Machine Learning and Artificial Intelligence: A Web-Based Implant Failure and Peri-implantitis Prediction Model for Clinicians.

IF 1.7 4区 医学 Q3 DENTISTRY, ORAL SURGERY & MEDICINE
Peter Rekawek, Eliot A Herbst, Abhinav Suri, Brian P Ford, Chamith S Rajapakse, Neeraj Panchal
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引用次数: 0

Abstract

Purpose: To develop a machine learning model that can predict dental implant failure and peri-implantitis as a tool for maximizing implant success.

Materials and methods: This study used a supervised learning model to retrospectively analyze 398 unique patients receiving a total of 942 dental implants presenting at the Philadelphia Veterans Affairs Medical Center from 2006 to 2013. Logistic regression, random forest classifiers, support vector machines, and ensemble techniques were employed to analyze this dataset.

Results: The random forest model possessed the highest predictive performance on test sets, with receiver operating characteristic area under curves (ROC AUC) of 0.872 and 0.840 for dental implant failures and peri-implantitis, respectively. The five most important features correlating with implant failure were amount of local anesthetic, implant length, implant diameter, use of preoperative antibiotics, and frequency of hygiene visits. The five most important features correlating with peri-implantitis were implant length, implant diameter, use of preoperative antibiotics, frequency of hygiene visits, and presence of diabetes mellitus.

Conclusion: This study demonstrated the ability of machine learning models to assess demographics, medical history, and surgical plans, as well as the influence of these factors on dental implant failure and peri-implantitis. This model may serve as a resource for clinicians in the treatment of dental implants. Int J Oral Maxillofac Implants 2023;38:576-582. doi: 10.11607/jomi.9852.

机器学习和人工智能:临床医生基于网络的种植体失败和种植体周围炎预测模型。
目的:开发一种机器学习模型,用于预测种植体失败和种植体周围炎,作为最大化种植成功的工具。材料和方法:本研究采用监督学习模型,回顾性分析了2006年至2013年在费城退伍军人事务医疗中心接受共942例种植牙的398例独特患者。采用逻辑回归、随机森林分类器、支持向量机和集成技术对该数据集进行分析。结果:随机森林模型在测试集上具有最高的预测性能,对种植体失败和种植体周围炎的受试者工作特征曲线下面积(ROC AUC)分别为0.872和0.840。与种植体失败相关的五个最重要的特征是局麻量、种植体长度、种植体直径、术前抗生素的使用和卫生就诊的频率。与种植体周围炎相关的五个最重要的特征是种植体长度、种植体直径、术前抗生素的使用、卫生就诊频率和糖尿病的存在。结论:本研究证明了机器学习模型能够评估人口统计学、病史和手术计划,以及这些因素对种植体失败和种植体周围炎的影响。该模型可作为临床医生治疗种植牙的参考资料。口腔颌面种植[J]; 2009; 31(8):576-582。doi: 10.11607 / jomi.9852。
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来源期刊
CiteScore
3.30
自引率
5.00%
发文量
115
审稿时长
6 months
期刊介绍: Edited by Steven E. Eckert, DDS, MS ISSN (Print): 0882-2786 ISSN (Online): 1942-4434 This highly regarded, often-cited journal integrates clinical and scientific data to improve methods and results of oral and maxillofacial implant therapy. It presents pioneering research, technology, clinical applications, reviews of the literature, seminal studies, emerging technology, position papers, and consensus studies, as well as the many clinical and therapeutic innovations that ensue as a result of these efforts. The editorial board is composed of recognized opinion leaders in their respective areas of expertise and reflects the international reach of the journal. Under their leadership, JOMI maintains its strong scientific integrity while expanding its influence within the field of implant dentistry. JOMI’s popular regular feature "Thematic Abstract Review" presents a review of abstracts of recently published articles on a specific topical area of interest each issue.
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