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利用影像技术和人工智能改善口腔癌治疗效果。

Improving Oral Cancer Outcomes with Imaging and Artificial Intelligence.

机构信息

Department of Oral & Maxillofacial Radiology, Ege University Faculty of Dentistry, Bornova-Izmir, Turkey.

Beckman Laser Institute, University of California, Irvine, CA, USA.

出版信息

J Dent Res. 2020 Mar;99(3):241-248. doi: 10.1177/0022034520902128.

Abstract

Early diagnosis is the most important determinant of oral and oropharyngeal squamous cell carcinoma (OPSCC) outcomes, yet most of these cancers are detected late, when outcomes are poor. Typically, nonspecialists such as dentists screen for oral cancer risk, and then they refer high-risk patients to specialists for biopsy-based diagnosis. Because the clinical appearance of oral mucosal lesions is not an adequate indicator of their diagnosis, status, or risk level, this initial triage process is inaccurate, with poor sensitivity and specificity. The objective of this study is to provide an overview of emerging optical imaging modalities and novel artificial intelligence-based approaches, as well as to evaluate their individual and combined utility and implications for improving oral cancer detection and outcomes. The principles of image-based approaches to detecting oral cancer are placed within the context of clinical needs and parameters. A brief overview of artificial intelligence approaches and algorithms is presented, and studies that use these 2 approaches singly and together are cited and evaluated. In recent years, a range of novel imaging modalities has been investigated for their applicability to improving oral cancer outcomes, yet none of them have found widespread adoption or significantly affected clinical practice or outcomes. Artificial intelligence approaches are beginning to have considerable impact in improving diagnostic accuracy in some fields of medicine, but to date, only limited studies apply to oral cancer. These studies demonstrate that artificial intelligence approaches combined with imaging can have considerable impact on oral cancer outcomes, with applications ranging from low-cost screening with smartphone-based probes to algorithm-guided detection of oral lesion heterogeneity and margins using optical coherence tomography. Combined imaging and artificial intelligence approaches can improve oral cancer outcomes through improved detection and diagnosis.

摘要

早期诊断是口腔和口咽鳞状细胞癌(OPSCC)结局的最重要决定因素,但大多数此类癌症发现较晚,此时结局较差。通常,牙医等非专家筛查口腔癌风险,然后将高风险患者转介给专家进行基于活检的诊断。由于口腔黏膜病变的临床表现不能充分指示其诊断、状态或风险水平,因此这个初步分诊过程不准确,敏感性和特异性都较差。本研究的目的是概述新兴的光学成像方式和基于人工智能的新方法,并评估它们单独和联合使用的效用及其对改善口腔癌检测和结局的影响。将基于图像的方法检测口腔癌的原理置于临床需求和参数的背景下。简要介绍了人工智能方法和算法,并引用和评估了单独和联合使用这两种方法的研究。近年来,已经研究了一系列新型成像方式,以提高口腔癌结局的适用性,但它们都没有得到广泛应用,也没有显著影响临床实践或结局。人工智能方法开始在提高某些医学领域的诊断准确性方面产生重大影响,但迄今为止,只有有限的研究适用于口腔癌。这些研究表明,人工智能方法与成像相结合可以对口腔癌结局产生重大影响,应用范围从基于智能手机的探针进行低成本筛查,到使用光学相干断层扫描算法引导检测口腔病变异质性和边界。联合成像和人工智能方法可以通过提高检测和诊断来改善口腔癌结局。

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