{"title":"迎接技术革命:牙科中的机器学习全景。","authors":"H Lin, J Chen, Y Hu, W Li","doi":"10.4317/medoral.26679","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>The overarching aim of this study is to furnish dental experts and researchers with a comprehensive understanding of the role of machine learning in dentistry. This entails a nuanced understanding of prevailing technologies, discerning emerging trends, and providing strategic guidance for future research endeavors and practical implementations.</p><p><strong>Material and methods: </strong>We assessed the literature by looking for papers related to the issue after 2019 in the Pubmed, Web of Science, and Google Scholar databases. A narrative review of 29 papers satisfying the search criteria was undertaken, with an emphasis on the application of machine learning in dentistry.</p><p><strong>Results: </strong>A review was conducted, including 29 publications. The advent of emerging technologies holds promise for enhancing the accuracy and efficiency of dental diagnosis, treatment, and prognosis. Nevertheless, the intricate nature of oral disease diagnosis and outcome prediction mandates acknowledgment of variables such as individual idiosyncrasies, lifestyle, genetics, image quality, and tooth morphology. These factors may impact the precision of machine learning models. Dental professionals should not rely solely on AI-based results but rather use them as references. Integrating these findings with clinical examinations, assessing the patient's overall health, and oral condition is crucial for informed decision-making.</p><p><strong>Conclusions: </strong>This review explores the clinical applications of machine learning in dentistry, encompassing disciplines like cariology, endodontics, periodontology, oral medicine, oral and maxillofacial surgery, prosthodontics and orthodontics. It serves as a valuable resource for dental practitioners and scholars in understanding the computer algorithms employed in each study, facilitating the clinical translation of machine learning research outcomes.</p>","PeriodicalId":49016,"journal":{"name":"Medicina Oral Patologia Oral Y Cirugia Bucal","volume":" ","pages":"e742-e749"},"PeriodicalIF":1.8000,"publicationDate":"2024-11-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11584966/pdf/","citationCount":"0","resultStr":"{\"title\":\"Embracing technological revolution: A panorama of machine learning in dentistry.\",\"authors\":\"H Lin, J Chen, Y Hu, W Li\",\"doi\":\"10.4317/medoral.26679\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>The overarching aim of this study is to furnish dental experts and researchers with a comprehensive understanding of the role of machine learning in dentistry. This entails a nuanced understanding of prevailing technologies, discerning emerging trends, and providing strategic guidance for future research endeavors and practical implementations.</p><p><strong>Material and methods: </strong>We assessed the literature by looking for papers related to the issue after 2019 in the Pubmed, Web of Science, and Google Scholar databases. A narrative review of 29 papers satisfying the search criteria was undertaken, with an emphasis on the application of machine learning in dentistry.</p><p><strong>Results: </strong>A review was conducted, including 29 publications. The advent of emerging technologies holds promise for enhancing the accuracy and efficiency of dental diagnosis, treatment, and prognosis. Nevertheless, the intricate nature of oral disease diagnosis and outcome prediction mandates acknowledgment of variables such as individual idiosyncrasies, lifestyle, genetics, image quality, and tooth morphology. These factors may impact the precision of machine learning models. Dental professionals should not rely solely on AI-based results but rather use them as references. Integrating these findings with clinical examinations, assessing the patient's overall health, and oral condition is crucial for informed decision-making.</p><p><strong>Conclusions: </strong>This review explores the clinical applications of machine learning in dentistry, encompassing disciplines like cariology, endodontics, periodontology, oral medicine, oral and maxillofacial surgery, prosthodontics and orthodontics. 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引用次数: 0
摘要
背景:本研究的总体目标是让牙科专家和研究人员全面了解机器学习在牙科中的作用。这需要对当前的技术有细致入微的了解,辨别新兴趋势,并为未来的研究工作和实际应用提供战略指导:我们通过在 Pubmed、Web of Science 和 Google Scholar 数据库中查找 2019 年以后与该问题相关的论文,对文献进行了评估。我们对符合检索标准的 29 篇论文进行了叙述性综述,重点关注机器学习在牙科中的应用:对 29 篇论文进行了综述。新兴技术的出现为提高牙科诊断、治疗和预后的准确性和效率带来了希望。然而,由于口腔疾病诊断和结果预测的复杂性,必须考虑到个体特质、生活方式、遗传学、图像质量和牙齿形态等变量。这些因素可能会影响机器学习模型的精确度。牙科专业人员不应完全依赖基于人工智能的结果,而应将其作为参考。将这些结果与临床检查相结合,评估患者的整体健康和口腔状况,对于做出明智的决策至关重要:本综述探讨了机器学习在口腔医学中的临床应用,涵盖了牙体牙髓病学、牙周病学、口腔医学、口腔颌面外科、口腔修复学和口腔正畸学等学科。它是牙科医生和学者了解每项研究中采用的计算机算法的宝贵资源,有助于机器学习研究成果的临床转化。
Embracing technological revolution: A panorama of machine learning in dentistry.
Background: The overarching aim of this study is to furnish dental experts and researchers with a comprehensive understanding of the role of machine learning in dentistry. This entails a nuanced understanding of prevailing technologies, discerning emerging trends, and providing strategic guidance for future research endeavors and practical implementations.
Material and methods: We assessed the literature by looking for papers related to the issue after 2019 in the Pubmed, Web of Science, and Google Scholar databases. A narrative review of 29 papers satisfying the search criteria was undertaken, with an emphasis on the application of machine learning in dentistry.
Results: A review was conducted, including 29 publications. The advent of emerging technologies holds promise for enhancing the accuracy and efficiency of dental diagnosis, treatment, and prognosis. Nevertheless, the intricate nature of oral disease diagnosis and outcome prediction mandates acknowledgment of variables such as individual idiosyncrasies, lifestyle, genetics, image quality, and tooth morphology. These factors may impact the precision of machine learning models. Dental professionals should not rely solely on AI-based results but rather use them as references. Integrating these findings with clinical examinations, assessing the patient's overall health, and oral condition is crucial for informed decision-making.
Conclusions: This review explores the clinical applications of machine learning in dentistry, encompassing disciplines like cariology, endodontics, periodontology, oral medicine, oral and maxillofacial surgery, prosthodontics and orthodontics. It serves as a valuable resource for dental practitioners and scholars in understanding the computer algorithms employed in each study, facilitating the clinical translation of machine learning research outcomes.
期刊介绍:
1. Oral Medicine and Pathology:
Clinicopathological as well as medical or surgical management aspects of
diseases affecting oral mucosa, salivary glands, maxillary bones, as well as
orofacial neurological disorders, and systemic conditions with an impact on
the oral cavity.
2. Oral Surgery:
Surgical management aspects of diseases affecting oral mucosa, salivary glands,
maxillary bones, teeth, implants, oral surgical procedures. Surgical management
of diseases affecting head and neck areas.
3. Medically compromised patients in Dentistry:
Articles discussing medical problems in Odontology will also be included, with
a special focus on the clinico-odontological management of medically compromised patients, and considerations regarding high-risk or disabled patients.
4. Implantology
5. Periodontology