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肺癌筛查中的放射组学与人工智能

Radiomics and artificial intelligence in lung cancer screening.

作者信息

Binczyk Franciszek, Prazuch Wojciech, Bozek Paweł, Polanska Joanna

机构信息

Department of Data Science and Engineering, Silesian University of Technology, Gliwice, Poland.

Department of Radiology and Radiodiagnostics, Medical University of Silesia, Katowice, Poland.

出版信息

Transl Lung Cancer Res. 2021 Feb;10(2):1186-1199. doi: 10.21037/tlcr-20-708.

Abstract

Lung cancer is responsible for more fatalities than any other cancer worldwide, with 1.76 million associated deaths reported in 2018. The key issue in the fight against this disease is the detection and diagnosis of all pulmonary nodules at an early stage. Artificial intelligence (AI) algorithms play a vital role in the automated detection, segmentation, and computer-aided diagnosis of malignant lesions. Among the existing algorithms, radiomics and deep-learning-based types appear to show the most promise. Radiomics is a growing field related to the extraction of a set of features from an image, which allows for automated classification of medical images into a predefined group. The process comprises a series of consecutive steps including image acquisition and pre-processing, segmentation of the desired region of interest, calculation of defined features, feature engineering, and construction of the classification model. The features calculated in this process are mainly shape features, as well as first- and higher-order texture features. To date, more than 100 features have been defined, although this number varies depending on the application. The greatest challenge in radiomics is building a cross-validated model based on a selected set of calculated features known as the radiomic signature. Numerous radiomic signatures have successfully been developed; however, reproducibility and clinical validity of the results obtained constitutes a considerable challenge of modern radiomics. Deep learning algorithms are another rapidly evolving technique and are recognized as a valuable tool in the field of medical image analysis for the detection, characterization, and assessment of lesions. Such an approach involves the design of artificial neural network architecture while upholding the goal of high classification accuracy. This paper illuminates the evolution and current state of artificial intelligence methods in lung imaging and the detection and diagnosis of pulmonary nodules, with a particular emphasis on radiomics and deep learning methods.

摘要

肺癌导致的死亡人数比全球任何其他癌症都多,2018年报告的相关死亡人数达176万。抗击这种疾病的关键问题是早期发现和诊断所有肺结节。人工智能(AI)算法在恶性病变的自动检测、分割和计算机辅助诊断中起着至关重要的作用。在现有算法中,基于放射组学和深度学习的算法似乎最有前景。放射组学是一个不断发展的领域,涉及从图像中提取一组特征,从而能够将医学图像自动分类到预定义的类别中。该过程包括一系列连续步骤,包括图像采集与预处理、感兴趣区域的分割、定义特征的计算、特征工程以及分类模型的构建。在此过程中计算的特征主要是形状特征以及一阶和高阶纹理特征。迄今为止,已经定义了100多个特征,不过这个数字会因应用而异。放射组学面临的最大挑战是基于一组选定的计算特征(即放射组学特征)构建一个交叉验证模型。已经成功开发了许多放射组学特征;然而,所获得结果的可重复性和临床有效性构成了现代放射组学的一个重大挑战。深度学习算法是另一项快速发展的技术,被认为是医学图像分析领域用于病变检测、特征描述和评估的宝贵工具。这种方法涉及人工神经网络架构的设计,同时要坚持高分类准确率的目标。本文阐述了人工智能方法在肺部成像以及肺结节检测和诊断方面的发展历程和现状,特别强调了放射组学和深度学习方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b07d/7947422/849822606059/tlcr-10-02-1186-f1.jpg

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