Computer vision/convolutional neural networks

  • 文章类型: Journal Article
    由于临床医生不信任计算机预测以及与错误输出相关的潜在风险,将人工智能(AI)集成到医疗和牙科应用中可能具有挑战性。我们介绍了在临床医生和算法之间存在分歧的情况下使用AI触发第二意见的想法。通过在整个诊断过程中隐藏AI预测,我们尽量减少与不信任和错误预测相关的风险,完全依靠人类的预测。实验涉及3位经验丰富的牙医,25名牙科学生,和6个中心的290名晚期龋齿患者接受治疗。我们开发了一个AI模型来预测晚期龋齿治疗后的牙髓状态。临床医生被要求在没有AI模型帮助的情况下执行相同的预测。第二个意见框架在1000次试验模拟中进行了测试。临床医生的平均F1评分从0.586显着增加到0.645。
    Integrating artificial intelligence (AI) into medical and dental applications can be challenging due to clinicians\' distrust of computer predictions and the potential risks associated with erroneous outputs. We introduce the idea of using AI to trigger second opinions in cases where there is a disagreement between the clinician and the algorithm. By keeping the AI prediction hidden throughout the diagnostic process, we minimize the risks associated with distrust and erroneous predictions, relying solely on human predictions. The experiment involved 3 experienced dentists, 25 dental students, and 290 patients treated for advanced caries across 6 centers. We developed an AI model to predict pulp status following advanced caries treatment. Clinicians were asked to perform the same prediction without the assistance of the AI model. The second opinion framework was tested in a 1000-trial simulation. The average F1-score of the clinicians increased significantly from 0.586 to 0.645.
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  • 文章类型: Journal Article
    牙髓是与牙髓和骨周组织疾病最重要的牙科专业。临床医生经常面对有不同症状的患者,必须严格评估二维和三维的射线照相图像,得出复杂的诊断和决策,并提供复杂的治疗。与由非标准化临床技术引起的放射学解释和治疗结果变化的低观察者内部和观察者之间的一致性配对,存在对人工智能(AI)形式的支持的未满足需求,提供自动生物医学图像分析,决策支持,治疗期间的援助。在过去的十年里,牙髓的AI研究稳步增长,但临床应用有限.这篇综述的重点是批判性地评估牙髓AI临床应用研究的最新进展。包括根尖病变等牙髓病变的检测和诊断,骨折和再吸收,以及临床治疗结果预测。它讨论了人工智能辅助诊断的好处,治疗计划和执行,以及未来的方向,包括增强现实和机器人技术。它严格审查了牙髓数据集的性质所带来的局限性和挑战,人工智能的透明度和泛化,和潜在的伦理困境。在不久的将来,人工智能将显著影响牙髓的日常工作流程,教育,和持续学习。
    Endodontics is the dental specialty foremost concerned with diseases of the pulp and periradicular tissues. Clinicians often face patients with varying symptoms, must critically assess radiographic images in 2 and 3 dimensions, derive complex diagnoses and decision making, and deliver sophisticated treatment. Paired with low intra- and interobserver agreement for radiographic interpretation and variations in treatment outcome resulting from nonstandardized clinical techniques, there exists an unmet need for support in the form of artificial intelligence (AI), providing automated biomedical image analysis, decision support, and assistance during treatment. In the past decade, there has been a steady increase in AI studies in endodontics but limited clinical application. This review focuses on critically assessing the recent advancements in endodontic AI research for clinical applications, including the detection and diagnosis of endodontic pathologies such as periapical lesions, fractures and resorptions, as well as clinical treatment outcome predictions. It discusses the benefits of AI-assisted diagnosis, treatment planning and execution, and future directions including augmented reality and robotics. It critically reviews the limitations and challenges imposed by the nature of endodontic data sets, AI transparency and generalization, and potential ethical dilemmas. In the near future, AI will significantly affect the everyday endodontic workflow, education, and continuous learning.
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  • 文章类型: Journal Article
    随着口腔正畸数字化程度的提高,某些正畸制造工艺,如间接粘合托盘的制造,对准器生产,或电线弯曲可以自动化。然而,正畸治疗计划和评估仍然是专家的任务和责任。由于正畸患者的生长和对正畸治疗的反应的预测本质上是复杂的和个体的,正畸医生利用从纵向收集的特征,多模态,和标准化的正畸数据集。目前,这些数据集由正畸医生使用,基于规则的治疗决策。在研究中,人工智能(AI)已成功应用于帮助正畸医生从此类数据集中提取相关数据。这里,人工智能已被用于临床图像的分析,例如在侧位头颅造影中的自动标志检测,也用于评估口内扫描或摄影数据。此外,AI用于帮助正畸医生为治疗决策提供决策支持,例如需要正颌手术或正畸拔牙。目前正畸人工智能研究的一个主要挑战是泛化性有限,因为大多数研究使用具有高偏倚风险的单中心数据。此外,比较不同研究和任务的人工智能几乎是不可能的,因为结果和结果指标差异很大,和基础数据集没有标准化。值得注意的是,只有少数人工智能在口腔正畸中的应用达到了完全的临床成熟和监管部门的批准,该领域的研究人员的任务是在正畸工作流程中处理真实世界的评估和实施AI。
    With increasing digitalization in orthodontics, certain orthodontic manufacturing processes such as the fabrication of indirect bonding trays, aligner production, or wire bending can be automated. However, orthodontic treatment planning and evaluation remains a specialist\'s task and responsibility. As the prediction of growth in orthodontic patients and response to orthodontic treatment is inherently complex and individual, orthodontists make use of features gathered from longitudinal, multimodal, and standardized orthodontic data sets. Currently, these data sets are used by the orthodontist to make informed, rule-based treatment decisions. In research, artificial intelligence (AI) has been successfully applied to assist orthodontists with the extraction of relevant data from such data sets. Here, AI has been applied for the analysis of clinical imagery, such as automated landmark detection in lateral cephalograms but also for evaluation of intraoral scans or photographic data. Furthermore, AI is applied to help orthodontists with decision support for treatment decisions such as the need for orthognathic surgery or for orthodontic tooth extractions. One major challenge in current AI research in orthodontics is the limited generalizability, as most studies use unicentric data with high risks of bias. Moreover, comparing AI across different studies and tasks is virtually impossible as both outcomes and outcome metrics vary widely, and underlying data sets are not standardized. Notably, only few AI applications in orthodontics have reached full clinical maturity and regulatory approval, and researchers in the field are tasked with tackling real-world evaluation and implementation of AI into the orthodontic workflow.
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  • 文章类型: Journal Article
    为牙科构建高性能且强大的基于人工智能(AI)的应用程序需要大量高质量的数据集,通常驻留在来自多个源的分布式数据孤岛中(例如,不同的临床机构)。由于隐私限制禁止跨这些数据孤岛的边界进行直接共享,因此协作努力受到限制。联合学习是一个可扩展的隐私保护框架,用于在没有数据共享的情况下进行AI模型的协作训练。相反,知识以从数据中学到的智慧的形式进行交换。本文旨在介绍联邦学习的既定概念,以及促进牙科研究社区内基于AI的应用程序协作的机会和挑战。
    Building performant and robust artificial intelligence (AI)-based applications for dentistry requires large and high-quality data sets, which usually reside in distributed data silos from multiple sources (e.g., different clinical institutes). Collaborative efforts are limited as privacy constraints forbid direct sharing across the borders of these data silos. Federated learning is a scalable and privacy-preserving framework for collaborative training of AI models without data sharing, where instead the knowledge is exchanged in form of wisdom learned from the data. This article aims at introducing the established concept of federated learning together with chances and challenges to foster collaboration on AI-based applications within the dental research community.
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  • 文章类型: Journal Article
    医疗和牙科人工智能(AI)需要AI的用户和接收者的信任,以加强实施。可接受性,reach,和维护。标准化是产生这种信任的一种策略,质量标准推动人工智能的改进和许多属性的可靠质量。在本简短审查中,我们从研究和标准化中总结了正在进行的活动,这些活动有助于医学的可信度,具体来说,牙科人工智能,并讨论标准化的作用及其一些关键要素。此外,我们讨论了可解释的人工智能方法如何支持牙科中可信的人工智能模型的开发。特别是,我们展示了在近红外光透照图像上的龋齿预测用例上使用可解释的AI的实际好处。
    Medical and dental artificial intelligence (AI) require the trust of both users and recipients of the AI to enhance implementation, acceptability, reach, and maintenance. Standardization is one strategy to generate such trust, with quality standards pushing for improvements in AI and reliable quality in a number of attributes. In the present brief review, we summarize ongoing activities from research and standardization that contribute to the trustworthiness of medical and, specifically, dental AI and discuss the role of standardization and some of its key elements. Furthermore, we discuss how explainable AI methods can support the development of trustworthy AI models in dentistry. In particular, we demonstrate the practical benefits of using explainable AI on the use case of caries prediction on near-infrared light transillumination images.
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