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首页> 外文期刊>British Journal of Cancer >Artificial Intelligence-based methods in head and neck cancer diagnosis: an overview
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Artificial Intelligence-based methods in head and neck cancer diagnosis: an overview

机译:基于人工智能的头颈癌诊断方法:概述

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Background This paper reviews recent literature employing Artificial Intelligence/Machine Learning (AI/ML) methods for diagnostic evaluation of head and neck cancers (HNC) using automated image analysis. Methods Electronic database searches using MEDLINE via OVID, EMBASE and Google Scholar were conducted to retrieve articles using AI/ML for diagnostic evaluation of HNC (2009–2020). No restrictions were placed on the AI/ML method or imaging modality used. Results In total, 32 articles were identified. HNC sites included oral cavity ( n ?=?16), nasopharynx ( n ?=?3), oropharynx ( n ?=?3), larynx ( n ?=?2), salivary glands ( n ?=?2), sinonasal ( n ?=?1) and in five studies multiple sites were studied. Imaging modalities included histological ( n ?=?9), radiological ( n ?=?8), hyperspectral ( n ?=?6), endoscopic/clinical ( n ?=?5), infrared thermal ( n ?=?1) and optical ( n ?=?1). Clinicopathologic/genomic data were used in two studies. Traditional ML methods were employed in 22 studies (69%), deep learning (DL) in eight studies (25%) and a combination of these methods in two studies (6%). Conclusions There is an increasing volume of studies exploring the role of AI/ML to aid HNC detection using a range of imaging modalities. These methods can achieve high degrees of accuracy that can exceed the abilities of human judgement in making data predictions. Large-scale multi-centric prospective studies are required to aid deployment into clinical practice.
机译:背景技术本文评论最近使用自动图像分析的人工智能/机器学习(AI / mL)用于诊断评价(HNC)的人工智能/机器学习(AI / ML)方法。方法使用Ovid,Embase和Google Scholar使用Medline搜索电子数据库搜索,用于使用AI / ml检索文章,以便对HNC进行诊断评估(2009-2020)。没有限制AI / ML方法或使用的成像模态。结果总计32篇文章。 HNC位点包括口腔(n?=α16),鼻咽(n?=Δ3),oropharynx(n?= 3),喉(n?=Δ2),唾液腺(n?=?2), Sinonasal(n?=?1)和在五种研究中,研究了多个网站。成像模式包括组织学(n?=Δ9),放射学(n?=Δ8),高光谱(n?=Δ6),内窥镜/临床(n?=Δ5),红外线热(n?=?1)和光学(n?=?1)。临床病理/基因组数据用于两项研究。在22项研究中使用传统的ML方法,在八项研究(25%)中,深入学习(DL)和两项研究中的这些方法的组合(6%)。结论越来越大的研究探讨了AI / ml的作用,以使用一系列成像方式辅助HNC检测。这些方法可以达到高精度,可以超过人类判断在制定数据预测方面的能力。需要大规模的多维预期研究来帮助部署临床实践。

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