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Application and Performance of Artificial Intelligence Technology in Oral Cancer Diagnosis and Prediction of Prognosis: A Systematic Review

机译:人工智能技术在口腔癌诊断和预测预测中的应用与性能:系统审查

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摘要

Oral cancer (OC) is a deadly disease with a high mortality and complex etiology. Artificial intelligence (AI) is one of the outstanding innovations in technology used in dental science. This paper intends to report on the application and performance of AI in diagnosis and predicting the occurrence of OC. In this study, we carried out data search through an electronic search in several renowned databases, which mainly included PubMed, Google Scholar, Scopus, Embase, Cochrane, Web of Science, and the Saudi Digital Library for articles that were published between January 2000 to March 2021. We included 16 articles that met the eligibility criteria and were critically analyzed using QUADAS-2. AI can precisely analyze an enormous dataset of images (fluorescent, hyperspectral, cytology, CT images, etc.) to diagnose OC. AI can accurately predict the occurrence of OC, as compared to conventional methods, by analyzing predisposing factors like age, gender, tobacco habits, and bio-markers. The precision and accuracy of AI in diagnosis as well as predicting the occurrence are higher than the current, existing clinical strategies, as well as conventional statistics like cox regression analysis and logistic regression.
机译:口腔癌(OC)是一种致命的疾病,具有高死亡率和复杂的病因。人工智能(AI)是牙科科学中使用的技术的杰出创新之一。本文旨在报告AI诊断和预测oc发生的应用和性能。在这项研究中,我们通过多个知名数据库中的电子搜索进行了数据搜索,这些数据搜索主要包括PubMed,Google Scholar,Scopus,Embase,Cochrane,Science Web以及Saudi Digital图书馆,为2000年1月至2000年1月之间发布的文章2021年3月。我们包括16篇符合资格标准的文章,并使用Quadas-2批判性分析。 AI可以精确地分析图像的巨大数据集(荧光,高光谱,细胞学,CT图像等)以诊断OC。通过分析年龄,性别,烟草习惯和生物标记,可以准确地预测常规方法的发生。在诊断以及预测发生的精度和AI的精度是比当前更高,现有的临床策略,以及常规的统计等Cox回归分析和逻辑回归。

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