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筛查发现的实性结节:从结节检测到结构化报告

Screen-detected solid nodules: from detection of nodule to structured reporting.

作者信息

Silva Mario, Milanese Gianluca, Ledda Roberta E, Pastorino Ugo, Sverzellati Nicola

机构信息

Scienze Radiologiche, Department of Medicine and Surgery (DiMeC), University of Parma, Parma, Italy.

Section of Thoracic Surgery, IRCCS Istituto Nazionale Tumori, Milano, Italy.

出版信息

Transl Lung Cancer Res. 2021 May;10(5):2335-2346. doi: 10.21037/tlcr-20-296.

Abstract

Lung cancer screening (LCS) is gaining some interest worldwide after positive results from International trials. Unlike other screening practices, LCS is performed by an extremely sensitive test, namely low-dose computed tomography (LDCT) that can detect the smallest nodules in lung parenchyma. Up-to-date detection approaches, such as computer aided detection systems, have been increasingly employed for lung nodule automatic identification and are largely used in most LCS programs as a complementary tool to visual reading. Solid nodules of any size are represented in the vast majority of subjects undergoing LDCT. However, less than 1% of solid nodules will be diagnosed lung cancer. This fact calls for specific characterization of nodules to avoid false positives, overinvestigation, and reduce the risks associated with nodule work up. Recent research has been exploring the potential of artificial intelligence, including deep learning techniques, to enhance the accuracy of both detection and characterisation of lung nodule. Computer aided detection and diagnosis algorithms based on artificial intelligence approaches have demonstrated the ability to accurately detect and characterize parenchymal nodules, reducing the number of false positives, and to outperform some of the currently used risk models for prediction of lung cancer risk, potentially reducing the proportion of surveillance CT scans. These forthcoming approaches will eventually integrate a new reasoning for development of future guidelines, which are expected to evolve into precision and personalized stratification of lung cancer risk stratification by continuous fashion, as opposed to the current format with a limited number of risk classes within fixed thresholds of nodule size. This review aims to detail the standard of reference for optimal management of solid nodules by low-dose computed and its projection into the fine selection of candidates for work up.

摘要

在国际试验取得阳性结果后,肺癌筛查(LCS)在全球范围内受到了一定关注。与其他筛查方法不同,LCS采用的是一种极其灵敏的检测手段,即低剂量计算机断层扫描(LDCT),它能够检测出肺实质内最小的结节。诸如计算机辅助检测系统等最新检测方法已越来越多地用于肺结节的自动识别,并且在大多数LCS项目中被广泛用作视觉读片的辅助工具。接受LDCT检查的绝大多数受检者都有各种大小的实性结节。然而,不到1%的实性结节会被诊断为肺癌。这一事实要求对结节进行特异性特征描述,以避免假阳性、过度检查,并降低与结节检查相关的风险。最近的研究一直在探索人工智能(包括深度学习技术)在提高肺结节检测和特征描述准确性方面的潜力。基于人工智能方法的计算机辅助检测和诊断算法已证明能够准确检测和描述实质结节,减少假阳性数量,并且在预测肺癌风险方面优于一些目前使用的风险模型,有可能减少监测CT扫描的比例。这些即将出现的方法最终将为未来指南的制定融入新的推理思路,预计这些指南将以持续的方式演变为肺癌风险分层的精准和个性化分层,而不是目前在结节大小固定阈值内具有有限数量风险类别的形式。本综述旨在详细阐述低剂量计算机断层扫描对实性结节进行最佳管理的参考标准及其在精心挑选检查对象方面的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6310/8182712/bd5e9795307b/tlcr-10-05-2335-f1.jpg

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