在一些困难并导致诊断冲突,尤其是对缺乏经验的临床医生而言。本研究的目的是通过临床测量和放射影像,设计一个基于机器学习算法的决策系统,以确定和促进牙周炎的分期和分级:在本研究的第一部分,根据苏莱曼-德米雷尔大学牙科学院牙周病学系 144 名就诊者的临床数据,使用 Python 编程语言创建了机器学习模型。第二部分是处理全景放射图像,并使用深度学习算法进行分类:使用临床数据,树算法的分期准确率达到 97.2%,随机森林算法和 k 近邻算法的准确率达到 98.6%。混合网络模型算法结合了所提出的 ResNet50 架构和支持向量机算法,为处理全景放射影像提供了最佳的分期准确率。为此,对图像进行了预处理,并取得了很高的成功,分期分类准确率达到 88.2%。不过,总的来说,在牙周炎分级建模方面,放射影像的准确率较低:结论:本文介绍的基于机器学习的决策系统尽管目前存在局限性,但仍能促进牙周诊断。我们计划开展进一步研究,以优化算法并改进结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Periodontal and Implant Science
Journal of Periodontal and Implant Science DENTISTRY, ORAL SURGERY & MEDICINE-
CiteScore
3.30
自引率
5.30%
发文量
38
期刊介绍: Journal of Periodontal & Implant Science (JPIS) is a peer-reviewed and open-access journal providing up-to-date information relevant to professionalism of periodontology and dental implantology. JPIS is dedicated to global and extensive publication which includes evidence-based original articles, and fundamental reviews in order to cover a variety of interests in the field of periodontal as well as implant science.
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